daniela zaharie -...
TRANSCRIPT
Daniela Zaharie
Date contact Departamentul de InformaticaFacultatea de Matematica si InformaticaUniversitatea de Vest din Timisoara +40 729 639 576blvd. V. Parvan, 4 [email protected], Timisoara, Romania
Data si loculnasterii
1 septembrie 1965, Arad
Domenii deinteres
Algoritmi evolutivi, retele neuronale artificiale, analiza datelor, prelucrarea imaginilor,calcul paralel si distribuit, statistica computationala, modele computationale ınbiologie
Educatie Facultatea de Matematica si Informatica, Universitatea de Vest din Timisoara,Romania
Doctorat, Matematica (Teoria Probabilitatilor si Statistica, 1992-1997
• Titlul tezei: Modelari stohastice ale retelelor neuronale si aplicatii• Coordonator: prof.dr. Gheorghe Constantin
Licenta, Matematica, specializarea Informatica, 1987 (sefa de promotie)
Experientaprofesionala
Profesor din 2009Departamentul de Informatica, Facultatea de Matematica si Informatica, Universitateade Vest din Timisoara
Conferentiar 1999 - 2009Departamentul de Informatica, Facultatea de Matematica si Informatica, Universitateade Vest din Timisoara 2001 - 2009
Catedra de Teoria Probabilitatilor si Matematici Aplicate, Facultatea de Matematicasi Informatica, Universitatea de Vest din Timisoara 1999 - 2001
Lector 1992 - 1999Catedra de Teoria Probabilitatilor si Matematici Aplicate, Facultatea de Matematicasi Informatica, Universitatea de Vest din Timisoara
Asistent 1990-1992Catedra de Informatica, Facultatea de Matematica si Informatica, Universitateade Vest din Timisoara
Analist-programator 1987 - 1990Centrul de Calcul, IAEM Timisoara
Activitatedidactica • Cursuri nivel licenta: Algoritmi si structuri de date (2015-prezent), Algoritmica
(2003-2014), Algoritmi si programare (1993-2001), Retele neuronale (1996-2007),Statistica (1996-1999), Calcul stiintific (1999-2000), Introducere ın informatica(1993-1996), Inteligenta artificiala (1993-1996).
• Cursuri nivel master: Data mining (romana si engleza, 2015-prezent), Algoritmimetaeuristici (romana si engleza, 2015-prezent), Calcul neuronal si calcul evolutiv(romana si engleza, 2007-2014), Biostatistica si bioinformatica (2007-2016).
Pozitiiconsultative siadministrative
prodecan la Facultatea de Matematica si Informatica din 2016
membru al Senatului Universitatii de Vest din Timisoara 2012 - 2015
membru ın Consiliul Facultatii de Matematica si Informatica 2004-2015
1 of 43
responsabil al programului de studii de licenta Informatica Aplicata
din 2008
membru CNATDCU, comisia Informatica 2011 - 2012, 2015 - 2016
secretar stiintific la Departamentul de Informatica 2004 - 2012
Activitatieditoriale
Co-editor:• Analele Universitatii de Vest din Timisoara (seria Matematica si Informatica)• seria SYNASC (Proceedings of the Symposium of Symbolic and Numeric Algorithms
for Scientific Computing)Membru al comitetului editorial:• Soft Computing. A Fusion of Foundations, Methodologies and Applications• Swarm and Evolutionary Computing
Activitati deevaluare sirecenzare
Reviste: IEEE Transactions on Evolutionary Computing, IEEE Transactions onSystems, Man and Cybernetics, Applied Soft Computing, Information Sciences,Applied Mathematics and Computation, Soft Computing, Neurocomputing, MemeticComputing, Journal of Global Optimization, Computational Intelligence, EvolutionaryComputation, Computational Optimization and Applications, Patterns Analysisand Applications, Central European Journal on Computer Science etc.Conferinte: cel putin 10 conferinte internationale/an (incluzand CEC, GECCO,FOGA, ANTS, IEEE SMC, IEEE SSCI, HAIS, NICSO, NaBIC, SOCO, FedCSIS,SACI, CompStat, IADIS-Data Mining etc.)Evaluare activitate de cercetare:• Evaluare aplicatii submise la ANCS• Evaluare aplicatii submise la National Research Foundation from South Africa• Evaluare dosare pentru pozitii academice (10 la universitati din Romania; 1
pentru Budapest Univesity of Technology and Economics, Hungary; 1 pentruRobert Gordon University, Aberdeen, UK; 2 pentru Arab Open University,Kuwait)
Evaluare teze de doctorat: membru ın comisie la 46 teze din Romania (de la 6universitati), 4 teze din Franta, 5 teze din Finlanda, o teza din Olanda, o teza dinSpania si o theza din Africa de Sud.
Prezentariinvitate
• Summer School on Image Processing, SSIP 2016, Szeged, Hungary, 7-16 iulie2016
• Workshop on Stochastic Geometry and Big Data, INRIA - Sophia Antipolis, 24noiembrie, 2015
• Scientific seminar of the Computer Vision Center, University Autonoma deBarcelona, 18 aprilie, 2013
• 18th International Conference on Soft Computing, Brno, 27-29 iunie, 2012• IDEAS Research Seminar, Robert Gordon University Aberdeen, 17 mai, 2011• Doctoral Summer School ”Evolutionary Computing Optimization and Data Mining”,
Iasi, 2010-2014
Premii Premiul ”Professor Zdzislaw Pawlak Best Paper Award” acordat de Polish InformationProcessing Society in cadrul simpozionului ”Advances in Artificial Intelligence andApplications (AAIA)”, 2007
Proiecte decercetare
• RO-PN - II: NatComp - New natural computing models for complexity andcomplex problems solving, 2007-2009 (responsabil echipa de cercetare)
• RO-CEEX: MaternQual - Integrated system for complex evaluation of risk factorsand prediction in obstetrics, 2006-2008 (responsabil echipa de cercetare)
• H2020: SESAME Net - Supercomputing Expertise for Small And Medium Enterprises,H2020-EINFRA, 2015-2017
2 of 43
• H2020: VI-SEEM - a unified Virtual Research Environment for South EasternEurope and Eastern Mediterranean, H2020-EINFRA, 2015-2017
• FP7: HOST - High Performance Computing Service Center, 2012-2014• FP7: HP-SEE - High-Performance Computing Infrastructure for South East
Europe’s Research Communities, 2010 - 2012• FP7: SPRERS - Strengthening the Participation of Romania at European R&D
in Software Services, 2010-2011• ESA-Pecs: GiSHEO - On Demand Grid Services for Higher Education and
Training in Earth Observation, 2009-2010• RO-PNII-ID-PCE: AMICAS - Automated Management in Cloud and Sky Computing
Environments, 2012-2016• RO-PNII-ID-PCE: REVISAL - Modelling and simulation of the dynamics of
thymocyte populations and the cellular components of medulla under normaland pathological conditions, 2012-2016
• RO-PN - II: Asistsys - Integrated system for patients with severe neuromotorproblems, 2009-2011
• RO-CEEX: GRIDMOSI - Virtual organization based on Grid technology for highperformance modelling, simulation and optimization, 2005 -2008
• RO-CEEX: MedioGrid - Parallel and distributed graphical processing on Gridinfrastructure of geographical and environmental data, 2005 -2008
• RO-CEEX: SIAPOM - Integrated system for analysis and optimal multi-disciplinarydesign, 2006-2008
• RO-CNCS, ViaSan: Bio-View software for simulating biological processes, 2004-2005
• RO-CNCS: Stochastic modelling, approximation theory and numerical approacheswith applications in turbulence and economy, 2002-2004
Publicatii • 27 lucrari ın reviste• 60 lucrari ın volume ale conferintelor• 2 capitole de carte• lista publicatiilor este ın Anexa A
Citari • cca 854 citari in SCOPUS• cca 1300 citari in Scholar Google• o lista a citarilor pentru o selectie de lucrari este in Anexa B
Limbaje deprogramare
• C, C++, Java, Pascal, Python, Lisp, Fortran, Matlab, Mathematica, R
Limbi straine • engleza (mediu), franceza (ıncepator)
Asociatiiprofesionale
Membru:• Romanian Association for Artificial Intelligence• IEEE CIS Task Force on Differential Evolution
3 of 43
Anexa A. Publicatii (D. Zaharie)
Lucrari ın reviste:
1. D. Zaharie, R.D. Moleriu, F.A. Mic - Modeling the development of the post-natal mouse thymus in the absence ofbone marrow progenitors, Scientific Reports 6, Article number: 36159 (2016), doi:10.1038/srep36159, 2016.
2. J. Li, A. Agathos, D. Zaharie, J. M. Bioucas-Dias, A. Plaza, X. Li - Minimum Volume Simplex Analysis: A FastAlgorithm for Linear Hyperspectral Unmixing, IEEE Transactions on Geoscience and Remote Sensing, Volume:53,Issue: 9, Pages 5067 - 5082, 2015.
3. R.D. Moleriu, D. Zaharie, L.C. Moatar-Moleriu, A.T. Gruia, A.A. Mic, F.A. Mic - Insights into the mechanisms ofthymus involution and regeneration by modeling the glucocorticoid-induced perturbation of thymocyte populationsdynamics, Journal of Theoretical Biology, Volume 348, Pages 80-99, 2014.
4. G. Iuhasz, V. Negru, D. Zaharie - Neuroevolution based multi-agent system with ontology based template creationfor micromanagement in real-time strategy games, Information Technology and Control, Volume 43, Issue 1, pp.98-109, 2014.
5. D. Petcu, S. Panica, M. Frncu, M. Neagul, D. Zaharie, G. Macariu, D. Gorgan, T. Stefanut - Experiences inbuilding a Grid-based platform to serve Earth observation training activities , Computer Standards & Interfaces,Volume 34, Issue 6, Pages 493-508, 2012.
6. D. Petcu, S. Panica, M. Neagul, M. Frincu, D. Zaharie, R. Ciorba, A. Dinis - Earth observation data processingin distributed systems, Informatica. An International Journal of Computing and Informatics, Slovenian SocietyInformatika, vol. 34 (4), pg. 463-476, 2010.
7. F. Zamfirache, D. Zaharie, C. Craciun - Nature inspired metaheuristics for task scheduling in static and dynamiccomputing environments, Scientific Bulletin of Politehnica University of Timisoara, Transactions on AutomaticControl and Computer Science, vol 55(69), nr. 3, pp. 133-142, 2010
8. D. Zaharie - Influence of crossover on the behavior of the Differential Evolution Algorithm, Applied Soft Computing,vol 9, issue 3, pg. 1126-1138, 2009.
9. C. Chira, A. Gog, D. Zaharie, D. Dumitrescu - Complex Dynamics in a Collaborative Evolutionary Search Model,Creative Mathematics and Informatics, vol. 17, no. 3, pg. 346-356, 2008.
10. D. Petcu, D. Gorgan, F. Pop, D. Tudor, D. Zaharie - Satellite Image Processing on a Grid-Based Platform,International Journal of ”Computing”, 2008, Vol. 7, Issue 2, pg. 51-58, 2008.
11. D. Lungeanu, D. Zaharie, S. Holban, E. Bernad, M. Bari, R. Noaghiu - Exploratory Analysis of Medical CodingPractices: the Relevance of Reported Data Quality in Obstetrics-Gynaecology, in Stud Health Technol Inform.Amsterdam: IOS Press, ISBN 978-1-58603-864-9, ISSN 0926-9630, pg. : 839-844, 2008.
12. N. Bonchis, St. Balint, D. Zaharie - The Ramsey optimal growth model on finite horizon. An. Univ. Vest Timis.,Ser. Mat.-Inform. 45, No. 1, 59-76, 2007.
13. D. Zaharie - Extensions of Differential Evolution Algorithms for Multimodal Optimization, Analele Univ. Timisoaravol. XLII, ISSN 1224-970X, Timisoara, pg. 331-345, 2004.
14. C. Jichici, V. Negru, D. Pop, D. Zaharie, H. Popa - A Predictive Model for Learning Objects Quality Evaluation, Sci. Ann. Cuza Univ. 15, Iasi, pp.153-166, 2004.
15. D. Zaharie - Multi-objective Optimization with Adaptive Pareto Differential Evolution, in Memoriile SectiilorStiintifice, Seria IV, Tomul XXVI, pp. 223-239, Ed. Academiei Romane, 2003.
16. D. Zaharie - Parameter Adaptation in Differential Evolution by Controlling the Population Diversity, Analele Univ.Timisoara, vol. XXXX, issue 2, 2002.
17. D. Zaharie - On the Explorative Power of Differential Evolution Algorithms, Analele Univ. Timisoara, vol. XXXIX,pp.249-260, 2001
18. D. Zaharie - On an evolutionary algorithm for global optimization, Analele Univ.Timisoara, vol. XXXVIII, fasc.2, pg. 203-216, 2000.
19. D. Zaharie - Iterated morphological operators implemented through cellular neural networks, Analele Univ.Timisoara,vol. XXXVII (special issue on Computer Science), pg. 169-178, 1999.
20. O. Francois, D. Zaharie - Markovian Perturbations of Discrete Iterations. Lyapunov Functions, global minimizationand associative memory, Mathematical and Computer Modelling, 29, pp. 81-94, 1999.
21. D.Zaharie - Some Properties of Binary Stochastic Networks, Analele Universitatii din Bucuresti, 1999.
22. D. Zaharie - A Class of Adaptive Recurrent Neural Networks and Image Enhancement, Analele St. ale UniversitatiiAl. I. Cuza, Iasi, seria Informatica, tom VIII, pg. 177-185, 1998.
23. D. Zaharie - On Stochastically Perturbed Differential Systems, Annali dell’Universita di Ferrara, Sez. VII, Sc.Mat.,vol. XLII, pp. 77-85, 1996.
24. D. Zaharie - A Markovian Study of Recurrent Neural Networks with Stochastic Dynamics, Informatica, LithuanianAcademy of Science, Vilnius, vol. 7, nr. 2, pp. 255-266, 1996.
25. D. Zaharie - Learning Algorithms for Feedback Neural Networks with Stochastic Dynamics, Analele Universitatiidin Timisoara, vol. XXXIII, fasc. 2, seria Matematica-Informatica, pp. 287-299, 1995.
4 of 43
26. D. Zaharie - On the Stochastic Modelling of Feedback Neural Networks, Analele Universitatii din Timisoara, vol.XXXI, fasc. 2, seria Matematica-Informatica, pp. 281-297, 1993.
27. D. Zaharie - On the Models of Random Automata, Analele Universitatii din Timisoara, vol. XXVIII, fasc. 2-3,seria Stiinte Matematice, pp. 211-222, 1990.
Capitole de carti
1. D. Zaharie, D. Lungeanu, F. Zamfirache - Interactive Search of Rules in Medical Data Using MultiobjectiveEvolutionary Algorithms, chapter in Genetic and Evolutionary Computation: Medical Applications, Stephen Smithand Stefano Cagnoni (eds), John Wiley & Sons, pp 133-148, 2010
2. D. Petcu, D. Zaharie, M. Neagul, S. Panica, M. Frincu, D. Gorgan, T. Stefanut and V. Bacu - Remote SensedImage Processing on Grids for Training in Earth Observation , in Yung-Sheng Chen (Ed.), Image Processing,INTECH, chapter 8, pp 115-140, 2009.
Lucrari ın volume ale conferintelor
1. M. Erascu, F. Micota, D. Zaharie - A scalable hybrid approach for applications placement in the cloud, 2015 Confer-ence on Grid, Cloud & High Performance Computing in Science (ROLCG), 28-30 October 2015, 10.1109/ROLCG.2015.7367232,2015.
2. R. Dogaru, F. Micota, D. Zaharie - Searching for Taxonomy-based Similarity Measures for Medical Data, 7thBalkan Conference in Informatics, BCI 2015, 2-4 September, DOI:10.1145/2801081.2801102, 2015.
3. R. Dogaru, F. Micota, D. Zaharie - Taxonomy-based dissimilarity measures for profile identification in medicaldata , SISY 2015, 10.1109/SISY.2015.7325369, pg. 149-154, 2015.
4. L. Moatar-Moleriu, V. Negru, D. Zaharie - Evolutionary Estimation of Parameters in Computational Models ofThymocyte Dynamics, LSSC’13, June, Sozopol, Springer LNCS 8353, pg. 264-271, 2014.
5. D. Zaharie, L. Moatar-Moleriu, V. Negru - Particularities of Evolutionary Parameter Estimation in Multi-stageCompartmental Models of Thymocyte Dynamics, GECCO’13, July 6-10, Amsterdam, pg. 303-310, 2013.
6. G. Iuhasz, V. Negru, D. Zaharie - Neuroevolution based multi-agent system for micromanagement in real-time strat-egy games, Proceedings of the Fifth Balkan Conference in Informatics, pg 32-39, ACM doi:10.1145/2371316.2371324,2012
7. D. Zaharie - Differential Evolution: from Theoretical Results to Practical Insights, in Proc. of 18th InternationalConference on Soft Computing, June 27-29, Brno, Czech Republic, pg. 126-131, 2012.
8. A.C. Zvoianu, G. Kronberger, M. Kommenda, D. Zaharie, M. Affenzeller - Improving the Parsimony of RegressionModels for an Enhanced Genetic Programming Process, LNCS 6927, pp. 264-271, 2012.
9. D. Petcu, D. Zaharie, S. Panica, A.S. Hussein, A. Sayed; H. El-Shishiny, Fuzzy clustering of large satellite imagesusing high performance computing, Proc. SPIE 8183, High-Performance Computing in Remote Sensing, 818302(12 October 2011); doi: 10.1117/12.898281, 2011
10. D. Zaharie, L. Perian, V. Negru - A View Inside the Classification with Non-Nested Generalized Exemplars, IADISEuropean Conference on Data Mining, 24-26 July, Rome, Italy, pg.19-26, 2011
11. D. Zaharie, L.Perian, V. Negru, F. Zamfirache - Evolutionary pruning of non-nested generalized exemplars, inProc.of the 6th IEEE International Symposium on Computational Intelligence and Informatics, Timisoara, 19-21mai 2011, pg 57-62, 2011.
12. F. Zamfirache, M. Frincu, D. Zaharie - Population based Metaheuristics for Tasks Scheduling in HeterogenousDistributed Systems, in I.Dimov, S. Dimova, N. Kolkovska (eds), Proc. of NMA 2010 Conference, LNCS 6046, pg.321-327, 2011.
13. D. Dumitrescu, R. Lung, R. Nagy, D. Zaharie, A. Bartha, D. Logofatu - Evolutionary Detection of New Classesof Equilibria: Application in Behavioral Games. PPSN (2)’2010. pp.432 441, 2010
14. D. Dumitrescu, R. Lung, R. Nagy, D. Zaharie, A. Bartha - Exploring evolutionary detected fuzzy equilibria: A linkbetween normative theory and real life, Proceedings of the 12th Annual Genetic and Evolutionary ComputationConference, GECCO ’10 , pp. 539-540, 2010
15. F. Zamfirache, D. Zaharie, C. Craciun - Evolutionary task scheduling in static and dynamic environments, ICCC-CONTI 2010 - IEEE International Joint Conferences on Computational Cybernetics and Technical Informatics,Proceedings , art. no. 5491336, pp. 619-624, 2010
16. I.Zaharie, D. Zaharie - On The Non-Isothermal Crystallization of Fe60Gd5Cr15B20 Amorphous Alloys, in A.Angelopoulos, T. Fildisis (eds), AIP Conference Proceedings Volume 1203, 7th International Conference of theBalkan Physical Union pp. 335-340, 2010
17. C. Craciun, M. Nicoara, D. Zaharie, Enhancing the Scalability of Metaheuristics by Cooperative Coevolution, inI. Lirkov, S. Margenov, and J. Wasniewski (Eds.): Proc. of LSSC 2009, LNCS 5910, pp. 310-317, 2010.
18. M. Neagul, S. Panica, D. Petcu, D. Zaharie, D. Gorgan - Web and grid services for training in Earth observation, Proceedings of the 5th IEEE International Workshop on Intelligent Data Acquisition and Advanced ComputingSystems: Technology and Applications, IDAACS’2009 , art. no. 5342986, pp. 241-246, 2009.
19. Gog, C. Chira, D. Dumitrescu, D. Zaharie - Analysis of Some Mating and Collaboration Strategies in EvolutionaryAlgorithms, in V. Negru et al. (eds), Proceedings of SYNASC 2008, IEEE Computer Society, pp 538-542, 2009.
5 of 43
20. D. Zaharie - Statistical properties of differential evolution and related random search algorithms, in Paula Brito(ed.) Proceedings of International Conference on Computational Statistics Porto, Portugal, August 24-29, Physica-Verlag HD, ISBN978-3-7908-2083-6, pg. 473-485, 2008.
21. D. Zaharie, D. Petcu, S. Panica - A Hierarchical Approach in Distributed Evolutionary Algorithms for Multiob-jective Optimization , in I. Lirkov, S. Margenov, J. Wasniewski (eds) Proc. of LSSC 2007 - 6th InternationalConference on Large Scale Computing, LNCS 4818, ISBN-10 3-540-78825-5 Springer, pp. 505-514, 2008.
22. D. Zaharie, D. Lungeanu, F. Zamfirache - Interactive Search of Rules in Medical Data Using MultiobjectiveEvolutionary Algorithms , in Proceedings of the 2008 GECCO Conference Genetic and Evolutionary Computa-tion (workshop MedGEC–medical applications of genetic and evolutionary computation), Atlanta august 2008,ISBN:978-1-60558-131-6, pg. 2065-2072, 2008.
23. D. Lungeanu, D. Zaharie, F. Zamfirache - Influence of Missing Values Treatment on Classification Rules Evolvedfrom Medical Data. In I. Bichindaritz, P. Perner, L. G. Shapiro (Eds.): Advances in Data Mining. 8th IndustrialConference, ICDM 2008, Leipzig, Germany, July 2008, Poster and Workshop Proceedings. IbaI Publishing 2008,ISBN 978-3-940501-03-5, pg. 86-95, 2008.
24. S. Panica, D. Petcu, D. Zaharie - Evolutionary multi-objective optimization on Grid environments, in H. Burkhart(ed.), Procs. PDCN 2008, Parallel and Distributed Computing and Networks - 2008, Innsbruck, 11-14 feb., ActaPress, ISBN 978-0-88986-713-0, editor H. Burkhart, pg. 81-86, 2008.
25. R. Dogaru, D. Zaharie, D. Lungeanu, E. Bernad, M. Bari - A Framework for Mining Association Rules in Dataon Perinatal Care, Proceedings of CONTI 2008 (Conference on Technical Informatics, session on BiomedicalInformatics), Timisoara 4-6 iunie, vol 1, ISSN 1844-539X, pg. 147-152, 2008.
26. D. Zaharie, D. Lungeanu, S. Holban - Feature ranking based on weights estimated by multiobjective optimizationIn: J.Roth, J.Gutirrez, A.P. Abraham (eds.), Proceedings of IADIS First European Conference on Data Mining,5-7 iulie 2007, Lisabona, ISBN 978-972-8924-40-9, pg. 124-128, 2007.
27. D. Petcu, D. Zaharie, D. Gorgan et al.- MedioGrid: A grid-based platform for satellite image processing, in Proc.of 4th IEEE International Workshop on Intelligent Data Acquisition and Advanced Computing Systems, sep 06-08,2007 Dortmund, pg: 137-142, 2007.
28. D. Zaharie, S. Panica, M. Stoia-Djeska, M. Dragan, D. Petcu - Airfoil shape optimization by coupling computationalfluid dynamics with evolutionary multiobjective optimization, in M. Ganzha, M. Paprzycki, T. Pelech-Pilichowski(eds), Procs. Proceedings of the International Multiconference on Computer Science and Information Technology(IMCSIT 2007), October 15 17, 2007, Wisla, Poland, vol. 2, ISSN 1896-7094, pg. 323-325, 2007
29. D. Zaharie - A comparative analysis of crossover variants in differential evolution in M. Ganzha, M. Paprzycki, T.Pelech-Pilichowski (eds), Proc. of International Multiconference on Computer Science and Information TechnologyIMCSIT 2007, 15-17 oct., Wisla, Poland, ISSN 1896-7094, pg. 171-181, 2007
30. D. Petcu, D. Zaharie, H. Popa, M. Frincu, A. Eckstein - Grid Services Based on Heuristic Methods for Multi-Objective Optimization Problems, Procs. CSCS-16, 16th Intern. Conference on Control Systems and ComputerScience, Bucuresti, 22-25 May, 2007, EdituraPrintech, vol. 2, ISBN 978-973-718-743-7, pg. 136-141, 2007.
31. S. Panica, D. Petcu, D. Zaharie - A Grid-enabled Framework for Evolutionary Multiobjective Optimization,Procs. SACCS 2007, Iasi, 9th Internat. Symposium on Automatic Control and Computer Science, Proceedings,CD version, ISSN 1843-665-X, 2007.
32. D. Zaharie, D. Lungeanu, S. Holban, D. Navolan - Extracting prediction rules from medical data using evolutionaryalgorithms, Rev Med Chir Soc Med Nat Iasi (ISSN 0048-7848), Vol 111, Nr. 2 Supl.2: pg.197-202, 2007.
33. H. Popa, D.Pop, V. Negru, D. Zaharie - A Multi-Agent System for Knowledge Discovery from Databases, Proc.of SYNASC’07, IEEE Computer Society, ISBN 0-7695-3078-8, pg. 275-281, 2007.
34. D. Zaharie, S. Holban, D. Lungeanu, D. Navolan - A computational Intelligence Approach for Ranking Risk Factorsin Preterm Birth. In: Szakal A. (ed.). Proceedings of 4th International Symposium on Applied ComputationalIntelligence and Informatics - SACI2007, mai 2007, Timisoara, ISBN: 1-4244-1234-X, pg. 135-140, 2007.
35. D. Zaharie, F.Zamfirache, V.Negru, D.Pop, H. Popa - A Comparison of Quality Criteria for Unsupervised Cluster-ing of Documents Based on Differential Evolution, Proc. of International Conference on Knowledge Engineering:Principles and Techniques, Cluj-Napoca, 7-8 iunie, 2007, 114-121, 2007.
36. D. Zaharie, G. Ciobanu - Distributed Evolutionary Algorithms Inspired by Membranes in Continuous OptimizationProblems , in H.J. Hoogeboom, G. Paun, G. Rozenberg (eds), Pre-Proceedings of 7th Workshop on MembraneComputing, Leiden, 17-21 iulie, pp. 522-537, 2006.
37. D. Zaharie, D. Petcu - Communication Strategies in Distributed Evolutionary Algorithms for Multi-objectiveOptimization , Proc. of 7th International Conference on Technical Informatics, Timisoara, june 8-9, vol. 1, pp.145-150,2006.
38. D. Zaharie - Distributed Clustering Based on Representatives Evolved by Crowding Differential Evolution , in R.Matousek, P. Osmera (eds), Proc. of 12th International Conference on Soft Computing, Brno, may 31 - june 2,pp. 51-56, 2006.
39. D. Zaharie, F. Zamfirache - Diversity Enhancing Mechanisms for Evolutionary Optimization in Static and Dy-namic Environments , Proc. of 3rd Romanian-Hungarian Joint Symposium on Applied Computational Intelli-gence,Timisoara, may 25-26, pp. 460-471,2006.
6 of 43
40. D. Zaharie, F. Zamfirache - Dealing with noise in ant-based clustering , Proc. IEEE Congress of EvolutionaryComputation 2005, Edinburgh , 2-5 sept 2005, pg. 2395-2402.
41. D. Zaharie, F. Zamfirache - Ant-based clustering of medical data , HCMC 2005, First East European Conferenceon ”Health Care Modelling and Computation” (eds: F. Gorunescu, E. El-Darzi, M. Gorunescu), pg. 332-343,2005.
42. D. Zaharie - Density-based clustering with crowding differential evolution , Proc. 7 th Symposium on Symbolicand Numeric Algorithms for Scientific Computing, 25-29 sept. 2005, pg. 72-79, 2005.
43. I.Zaharie, D. Zaharie - Evolutionary optimization of molecular clusters, Proc. of 4th Conference on Isotopic andMolecular Processes, Cluj-Napoca, sept. 22-24, 2005 STUDIA UNIVERSITATIS BABES-BOLYAI, PHYSICA, L,4a, pg. 447-450, 2005.
44. D. Zaharie - Extensions of Differential Evolution Algorithms for Multimodal Optimization, in D. Petcu et.al (eds.),Proc. of SYNASC’04, 6th International Symposium of Symbolic and Numeric Algorithms for Scientific Computing,Timisoara, september 26-30, pp. 523-534, 2004.
45. D. Zaharie - A Multipopulation Differential Evolution Algorithm for Multimodal Optimization , in R. Matousek,P. Osmera (eds.), Proc. of Mendel 2004, 10th International Conference on Soft Computing, Brno, june 2004, pp.17-22, 2004.
46. C. Grosan, D. Zaharie - Base Changing Strategies in an Adaptive Representation Evolutionary Algorithm , Proc.of SACI’04 (1st Romanian-Hungarian Joint Symposium on Applied Computational Intelligence,Timisoara, may2004, pp. 79-88, 2004.
47. D. Zaharie, D. Petcu - Adaptive Pareto Differential Evolution and its Parallelization, Proc. of 5th InternationalConference on Parallel Processing and Applied Mathematics, Czestochowa, Poland, sept. 2003 , Lecture Notes inComputer Science Volume 3019, pp 261-268, 2004.
48. I.Zaharie, D. Zaharie -On the Determination of the Crystallization Energy in non-Isothermal Processes by usingEvolutionary Algorithms, 3rd Conference on Isotopic and Molecular Processes, Cluj-Napoca, sept. 2003, StudiaUniversitatis Babes-Bolyai, Physica special issue 2, XLVIII, pg. 317-320,2003.
49. D. Zaharie, D. Petcu - Parallel implementation of multi-population differential evolution In Proc. of 2nd Workshopon Concurrent Information Processing and Computing (CIPC’03), Sinaia, Romania, eds. D. Grigoras et al., 2003.
50. D. Zaharie - Control of Population Diversity and Adaptation in Differential Evolution Algorithms, in R. Matousek,P. Osmera (eds.), Proc. of Mendel 2003, 9th International Conference on Soft Computing, Brno, Czech Republic,june 2003, pp. 41-46, 2003.
51. D. Zaharie - Critical Values for the Control Parameters of Differential Evolution Algorithms, in R. Matousek, P.Osmera (eds.), Proc. of Mendel 2002, 8th International Conference on Soft Computing, Brno,Czech Republic, june2002, pp. 62-67, 2002.
52. D. Zaharie - On the Statistical Properties of Evolutionary Algorithms for Global Optimization, Proc. of the 9thSymposium of Mathematics and its Applications, ”Politehnica” Univ. Timisoara, nov. 2001.
53. D. Zaharie - Recombination Operators for Evolutionary Algorithms, Proc. of the XXVII Summer School of”Mathematics and its Applications in Engineering and Economics”, Sozopol, Bulgaria, june 2001.
54. D. Zaharie - Image Processing through Nonlinear Dynamical Systems, Proc. of the 8th Symposium of Mathematicsand its Applications, ”Politehnica” Univ. Timisoara, nov. 1999, pg. 413-420.
55. D. Zaharie - Nonlinear adaptive filters for image processing implemented through recurrent neural networks, Intern.Conference on Technical Informatics (Conti’98), Timisoara, 29-30 October, Bull. UPT, vol. 43(57), no.4, pp.12-21,1998.
56. D. Zaharie – Markovian modelling of stochastic neural networks with binary units, PAMM Conference (PC-122),Constanta, July 26- August 3, Bull. for Applied and Computer Mathematics, 1566-LXXXVI-B, pp.61-68, 1998.
57. D. Zaharie - Asymptotic behaviour of a class of nonlinear adaptive systems applied in image processing, PAMMConference (PC-122), Arad, July 22-25, Bull. for Applied and Computer Mathematics, 1566-LXXXVI-B, pp.505-514, 1998.
58. D. Zaharie - Networks of Binary Units with Stochastic Threshold, Proc. of the 6th Symposium of Mathematicsand its Applications, Timisoara, pp. 204-210, 1995.
59. D. Zaharie, I. Zaharie - Recurrent Neural Networks with Weighted Multiple-Time Step Parallel Dynamics, Proc.of International Conference on Technical Informatics, Timisoara, pp. 159-165, 1994.
60. D. Zaharie, I. Zaharie - Stability of Feedback Neural Networks with Stochastic Synaptic Weights, Proc. of the 6thSymposium of Mathematics and its Applications, Timisoara, pp. 310-317, 1993.
7 of 43
Appendix B. Citari1 (D. Zaharie)
Citari pentru D. Zaharie - D. Zaharie - Parameter Adaptation in Differential Evolution by Controlling thePopulation Diversity, Analele Univ. Timisoara (Proc. of SYNASC 2002), vol. XXXX, issue 2, 2002
1. Hu, Z., Su, Q., Yang, X., Xiong, Z.; Not guaranteeing convergence of differential evolution on a class of multimodalfunctions; 2016; Applied Soft Computing Journal; 41; 479; 487; 4; 10.1016/j.asoc.2016.01.001
2. Qiu, X., Xu, J.-X., Tan, K.C., Abbass, H.A.; Adaptive Cross-Generation Differential Evolution Operators forMultiobjective Optimization; 2016; IEEE Transactions on Evolutionary Computation; 20; 2; 7138611; 232; 244; 3;10.1109/TEVC.2015.2433672
3. Qiu, X., Xu, W., Tan, K.C., Xu, J.-X.; A new framework for self-adapting control parameters in multi-objectiveoptimization; 2015; GECCO 2015 - Proceedings of the 2015 Genetic and Evolutionary Computation Conference;743; 750; 10.1145/2739480.2754714
4. Thangavelu, S., Jeyakumar, G., Shunmuga Velyautham, C.; Population variance based empirical analysis ofthe behavior of differential evolution variants; 2015; Applied Mathematical Sciences; 9; 65-68; 3249; 3263; 1;10.12988/ams.2015.54312
5. Islam, S.M., Das, S., Ghosh, S., Roy, S., Suganthan, P.N.; An adaptive differential evolution algorithm with novelmutation and crossover strategies for global numerical optimization; 2012; IEEE Transactions on Systems, Man,and Cybernetics, Part B: Cybernetics; 42; 2; 6046144; 482; 500; 206; 10.1109/TSMCB.2011.2167966
6. Das, S., Suganthan, P.N.; Differential evolution: A survey of the state-of-the-art; 2011; IEEE Transactions onEvolutionary Computation; 15; 1; 5601760; 4; 31; 1552; 10.1109/TEVC.2010.2059031
7. Shan, D.M., Chen, Z.N., Wu, X.H.; Signal optimization for UWB radio systems; 2005; IEEE Transactions onAntennas and Propagation; 53; 7; 2178; 2184; 26; 10.1109/TAP.2005.850755
8. Jeyakumar, G., Velayutham, C.S.; Hybridizing differential evolution variants through heterogeneous mixing in adistributed framework; 2016; Studies in Computational Intelligence; 611; 107; 151; 10.1007/978-81-322-2544-7 4
9. Jeyakumar, G., Shunmuga Velayutham, C.; Hybridizing differential evolution variants through heterogeneousmixing in a distributed framework; 2015; Hybrid Soft Computing Approaches: Research and Applications; 611;107; 151; 2; 10.1007/978-81-322-2544-7 4
10. Reddy, R.R., Jeyakumar, G.; Differential evolution with added components for early detection and avoidanceof premature convergence in solving unconstrained global optimization problems; 2015; International Journal ofApplied Engineering Research; 10; 5; 13579; 13594;
11. Thangavelu, S., Jeyakumar, G., Balakrishnan, R.M., Velayutham, C.S.; Theoretical analysis of expected populationvariance evolution for a differential evolution variant; 2015; Smart Innovation, Systems and Technologies; 32; 403;416; 10.1007/978-81-322-2208-8 37
12. Basak, A., Maity, D., Das, S.; A differential invasive weed optimization algorithm for improved global numericaloptimization; 2013; Applied Mathematics and Computation; 219; 12; 6645; 6668; 18; 10.1016/j.amc.2012.12.057
13. Ghosh, S., Roy, S., Das, S., Abraham, A., Islam, S.M.; Peak-to-average power ratio reduction in OFDM systemsusing an adaptive differential evolution algorithm; 2011; 2011 IEEE Congress of Evolutionary Computation, CEC2011; 5949853; 1941; 1949; 3; 10.1109/CEC.2011.5949853
14. Basak, A., Pal, S., Abhyankar, A.R., Panigrahi, B.K.; Modified equivalent bilateral exchange of transmissionpricing using DIWO; 2010; 2010 Joint International Conference on Power Electronics, Drives and Energy Systems,PEDES 2010 and 2010 Power India; 5712557; ; 10.1109/PEDES.2010.5712557
15. Dasgupta, S., Das, S., Biswas, A., Abraham, A.; On stability and convergence of the population-dynamics indifferential evolution; 2009; AI Communications; 22; 1; 1; 20; 47; 10.3233/AIC-2009-0440
16. Das, S., Abraham, A., Konar, A.; Modeling and analysis of the population-dynamics of differential evolutionalgorithm; 2009; Studies in Computational Intelligence; 178; 111; 135; 10.1007/978-3-540-93964-1 3
17. Mukhopadhyay, A., Roy, A., Das, S., Das, S., Abraham, A.; Population-variance and explorative power of har-mony search: An analysis; 2008; 3rd International Conference on Digital Information Management, ICDIM 2008;4746793; 775; 781; 11; 10.1109/ICDIM.2008.4746793
1Sursa: SCOPUS - documente principale s aditionale. Lista include doar citari la lucrari citate de cel putin 15 ori8 of 43
Citari pentru D. Zaharie - Critical Values for the Control Parameters of Differential Evolution Algorithms,in R. Matousek, P. Osmera (eds.), Proc. of Mendel 2002, 8th International Conference on Soft Computing,Brno,Czech Republic, june 2002, pp. 62-67, 2002.
1. Kukkonen, S., Coello Coello, C.A.; Generalized differential evolution for numerical and evolutionary optimization;2017; Studies in Computational Intelligence; 663; 253; 279; 10.1007/978-3-319-44003-3 11
2. Maciel, L., Gomide, F., Ballini, R.; A differential evolution algorithm for yield curve estimation; 2016; Mathematicsand Computers in Simulation; 129; 10; 30; 10.1016/j.matcom.2016.04.004
3. Campelo, F., Botelho, M.; Experimental investigation of recombination operators for differential evolution; 2016;GECCO 2016 - Proceedings of the 2016 Genetic and Evolutionary Computation Conference; 221; 228; 10.1145/2908812.2908852
4. Zheng, F., Zecchin, A.C., Maier, H.R., Simpson, A.R.; Comparison of the searching behavior of NSGA-II,SAMODE, and borg MOEAs applied to water distribution system design problems; 2016; Journal of Water Re-sources Planning and Management; 142; 7; 4016017; 10.1061/(ASCE)WR.1943-5452.0000650
5. Santhosh, E.C., Sangwai, J.S.; A hybrid differential evolution algorithm approach towards assisted history matchingand uncertainty quantification for reservoir models; 2016; Journal of Petroleum Science and Engineering; 142; 21;35; 10.1016/j.petrol.2016.01.038
6. Hu, Z., Su, Q., Yang, X., Xiong, Z.; Not guaranteeing convergence of differential evolution on a class of multimodalfunctions; 2016; Applied Soft Computing Journal; 41; 479; 487; 10.1016/j.asoc.2016.01.001
7. Dragoi, E.-N., Dafinescu, V.; Parameter control and hybridization techniques in differential evolution: a survey;2016; Artificial Intelligence Review; 45; 4; 447; 470; 10.1007/s10462-015-9452-8
8. Dragoi, E.N., Curteanu, S.; The use of differential evolution algorithm for solving chemical engineering problems;2016; Reviews in Chemical Engineering; 32; 2; 149; 180; 10.1515/revce-2015-0042
9. Cavalini, A.A., Lobato, F.S., Koroishi, E.H., Steffen, V.; Model updating of a rotating machine using the self-adaptive differential evolution algorithm; 2016; Inverse Problems in Science and Engineering; 24; 3; 504; 523;10.1080/17415977.2015.1047364
10. Lynn, N., Mallipeddi, R., Suganthan, P.N.; Self-adaptive ensemble differential evolution with sampled parametervalues for unit commitment; 2016; Lecture Notes in Computer Science (including subseries Lecture Notes inArtificial Intelligence and Lecture Notes in Bioinformatics); 9873 LNCS; 1; 16; 10.1007/978-3-319-48959-9 1
11. Raghu, R., Jeyakumar, G.; Mathematical modelling of migration process to measure population diversity of Dis-tributed Evolutionary Algorithms; 2016; Indian Journal of Science and Technology; 9; 31; 82410; 10.17485/ijst/2016/v9i31/82410
12. Kylheiko, K., Luukka, P., Jantunen, A., Heinrich, T.; How to win innovation races in high-tech industries? Anevolutionary optimisation model; 2016; International Journal of Technology Intelligence and Planning; 11; 1; 62;91; 10.1504/IJTIP.2016.074240
13. Moreno, L., Martin, F., Muoz, M.L., Garrido, S.; Differential Evolution Markov Chain Filter for Global Lo-calization; 2016; Journal of Intelligent and Robotic Systems: Theory and Applications; 82; 03.apr; 513; 536;10.1007/s10846-015-0245-8
14. Li, F.-W., Zhang, X.-Y., Zhu, J., Huang, Q.; Network security situation prediction based on APDE-RBF neuralnetwork; 2016; Xi Tong Gong Cheng Yu Dian Zi Ji Shu/Systems Engineering and Electronics; 38; 12; 2869; 2875;10.3969/j.issn.1001-506X.2016.12.28
15. Kukkonen, S., Coello, C.A.C.; Applying exponential weighting moving average control parameter adaptationtechnique with generalized differential evolution; 2016; 2016 IEEE Congress on Evolutionary Computation, CEC2016; 7744398; 4755; 4762; 10.1109/CEC.2016.7744398
16. Cihan, A., Birkholzer, J.T., Bianchi, M.; ”Optimal well placement and brine extraction for pressure managementduring CO< inf> 2< /inf> sequestration”; 2015; International Journal of Greenhouse Gas Control; 42;175; 187; 10.1016/j.ijggc.2015.07.025
17. Kushida, J.-I., Hara, A., Takahama, T.; Rank-based differential evolution with multiple mutation strategies forlarge scale global optimization; 2015; 2015 IEEE Congress on Evolutionary Computation, CEC 2015 - Proceedings;7256913; 353; 360; 10.1109/CEC.2015.7256913
18. Jin, C., Qin, A.K., Tang, K.; Local ensemble surrogate assisted crowding differential evolution; 2015; 2015 IEEECongress on Evolutionary Computation, CEC 2015 - Proceedings; 7256922; 433; 440; 10.1109/CEC.2015.7256922
19. Zheng, F., Zecchin, A.C., Simpson, A.R.; Investigating the run-time searching behavior of the differential evolutionalgorithm applied to water distribution system optimization; 2015; Environmental Modelling and Software; 69;292; 307; 10.1016/j.envsoft.2014.09.022
20. Mallipeddi, R., Lee, M.; An evolving surrogate model-based differential evolution algorithm; 2015; Applied SoftComputing Journal; 34; 770; 787; 10.1016/j.asoc.2015.06.010
21. Fan, Q., Yan, X.; Self-adaptive differential evolution algorithm with discrete mutation control parameters; 2015;Expert Systems with Applications; 42; 3; 1551; 1572; 10.1016/j.eswa.2014.09.046
22. Yang, M., Li, C., Cai, Z., Guan, J.; Differential evolution with auto-enhanced population diversity; 2015; IEEETransactions on Cybernetics; 45; 2; 6868218; 302; 315; 10.1109/TCYB.2014.2339495
9 of 43
23. Gil, D., Roche, D., Borris, A., Giraldo, J.; Terminating evolutionary algorithms at their steady state; 2015;Computational Optimization and Applications; 61; 2; 9722; 489; 515; 10.1007/s10589-014-9722-4
24. Thangavelu, S., Jeyakumar, G., Balakrishnan, R.M., Velayutham, C.S.; Theoretical analysis of expected populationvariance evolution for a differential evolution variant; 2015; Smart Innovation, Systems and Technologies; 32; 403;416; 10.1007/978-81-322-2208-8 37
25. Locatelli, M., Vasile, M.; (Non) convergence results for the differential evolution method; 2015; OptimizationLetters; 9; 3; 413; 425; 10.1007/s11590-014-0816-9
26. Raghu, R., Jeyakumar, G.; Empirical analysis on the population diversity of the sub-population in distributeddifferential evolution algorithm; 2015; International Journal of Control Theory and Applications; 8; 5; 1809; 1816;
27. Thangavelu, S., Jeyakumar, G., Shunmuga Velyautham, C.; Population variance based empirical analysis of the be-havior of differential evolution variants; 2015; Applied Mathematical Sciences; 9; 65-68; 3249; 3263; 10.12988/ams.2015.54312
28. Drozdik, M., Aguirre, H., Akimoto, Y., Tanaka, K.; Comparison of parameter control mechanisms in multi-objective differential evolution; 2015; Lecture Notes in Computer Science (including subseries Lecture Notes inArtificial Intelligence and Lecture Notes in Bioinformatics); 8994; 89; 103; 10.1007/978-3-319-19084-6 8
29. Miruna Joe Amali, S., Baskar, S.; Surrogate assisted-hybrid differential evolution algorithm using diversity control;2015; Expert Systems; 32; 4; 531; 545; 10.1111/exsy.12105
30. Al-Dabbagh, R.D., Botzheim, J., Al-Dabbagh, M.D.; Comparative analysis of a modified differential evolutionalgorithm based on bacterial mutation scheme; 2015; IEEE SSCI 2014 - 2014 IEEE Symposium Series on Com-putational Intelligence - SDE 2014: 2014 IEEE Symposium on Differential Evolution, Proceedings; 7031532;10.1109/SDE.2014.7031532
31. Martn, F., Monje, C.A., Moreno, L., Balaguer, C.; DE-based tuning of PI?D? controllers; 2015; ISA Transactions;59; 398; 407; 10.1016/j.isatra.2015.10.002
32. Zheng, F.; Comparing the real-time searching behavior of four differential-evolution variants applied to water-distribution-network design optimization; 2015; Journal of Water Resources Planning and Management; 141; 10;4015016; 10.1061/(ASCE)WR.1943-5452.0000534
33. Al-Nemer, A.A., Issaka, M.B., Awotunde, A.A., Al-Hashem, H.S.; Global optimization strategies for well testsin dual porosity reservoirs; 2015; SPE Middle East Oil and Gas Show and Conference, MEOS, Proceedings;2015-January; 716; 739;
34. P. Silva, R.C., Lopes, R.A., R. Freitas, A.R., Guimar?es, F.G.; A study on self-configuration in the differentialevolution algorithm; 2015; IEEE SSCI 2014 - 2014 IEEE Symposium Series on Computational Intelligence - SDE2014: 2014 IEEE Symposium on Differential Evolution, Proceedings; 7031531; 10.1109/SDE.2014.7031531
35. Al-Dabbagh, R.D., Mekhilef, S., Baba, M.S.; Parameters’ fine tuning of differential evolution algorithm; 2015;Computer Systems Science and Engineering; 30; 2; 125; 139;
36. Maier, H.R., Kapelan, Z., Kasprzyk, J., Kollat, J., Matott, L.S., Cunha, M.C., Dandy, G.C., Gibbs, M.S., Keedwell,E., Marchi, A., Ostfeld, A., Savic, D., Solomatine, D.P., Vrugt, J.A., Zecchin, A.C., Minsker, B.S., Barbour, E.J.,Kuczera, G., Pasha, F., Castelletti, A., Giuliani, M., Reed, P.M.; Evolutionary algorithms and other metaheuristicsin water resources: Current status, research challenges and future directions; 2014; Environmental Modelling andSoftware; 62; 271; 299; 10.1016/j.envsoft.2014.09.013
37. Coelho, L.D.S., Ayala, H.V.H., Mariani, V.C.; A self-adaptive chaotic differential evolution algorithm using gammadistribution for unconstrained global optimization; 2014; Applied Mathematics and Computation; 234; 452; 459;10.1016/j.amc.2014.01.159
38. Raghunathan, T., Ghose, D.; Differential evolution based 3-D guidance law for a realistic interceptor model; 2014;Applied Soft Computing Journal; 16; 20; 33; 10.1016/j.asoc.2013.11.017
39. Drozdik, M., Tanaka, K., Aguirre, H., Verel, S., Liefooghe, A., Derbel, A.B.; An analysis of differential evolutionparameters on rotated bi-objective optimization functions; 2014; Lecture Notes in Computer Science (includingsubseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics); 8886; 143; 154;
40. Qin, A.K., Tang, K., Pan, H., Xia, S.; Self-adaptive differential evolution with local search chains for real-parametersingle-objective optimization; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC2014; 6900636; 467; 474; 10.1109/CEC.2014.6900636
41. Dai, Q.-W., Jiang, F.-B., Dong, L.; Nonlinear inversion for electrical resistivity tomography based on chaoticDE-BP algorithm; 2014; Journal of Central South University; 21; 5; 2018; 2025; 10.1007/s11771-014-2151-9
42. Segura, C., Coello, C.A.C., Segredo, E., Len, C.; An analysis of the automatic adaptation of the crossover ratein differential evolution; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014;6900585; 459; 466; 10.1109/CEC.2014.6900585
43. Aalto, J., Lampinen, J.; A mutation and crossover adaptation mechanism for differential evolution algorithm;2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014; 6900532; 451; 458;10.1109/CEC.2014.6900532
44. Kazimipour, B., Li, X., Qin, A.K.; Effects of population initialization on differential evolution for large scaleoptimization; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014; 6900624;2404; 2411; 10.1109/CEC.2014.6900624
10 of 43
45. Subramanian, S.V., Delaurentis, D.A.; A hybrid differential evolution self-organizing-map algorithm for optimiza-tion of expensive black-box functions; 2014; AIAA AVIATION 2014 -15th AIAA/ISSMO Multidisciplinary Analysisand Optimization Conference; ;
46. Locatelli, M., Maischberger, M., Schoen, F.; Differential evolution methods based on local searches; 2014; Com-puters and Operations Research; 43; 1; 169; 180; 10.1016/j.cor.2013.09.010
47. Das, S., Mandal, A., Mukherjee, R.; An adaptive differential evolution algorithm for global optimization in dynamicenvironments; 2014; IEEE Transactions on Cybernetics; 44; 6; 6587535; 966; 978; 10.1109/TCYB.2013.2278188
48. Roche, D., Gil, D., Giraldo, J.; Detecting loss of diversity for an efficient termination of EAs; 2014; Proceedings- 15th International Symposium on Symbolic and Numeric Algorithms for Scientific Computing, SYNASC 2013;6821196; 561; 566; 10.1109/SYNASC.2013.79
49. Chiu, Y.-C.; Application of differential evolutionary optimization methodology for parameter structure identifica-tion in groundwater modeling; 2014; Hydrogeology Journal; 22; 8; 1731; 1748; 10.1007/s10040-014-1172-7
50. Yang, K., Mu, L., Yang, D., Zou, F., Wang, L., Jiang, Q.; Multiobjective memetic estimation of distributionalgorithm based on an incremental tournament local searcher; 2014; Scientific World Journal; 2014; 836272;10.1155/2014/836272
51. Peng, H., Wu, Z.-J., Zhou, X.-Y., Deng, C.-S.; Dynamic differential evolution algorithm based on elite local learn-ing; 2014; Tien Tzu Hsueh Pao/Acta Electronica Sinica; 42; 8; 1522; 1530; 10.3969/j.issn.0372-2112.2014.08.010
52. Kushida, J.-I., Hara, A., Takahama, T., Kido, A.; Island-based differential evolution with varying subpopulationsize; 2013; 2013 IEEE 6th International Workshop on Computational Intelligence and Applications, IWCIA 2013- Proceedings; 6624798; 119; 124; 10.1109/IWCIA.2013.6624798
53. Juszczuk, P., Boryczka, U.; The differential evolution with the entropy based population size adjustment for thenash equilibria problem; 2013; Lecture Notes in Computer Science (including subseries Lecture Notes in ArtificialIntelligence and Lecture Notes in Bioinformatics); 8083 LNAI; 691; 700; 10.1007/978-3-642-40495-5 69
54. Zhou, Y., Li, X., Gao, L.; A novel two-layer hierarchical differential evolution algorithm for global optimization;2013; Proceedings - 2013 IEEE International Conference on Systems, Man, and Cybernetics, SMC 2013; 6722250;2916; 2921; 10.1109/SMC.2013.497
55. Sarkar, S., Patra, G.R., Das, S., Chaudhuri, S.S.; Fuzzy clustering of image pixels with a fitness-based adaptivedifferential evolution; 2013; Lecture Notes in Computer Science (including subseries Lecture Notes in ArtificialIntelligence and Lecture Notes in Bioinformatics); 8297 LNCS; PART 1; 179; 188; 10.1007/978-3-319-03753-0 17
56. Escalona-Vargas, D.I., Gutirrez, D., Lopez-Arevalo, I.; Performance of different metaheuristics in EEG source local-ization compared to the Cramr-Rao bound; 2013; Neurocomputing; 120; 597; 609; 10.1016/j.neucom.2013.04.010
57. Hu, Z., Xiong, S., Su, Q., Zhang, X.; Sufficient conditions for global convergence of differential evolution algorithm;2013; Journal of Applied Mathematics; 2013; 193196; 10.1155/2013/193196
58. Opara, K., Arabas, J.; Censoring mutation in differential evolution; 2013; Proceedings of the 2013 IEEE Symposiumon Differential Evolution, SDE 2013 - 2013 IEEE Symposium Series on Computational Intelligence, SSCI 2013;6601442; 54; 60; 10.1109/SDE.2013.6601442
59. Li, D., Chen, J., Xin, B.; A novel Differential Evolution algorithm with Gaussian mutation that balances explo-ration and exploitation; 2013; Proceedings of the 2013 IEEE Symposium on Differential Evolution, SDE 2013 - 2013IEEE Symposium Series on Computational Intelligence, SSCI 2013; 6601437; 18; 24; 10.1109/SDE.2013.6601437
60. Deng, W., Yang, X., Zou, L., Wang, M., Liu, Y., Li, Y.; An improved self-adaptive differential evolution algorithmand its application; 2013; Chemometrics and Intelligent Laboratory Systems; 128; 66; 76; 10.1016/j.chemolab.2013.07.004
61. Mallipeddi, R.; Harmony search based parameter ensemble adaptation for differential evolution; 2013; Journal ofApplied Mathematics; 2013; 750819; 10.1155/2013/750819
62. Olguin-Carbajal, M., Alba, E., Arellano-Verdejo, J.; Micro-differential evolution with local search for high di-mensional problems; 2013; 2013 IEEE Congress on Evolutionary Computation, CEC 2013; 6557552; 48; 54;10.1109/CEC.2013.6557552
63. Qin, A.K., Li, X.; Differential evolution on the CEC-2013 single-objective continuous optimization testbed; 2013;2013 IEEE Congress on Evolutionary Computation, CEC 2013; 6557689; 1099; 1106; 10.1109/CEC.2013.6557689
64. Qin, A.K., Li, X., Pan, H., Xia, S.; Investigation of self-adaptive differential evolution on the CEC-2013 real-parameter single-objective optimization testbed; 2013; 2013 IEEE Congress on Evolutionary Computation, CEC2013; 6557690; 1107; 1114; 10.1109/CEC.2013.6557690
65. Bolufe-Rohler, A., Estevez-Velarde, S., Piad-Morffis, A., Chen, S., Montgomery, J.; Differential evolution withthresheld convergence; 2013; 2013 IEEE Congress on Evolutionary Computation, CEC 2013; 6557551; 40; 47;10.1109/CEC.2013.6557551
66. Aalto, J., Lampinen, J.; A mutation adaptation mechanism for Differential Evolution algorithm; 2013; 2013 IEEECongress on Evolutionary Computation, CEC 2013; 6557553; 55; 62; 10.1109/CEC.2013.6557553
67. Coelho, L.D.S., Mariani, V.C., Ferreira Da Luz, M.V., Leite, J.V.; Novel gamma differential evolution approachfor multiobjective transformer design optimization; 2013; IEEE Transactions on Magnetics; 49; 5; 6514762; 2121;2124; 10.1109/TMAG.2013.2243134 11 of 43
68. Wang, Z., Zhang, W.; Spectrum sharing with limited channel feedback; 2013; IEEE Transactions on WirelessCommunications; 12; 5; 6493533; 2524; 2532; 10.1109/TWC.2013.032513.121510
69. Brest, J., Korovec, P., Pilc, J., Zamuda, A., Boskovic, B., Maucec, M.S.; Differential evolution and differentialant-stigmergy on dynamic optimisation problems; 2013; International Journal of Systems Science; 44; 4; 663; 679;10.1080/00207721.2011.617899
70. Poursalehi, N., Zolfaghari, A., Minuchehr, A.; Differential harmony search algorithm to optimize PWRs loadingpattern; 2013; Nuclear Engineering and Design; 257; 161; 174; 10.1016/j.nucengdes.2013.01.020
71. Mandal, K.K., Chakraborty, N.; Parameter study of differential evolution based optimal scheduling of hydrothermalsystems; 2013; Journal of Hydro-Environment Research; 7; 1; 72; 80; 10.1016/j.jher.2012.04.001
72. Weber, M., Neri, F., Tirronen, V.; A study on scale factor/crossover interaction in distributed differential evolution;2013; Artificial Intelligence Review; 39; 3; 195; 224; 10.1007/s10462-011-9267-1
73. Alam Anik, M.T., Md Noman, A.S., Ahmed, S.; Preserving rotation invariant properties in differential evolutionalgorithm; 2013; Proceedings of 2013 2nd International Conference on Advances in Electrical Engineering, ICAEE2013; 6750339; 235; 240; 10.1109/ICAEE.2013.6750339
74. Aalto, J., Lampinen, J.; A crossover adaptation mechanism for differential evolution algorithm; 2013; Mendel; 19;24;
75. Zhou, Y., Li, X., Gao, L.; A differential evolution algorithm with intersect mutation operator; 2013; Applied SoftComputing Journal; 13; 1; 390; 401; 10.1016/j.asoc.2012.08.014
76. Zhu, J., Yan, X.; Adaptive variable space differential evolution algorithm based on population distribution; 2013;Memetic Computing; 5; 1; 49; 64; 10.1007/s12293-012-0103-1
77. Falco, I.D.; Differential Evolution for automatic rule extraction from medical databases; 2013; Applied Soft Com-puting Journal; 13; 2; 1265; 1283; 10.1016/j.asoc.2012.10.022
78. Dragoi, E.-N., Curteanu, S., Galaction, A.-I., Cascaval, D.; Optimization methodology based on neural networksand self-adaptive differential evolution algorithm applied to an aerobic fermentation process; 2013; Applied SoftComputing Journal; 13; 1; 222; 238; 10.1016/j.asoc.2012.08.004
79. Sai Hanuman, A., Anand, S., Vinaya Babu, A., Govardhan, A.; Application of dynamic clustering using ADE totransportation planning; 2012; Advances in Intelligent and Soft Computing; 132 AISC; 669; 678; 10.1007/978-3-642-27443-5-77
80. Maciel, L., Gomide, F., Ballini, R.; Modeling the term structure of government bond yields with a differentialevolution algorithm; 2012; 2012 IEEE Conference on Computational Intelligence for Financial Engineering andEconomics, CIFEr 2012 - Proceedings; 6327794; 212; 219; 10.1109/CIFEr.2012.6327794
81. Ahmadi-Nedushan, B.; Prediction of elastic modulus of normal and high strength concrete using ANFIS and opti-mal nonlinear regression models; 2012; Construction and Building Materials; 36; 665; 673; 10.1016/j.conbuildmat.2012.06.002
82. Sorsa, A., Koskenniemi, A., Leivisk, K.; Differential evolution in parameter identification fuel cell as an example;2012; ICINCO 2012 - Proceedings of the 9th International Conference on Informatics in Control, Automation andRobotics; 1; 40; 49;
83. Montgomery, J., Chen, S.; A simple strategy for maintaining diversity and reducing crowding in differential evolu-tion; 2012; 2012 IEEE Congress on Evolutionary Computation, CEC 2012; 6252891; 10.1109/CEC.2012.6252891
84. Ahmadi-Nedushan, B.; An optimized instance based learning algorithm for estimation of compressive strength ofconcrete; 2012; Engineering Applications of Artificial Intelligence; 25; 5; 1073; 1081; 10.1016/j.engappai.2012.01.012
85. Bi, X., Liu, G., Xiao, J.; Dynamic adaptive differential evolution based on novel mutation strategy; 2012; JisuanjiYanjiu yu Fazhan/Computer Research and Development; 49; 6; 1288; 1297;
86. Jia, L., Zhang, C.; An improved self-adaptive control parameter of differential evolution for global optimiza-tion; 2012; International Journal of Digital Content Technology and its Applications; 6; 8; 343; 350; 10.4156/jd-cta.vol6.issue8.40
87. Zhabitskaya, E.; Constraints on control parameters of asynchronous differential evolution; 2012; Lecture Notes inComputer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics);7125 LNCS; 322; 327; 10.1007/978-3-642-28212-6 40
88. Kushida, J., Oba, K., Kamei, K.; An analysis of behavior of differential evolution based on characteristics inheri-tance; 2012; ICIC Express Letters; 6; 3; 581; 588;
89. Wang, S., Ding, L., Shu, W., Xie, C., Yang, H.; Differential evolution without scaling factor; 2012; InternationalJournal of Advancements in Computing Technology; 4; 4; 41; 48; 10.4156/ijact.vol4.issue4.6
90. Peng, L., Wang, Y., Dai, G., Cao, Z.; A novel differential evolution with uniform design for continuous globaloptimization; 2012; Journal of Computers; 7; 1; 3; 10; 10.4304/jcp.7.1.3-10
91. Ghosh, S., Das, S., Vasilakos, A.V., Suresh, K.; On convergence of differential evolution over a class of continuousfunctions with unique global optimum; 2012; IEEE Transactions on Systems, Man, and Cybernetics, Part B:Cybernetics; 42; 1; 5961644; 107; 124; 10.1109/TSMCB.2011.2160625
92. Spadoni, M., Stefanini, L.; A Differential Evolution algorithm to deal with box, linear and quadratic-convexconstraints for boundary optimization; 2012; Journal of Global Optimization; 52; 1; 171; 192; 10.1007/s10898-011-9695-0
12 of 43
93. Yang, Z., Li, X., Bowers, C.P., Schnier, T., Tang, K., Yao, X.; An efficient evolutionary approach to parameteridentification in a building thermal model; 2012; IEEE Transactions on Systems, Man and Cybernetics Part C:Applications and Reviews; 42; 6; 6105579; 957; 969; 10.1109/TSMCC.2011.2174983
94. Pankratius, V., Blaese, S.; Application-level automatic performance tuning on the single-chip cloud computer;2011; 3rd Many-Core Applications Research Community Symposium, MARC 2011; 1; 6;
95. Tripathi, S.S., Panda, S.; Tuning of power system stabilizer employing differential evolution optimization algorithm;2011; Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and LectureNotes in Bioinformatics); 7076 LNCS; PART 1; 59; 67; 10.1007/978-3-642-27172-4 8
96. Jeyakumar, G., Shanmugavelayutham, C.; Empirical measurements on the convergence nature of differential evo-lution variants; 2011; Communications in Computer and Information Science; 131 CCIS; PART 1; 472; 480;10.1007/978-3-642-17857-3 46
97. Wan, S., Xiong, S., Kou, J.; An improved trigonometric differential evolution; 2011; International Journal ofAdvancements in Computing Technology; 3; 11; 156; 162; 10.4156/ijact.vol3.issue11.20
98. Sharma, T.K., Pant, M.; Self adaptive mutation step size in differential evolution algorithm; 2011; Proceedingsof the 2011 World Congress on Information and Communication Technologies, WICT 2011; 6141238; 171; 175;10.1109/WICT.2011.6141238
99. Pedersen, M.E.H., Chipperfield, A.J.; Tuning differential evolution for artificial neural networks; 2011; New De-velopments in Artificial Neural Networks Research; 277; 294;
100. Alguliev, R.M., Aliguliyev, R.M., Mehdiyev, C.A.; Sentence selection for generic document summarization us-ing an adaptive differential evolution algorithm; 2011; Swarm and Evolutionary Computation; 1; 4; 213; 222;10.1016/j.swevo.2011.06.006
101. Yang, Z., Tang, K., Yao, X.; Scalability of generalized adaptive differential evolution for large-scale continuousoptimization; 2011; Soft Computing; 15; 11; 2141; 2155; 10.1007/s00500-010-0643-6
102. Brest, J., Maucec, M.S.; Self-adaptive differential evolution algorithm using population size reduction and threestrategies; 2011; Soft Computing; 15; 11; 2157; 2174; 10.1007/s00500-010-0644-5
103. Zhang, X., Jiang, X., Scott, P.J.; A minimax fitting algorithm for ultra-precision aspheric surfaces; 2011; Journalof Physics: Conference Series; 311; 1; 12031; 10.1088/1742-6596/311/1/012031
104. Zhang, X., Liu, S.; Almost-parameter-free differential evolution; 2011; Proceedings - 2011 7th International Con-ference on Natural Computation, ICNC 2011; 3; 6022358; 1461; 1465; 10.1109/ICNC.2011.6022358
105. Dragoi, E.-N., Curteanu, S., Leon, F., Galaction, A.-I., Cascaval, D.; Modeling of oxygen mass transfer in thepresence of oxygen-vectors using neural networks developed by differential evolution algorithm; 2011; EngineeringApplications of Artificial Intelligence; 24; 7; 1214; 1226; 10.1016/j.engappai.2011.06.004
106. Adi, V.S.K., Chang, C.-T.; Two-tier search strategy to identify nominal operating conditions for maximum flexi-bility; 2011; Industrial and Engineering Chemistry Research; 50; 18; 10707; 10716; 10.1021/ie201050w
107. Gang, H., Shaolei, L., Jinhang, L., Bo, F.; An improved differential evolution algorithm for mixed-model as-sembly sequencing; 2011; Communications in Computer and Information Science; 227 CCIS; PART 4; 588; 597;10.1007/978-3-642-23226-8 76
108. Moreno, L., Blanco, D., Muoz, M.L., Garrido, S.; L1L2-norm comparison in global localization of mobile robots;2011; Robotics and Autonomous Systems; 59; 9; 597; 610; 10.1016/j.robot.2011.04.006
109. Shi, E.C., Leung, F.H.F., Lai, J.C.Y.; An adaptive differential evolution with unsymmetrical mutation; 2011; 2011IEEE Congress of Evolutionary Computation, CEC 2011; 5949844; 1879; 1886; 10.1109/CEC.2011.5949844
110. Noman, N., Bollegala, D., Iba, H.; An adaptive differential evolution algorithm; 2011; 2011 IEEE Congress ofEvolutionary Computation, CEC 2011; 5949891; 2229; 2236; 10.1109/CEC.2011.5949891
111. Montgomery, J., Randall, M., Lewis, A.; Differential evolution for RFID antenna design: A comparison with antcolony optimisation; 2011; Genetic and Evolutionary Computation Conference, GECCO’11; 673; 680; 10.1145/2001576.2001669
112. Polakova, R., Tvrdik, J.; Various mutation strategies in enhanced competitive differential evolution for constrainedoptimization; 2011; IEEE SSCI 2011 - Symposium Series on Computational Intelligence - SDE 2011: 2011 IEEESymposium on Differential Evolution; 5952070; 17; 24; 10.1109/SDE.2011.5952070
113. Weber, M., Neri, F., Tirronen, V.; A study on scale factor in distributed differential evolution; 2011; InformationSciences; 181; 12; 2488; 2511; 10.1016/j.ins.2011.02.008
114. Wan, S., Xiong, S., Kou, J., Liu, Y.; Differential evolution with improved mutation strategy; 2011; Lecture Notes inComputer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics);6728 LNCS; PART 1; 431; 438; 10.1007/978-3-642-21515-5 51
115. Panda, S.; Robust coordinated design of multiple and multi-type damping controller using differential evolution al-gorithm; 2011; International Journal of Electrical Power and Energy Systems; 33; 4; 1018; 1030; 10.1016/j.ijepes.2011.01.019
116. Vasile, M., Minisci, E., Locatelli, M.; An inflationary differential evolution algorithm for space trajectory optimiza-tion; 2011; IEEE Transactions on Evolutionary Computation; 15; 2; 5688231; 267; 281; 10.1109/TEVC.2010.2087026
117. Mallipeddi, R., Suganthan, P.N., Pan, Q.K., Tasgetiren, M.F.; Differential evolution algorithm with ensemble of pa-rameters and mutation strategies; 2011; Applied Soft Computing Journal; 11; 2; 1679; 1696; 10.1016/j.asoc.2010.04.024
13 of 43
118. Yamaguchi, S.; An automatic control parameter tuning method for differential evolution; 2011; Electrical Engi-neering in Japan (English translation of Denki Gakkai Ronbunshi); 174; 3; 25; 33; 10.1002/eej.21047
119. Das, S., Suganthan, P.N.; Differential evolution: A survey of the state-of-the-art; 2011; IEEE Transactions onEvolutionary Computation; 15; 1; 5601760; 4; 31; 10.1109/TEVC.2010.2059031
120. Liu, Y., Li, S.; A new differential evolutionary algorithm with neighborhood search; 2011; Information TechnologyJournal; 10; 3; 573; 578; 10.3923/itj.2011.573.578
121. Nakawiro, W., Erlich, I.; A new adaptive differential evolution algorithm for voltage stability constrained optimalpower flow; 2011; 17th Power Systems Computation Conference, PSCC 2011; ;
122. Rocca, P., Oliveri, G., Massa, A.; Differential evolution as applied to electromagnetics; 2011; IEEE Antennas andPropagation Magazine; 53; 1; 38; 49;
123. Iba, H., Noman, N.; New frontier in evolutionary algorithms: Theory and applications; 2011; New Frontier inEvolutionary Algorithms: Theory and Applications; 1; 304; 10.1142/P769
124. Urfalioglu, O., Arikan, O.; Self-adaptive randomized and rank-based differential evolution for multimodal problems;2011; Journal of Global Optimization; 51; 4; 607; 640; 10.1007/s10898-011-9646-9
125. Montgomery, J.; Crossover and the different faces of differential evolution searches; 2010; 2010 IEEE WorldCongress on Computational Intelligence, WCCI 2010 - 2010 IEEE Congress on Evolutionary Computation, CEC2010; 5586184; 10.1109/CEC.2010.5586184
126. Jeyakumar, G., Shanmugavelayutham, C.; Analyzing the explorative power of differential evolution variants ondifferent classes of problems; 2010; Lecture Notes in Computer Science (including subseries Lecture Notes inArtificial Intelligence and Lecture Notes in Bioinformatics); 6466 LNCS; 95; 102; 10.1007/978-3-642-17563-3 12
127. Liu, Y., Li, S.; Differential evolution with neighborhood search; 2010; 2010 2nd International Conference onComputational Intelligence and Natural Computing, CINC 2010; 1; 5643890; 76; 79; 10.1109/CINC.2010.5643890
128. Panda, S., Swain, S.C., Baliarsingh, A.K.; Differential evolution algorithm for simultaneous tuning of excita-tion and FACTS-based controller; 2010; International Journal of Bio-Inspired Computation; 2; 6; 404; 412;10.1504/IJBIC.2010.037020
129. Montgomery, J., Chen, S.; An analysis of the operation of differential evolution at high and low crossover rates;2010; 2010 IEEE World Congress on Computational Intelligence, WCCI 2010 - 2010 IEEE Congress on Evolution-ary Computation, CEC 2010; 5586128; 10.1109/CEC.2010.5586128
130. Sanko, J., Penjam, J.; Differential evolutionary approach guided by the Functional Constraint Network to solveprogram synthesis problem; 2010; 2010 IEEE World Congress on Computational Intelligence, WCCI 2010 - 2010IEEE Congress on Evolutionary Computation, CEC 2010; 5586092; 10.1109/CEC.2010.5586092
131. Tvrdik, J., Polakova, R.; Competitive differential evolution for constrained problems; 2010; 2010 IEEE WorldCongress on Computational Intelligence, WCCI 2010 - 2010 IEEE Congress on Evolutionary Computation, CEC2010; 5586299; 10.1109/CEC.2010.5586299
132. Peng, L., Dai, G., Wang, Y.; UDE: Differential evolution with uniform design; 2010; Proceedings - 3rd Inter-national Symposium on Parallel Architectures, Algorithms and Programming, PAAP 2010; 5715089; 239; 246;10.1109/PAAP.2010.61
133. Peng, L., Wang, Y.; Differential evolution using uniform-quasi-opposition for initializing the population; 2010;Information Technology Journal; 9; 8; 1629; 1634;
134. Tvrdik, J., Polakova, R.; Enhanced competitive differential evolution for constrained optimization; 2010; Proceed-ings of the International Multiconference on Computer Science and Information Technology, IMCSIT 2010; 5;5680058; 909; 915;
135. Roy, G.G., Chakraborty, P., Das, S.; Designing fractional-order PI?D? controller using differential harmony searchalgorithm; 2010; International Journal of Bio-Inspired Computation; 2; 5; 303; 309; 10.1504/IJBIC.2010.036156
136. Lobato, F.S., Steffen Jr., V., Neto, A.J.S.; Self-adaptive differential evolution based on the concept of populationdiversity applied to simultaneous estimation of anisotropic scattering phase function, albedo and optical thickness;2010; CMES - Computer Modeling in Engineering and Sciences; 69; 1; 1; 17;
137. Neri, F., Tirronen, V.; Recent advances in differential evolution: A survey and experimental analysis; 2010;Artificial Intelligence Review; 33; 01.feb; 61; 106; 10.1007/s10462-009-9137-2
138. Rocca, P., Benedetti, M., Donelli, M., Franceschini, D., Massa, A.; Evolutionary optimization as applied to inversescattering problems; 2009; Inverse Problems; 25; 12; 123003; 10.1088/0266-5611/25/12/123003
139. Montgomery, J.; The effects of different kinds of move in differential evolution searches; 2009; Lecture Notes inComputer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics);5865 LNAI; 272; 281; 10.1007/978-3-642-10427-5 27
140. Jia, L., Gong, W., Wu, H.; An improved self-adaptive control parameter of differential evolution for global optimiza-tion; 2009; Communications in Computer and Information Science; 51; 215; 224; 10.1007/978-3-642-04962-0 25
141. Cervenka, M., Boudn, H.; Visual aid for better control parameter configuration of differential evolution; 2009;PACIIA 2009 - 2009 2nd Asia-Pacific Conference on Computational Intelligence and Industrial Applications; 1;5406393; 439; 442; 10.1109/PACIIA.2009.5406393
14 of 43
142. Chakraborty, P., Roy, G.G., Das, S., Jain, D., Abraham, A.; An improved harmony search algorithm with differ-ential mutation operator; 2009; Fundamenta Informaticae; 95; 4; 401; 426; 10.3233/FI-2009-157
143. Montgomery, J.; Differential evolution: Difference vectors and movement in solution space; 2009; 2009 IEEECongress on Evolutionary Computation, CEC 2009; 4983298; 2833; 2840; 10.1109/CEC.2009.4983298
144. Brest, J., Zamuda, A., Boskovic, B., Maccec, M.S., Zumer, V.; Dynamic optimization using self-adaptive dif-ferential evolution; 2009; 2009 IEEE Congress on Evolutionary Computation, CEC 2009; 4982976; 415; 422;10.1109/CEC.2009.4982976
145. Kukkonen, S., Lampinen, J.; Performance assessment of generalized differential evolution 3 with a Given set ofconstrained multi-objective test problems; 2009; 2009 IEEE Congress on Evolutionary Computation, CEC 2009;4983178; 1943; 1950; 10.1109/CEC.2009.4983178
146. Jeyakumar, G., Shanmugavelayutham, C.; An empirical comparison of differential evolution variants for highdimensional function optimization; 2009; 2009 International Conference on Intelligent Agent and Multi-AgentSystems, IAMA 2009; 5228018; 10.1109/IAMA.2009.5228018
147. Panda, S.; Differential evolutionary algorithm for TCSC-based controller design; 2009; Simulation ModellingPractice and Theory; 17; 10; 1618; 1634; 10.1016/j.simpat.2009.07.002
148. Qing, A.; Differential Evolution: Fundamentals and Applications in Electrical Engineering; 2009; DifferentialEvolution: Fundamentals and Applications in Electrical Engineering; 1; 418; 10.1002/9780470823941
149. Reynoso-Meza, G., Sanchis, J., Blasco, X.; An adaptive parameter control for the differential evolution algorithm;2009; Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and LectureNotes in Bioinformatics); 5517 LNCS; PART 1; 375; 382; 10.1007/978-3-642-02478-8 47
150. Neri, F., Tirronen, V.; Memetic differential evolution frameworks in filter design for defect detection in paperproduction; 2009; Studies in Computational Intelligence; 213; 113; 131; 10.1007/978-3-642-01636-3 7
151. Zhang, X.-W., Liu, S.-Y.; Differential evolution without the scale factor F; 2009; Tien Tzu Hsueh Pao/ActaElectronica Sinica; 37; 6; 1318; 1323;
152. Tvrdik, J.; Adaptation in differential evolution: A numerical comparison; 2009; Applied Soft Computing Journal;9; 3; 1149; 1155; 10.1016/j.asoc.2009.02.010
153. Das, S., Abraham, A., Konar, A.; Differential evolution algorithm: Foundations and perspectives; 2009; Studiesin Computational Intelligence; 178; 63; 110; 10.1007/978-3-540-93964-1 2
154. Panda, S., Sahu, R.K.; Modelling, simulation and optimal design of a TCSC-based controller in a power system;2009; International Journal of Engineering Systems Modelling and Simulation; 1; 4; 222; 230; 10.1504/IJESMS.2009.031355
155. Caponio, A., Neri, F., Tirronen, V.; Super-fit control adaptation in memetic differential evolution frameworks;2009; Soft Computing; 13; 08.sep; 811; 831; 10.1007/s00500-008-0357-1
156. Yamaguchi, S.; An automatic control parameters tuning method for differential evolution; 2008; IEEJ Transactionson Electronics, Information and Systems; 128; 11; 10.1541/ieejeiss.128.1696
157. Tvrdik, J.; Adaptive differential evolution and exponential crossover; 2008; Proceedings of the International Mul-ticonference on Computer Science and Information Technology, IMCSIT 2008; 3; 4747353; 927; 931; 10.1109/IM-CSIT.2008.4747353
158. Kukkonen, S., Lampinen, J.; Generalized differential evolution for constrained multi-objective optimization; 2008;Multi-Objective Optimization in Computational Intelligence: Theory and Practice; 43; 75; 10.4018/978-1-59904-498-9.ch003
159. Yang, Z., Tang, K., Yao, X.; Self-adaptive differential evolution with neighborhood search; 2008; 2008 IEEECongress on Evolutionary Computation, CEC 2008; 4630935; 1110; 1116; 10.1109/CEC.2008.4630935
160. Caponio, A., Neri, F., Cascella, G.L., Salvatore, N.; Application of Memetic Differential Evolution frameworks toPMSM drive design; 2008; 2008 IEEE Congress on Evolutionary Computation, CEC 2008; 4631079; 2113; 2120;10.1109/CEC.2008.4631079
161. Neri, F., Tirronen, V.; On Memetic Differential Evolution frameworks: A study of advantages and limitationsin hybridization; 2008; 2008 IEEE Congress on Evolutionary Computation, CEC 2008; 4631082; 2135; 2142;10.1109/CEC.2008.4631082
162. Mandal, K.K., Chakraborty, N.; Effect of control parameters on differential evolution based combined economicemission dispatch with valve-point loading and transmission loss; 2008; International Journal of Emerging ElectricPower Systems; 9; 4; 5;
163. Storn, R.; Differential evolution research - Trends and open questions; 2008; Studies in Computational Intelligence;143; 1; 31; 10.1007/978-3-540-68830-3 1
164. Nearchou, A.C.; A differential evolution approach for the common due date early/tardy job scheduling problem;2008; Computers and Operations Research; 35; 4; 1329; 1343; 10.1016/j.cor.2006.08.013
165. Noman, N., Iba, H.; Accelerating differential evolution using an adaptive local search; 2008; IEEE Transactionson Evolutionary Computation; 12; 1; 107; 125; 10.1109/TEVC.2007.895272
166. Tvrdik, J.; Exponential crossover in competitive differential evolution; 2008; MENDEL 2008 - 14th InternationalConference on Soft Computing: Evolutionary Computation, Genetic Programming, Fuzzy Logic, Rough Sets,Neural Networks, Fractals, Bayesian Methods; ; 44; 49;
15 of 43
167. Qing, A.; A parametric study on differential evolution based on benchmark electromagnetic inverse scatter-ing problem; 2007; 2007 IEEE Congress on Evolutionary Computation, CEC 2007; ; 4424706; 1904; 1909;10.1109/CEC.2007.4424706
168. Yang, Z., Tang, K., Yao, X.; Differential evolution for high-dimensional function optimization; 2007; 2007 IEEECongress on Evolutionary Computation, CEC 2007; ; 4424929; 3523; 3530; 10.1109/CEC.2007.4424929
169. Tvrdik, J., Kriv?, I.; Competitive self-adaptation in evolutionary algorithms; 2007; New Dimensions in FuzzyLogic and Related Technologies - Proceedings of the 5th EUSFLAT 2005 Conference; 2; ; 251; 258;
170. Omran, M.G.H., Engelbrecht, A.P., Salman, A.; Self-adaptive barebones differential evolution; 2007; 2007 IEEECongress on Evolutionary Computation, CEC 2007; ; 4424834; 2858; 2865; 10.1109/CEC.2007.4424834
171. Nearchou, A.C.; Balancing large assembly lines by a new heuristic based on differential evolution method; 2007;International Journal of Advanced Manufacturing Technology; 34; 09.oct; 1016; 1029; 10.1007/s00170-006-0655-7
172. Kaelo, P., Ali, M.M.; Differential evolution algorithms using hybrid mutation; 2007; Computational Optimizationand Applications; 37; 2; 231; 246; 10.1007/s10589-007-9014-3
173. Tvrdik, J.; Adaptation in differential evolution: A comparison on composition test functions; 2007; Mendel;2007-January; January; 1; 6;
174. Nearchou, A.C.; An Efficient Meta-Heuristic for the Single Machine Common Due Date Scheduling Problem; 2006;Intelligent Production Machines and Systems - 2nd I*PROMS Virtual International Conference 3-14 July 2006; ;431; 435; 10.1016/B978-008045157-2/50077-8
175. Kukkonen, S., Lampinen, J.; An empirical study of control parameters for the third version of Generalized Differ-ential Evolution (GDE3); 2006; 2006 IEEE Congress on Evolutionary Computation, CEC 2006; ; 1688553; 2002;2009;
176. Price, K.V., Ronkkonen, J.I.; Comparing the uni-modal scaling performance of global and local selection in amutation-only differential evolution algorithm; 2006; 2006 IEEE Congress on Evolutionary Computation, CEC2006; ; 1688557; 2034; 2041;
177. Nearchou, A.C., Omirou, S.L.; Differential evolution for sequencing and scheduling optimization; 2006; Journal ofHeuristics; 12; 6; 395; 411; 10.1007/10732-006-3750-x
178. Tvrdik, J.; Differential evolution: Competitive setting of control parameters; 2006; Proceedings of the InternationalMulticonference on Computer Science and Information Technology, IMCSIT; 1; ; 207; 213;
179. Ali, M.M., Fatti, L.P.; A differential free point generation scheme in the differential evolution algorithm; 2006;Journal of Global Optimization; 35; 4; 551; 572; 10.1007/s10898-005-3767-y
180. Nearchou, A.C.; Meta-heuristics from nature for the loop layout design problem; 2006; International Journal ofProduction Economics; 101; 2; 312; 328; 10.1016/j.ijpe.2005.02.001
181. Kaelo, P., Ali, M.M.; A numerical study of some modified differential evolution algorithms; 2006; European Journalof Operational Research; 169; 3; 1176; 1184; 10.1016/j.ejor.2004.08.047
182. Tvrdik, J.; Competitive differential evolution; 2006; Mendel; 2006-January; January; 7; 12;
183. Ronkkonen, J., Kukkonen, S., Price, K.V.; Real-parameter optimization with differential evolution; 2005; 2005IEEE Congress on Evolutionary Computation, IEEE CEC 2005. Proceedings; 1; ; 506; 513;
184. Liu, J., Lampinen, J.; A fuzzy adaptive differential evolution algorithm; 2005; Soft Computing; 9; 6; 448; 462;10.1007/s00500-004-0363-x
185. Schmidt, H., Thierauf, G.; A combined heuristic optimization technique; 2005; Advances in Engineering Software;36; 1; 11; 19; 10.1016/j.advengsoft.2003.12.001
186. Fan, H.-Y., Lampinen, J.; A trigonometric mutation operation to differential evolution; 2003; Journal of GlobalOptimization; 27; 1; 105; 129; 10.1023/A:1024653025686
16 of 43
Citari pentru D. Zaharie - D. Zaharie - Parameter Adaptation in Differential Evolution by Controlling thePopulation Diversity, Analele Univ. Timisoara (Proc. of SYNASC 2002), vol. XXXX, issue 2, 2002
1. Sallam, K.M., Elsayed, S.M., Sarker, R.A., Essam, D.L.; Two-phase differential evolution framework for solvingoptimization problems; 2017; 2016 IEEE Symposium Series on Computational Intelligence, SSCI 2016; 7850258; ;10.1109/SSCI.2016.7850258
2. Hu, Z., Su, Q., Yang, X., Xiong, Z.; Not guaranteeing convergence of differential evolution on a class of multimodalfunctions; 2016; Applied Soft Computing Journal; 41; 479; 487; 4; 10.1016/j.asoc.2016.01.001
3. Fan, Q., Zhang, Y.; Self-adaptive differential evolution algorithm with crossover strategies adaptation and itsapplication in parameter estimation; 2016; Chemometrics and Intelligent Laboratory Systems; 151; 164; 171; 3;10.1016/j.chemolab.2015.12.020
4. Raghu, R., Jeyakumar, G.; Mathematical modelling of migration process to measure population diversity of Dis-tributed Evolutionary Algorithms; 2016; Indian Journal of Science and Technology; 9; 31; 82410; ; 10.17485/ijst/2016/v9i31/82410
5. Fan, Q., Yan, X.; Self-adaptive differential evolution algorithm with zoning evolution of control parameters andadaptive mutation strategies; 2016; IEEE Transactions on Cybernetics; 46; 1; 7057674; 219; 232; 3; 10.1109/TCYB.2015.2399478
6. Kozlov, K., Chebotarev, D., Hassan, M., Triska, M., Triska, P., Flegontov, P., Tatarinova, T.V.; DifferentialEvolution approach to detect recent admixture; 2015; BMC Genomics; 16; 8; S9; 3; 10.1186/1471-2164-16-S8-S9
7. Fan, Q., Yan, X.; Self-adaptive differential evolution algorithm with discrete mutation control parameters; 2015;Expert Systems with Applications; 42; 3; 1551; 1572; 17; 10.1016/j.eswa.2014.09.046
8. Thangavelu, S., Jeyakumar, G., Balakrishnan, R.M., Velayutham, C.S.; Theoretical analysis of expected populationvariance evolution for a differential evolution variant; 2015; Smart Innovation, Systems and Technologies; 32; 403;416; 10.1007/978-81-322-2208-8 37
9. Thangavelu, S., Jeyakumar, G., Shunmuga Velyautham, C.; Population variance based empirical analysis ofthe behavior of differential evolution variants; 2015; Applied Mathematical Sciences; 9; 65-68; 3249; 3263; 1;10.12988/ams.2015.54312
10. Raghu, R., Jeyakumar, G.; Empirical analysis on the population diversity of the sub-population in distributeddifferential evolution algorithm; 2015; International Journal of Control Theory and Applications; 8; 5; 1809; 1816;
11. Draa, A., Bouzoubia, S., Boukhalfa, I.; A sinusoidal differential evolution algorithm for numerical optimisation;2015; Applied Soft Computing Journal; 27; 99; 126; 14; 10.1016/j.asoc.2014.11.003
12. Suganthan, P.N., Das, S., Mukherjee, S., Chatterjee, S.; Adaptation methods in differential evolution: A review;2014; Mendel; 2014-January; January; 131; 140;
13. Kozlov, K., Ivanisenko, N., Ivanisenko, V., Kolchanov, N., Samsonova, M., Samsonov, A.M.; Enhanced differentialevolution entirely parallel method for biomedical applications; 2013; Lecture Notes in Computer Science ; 7979LNCS; 409; 416; 10.1007/978-3-642-39958-9-37
14. Lian, H., Qin, Y., Liu, J.; An Adaptive Differential Evolution Algorithm Based on New Diversity; 2013; Interna-tional Journal of Computational Intelligence Systems; 6; 6; 1094; 1107; 1; 10.1080/18756891.2013.816064
15. Iacca, G.; Distributed optimization in wireless sensor networks: An island-model framework; 2013; Soft Computing;17; 12; 2257; 2277; 3; 10.1007/s00500-013-1091-x
16. Hu, Z., Xiong, S., Su, Q., Zhang, X.; Sufficient conditions for global convergence of differential evolution algorithm;2013; Journal of Applied Mathematics; 2013; 193196; 7; 10.1155/2013/193196
17. Weber, M., Neri, F., Tirronen, V.; A study on scale factor/crossover interaction in distributed differential evolution;2013; Artificial Intelligence Review; 39; 3; 195; 224; 11; 10.1007/s10462-011-9267-1
18. De Falco, I., Della Cioppa, A., Maisto, D., Scafuri, U., Tarantino, E.; A model based on biological invasions forisland evolutionary algorithms; 2012; Lecture Notes in Computer Science ; 7401 LNCS; 157; 168; 1; 10.1007/978-3-642-35533-2 14
19. De Falco, I., Della Cioppa, A., Maisto, D., Scafuri, U., Tarantino, E.; Biological invasion-inspired migration indistributed evolutionary algorithms; 2012; Information Sciences; 207; 50; 65; 21; 10.1016/j.ins.2012.04.027
20. Rama Mohan Rao, A., Lakshmi, K., Venkatachalam, D.; Damage diagnostic technique for structural health mon-itoring using POD and self adaptive differential evolution algorithm; 2012; Computers and Structures; 106-107;228; 244; 10; 10.1016/j.compstruc.2012.05.009
21. Ghosh, S., Das, S., Vasilakos, A.V., Suresh, K.; On convergence of differential evolution over a class of continuousfunctions with unique global optimum; 2012; IEEE Transactions on Systems, Man, and Cybernetics, Part B:Cybernetics; 42; 1; 5961644; 107; 124; 42; 10.1109/TSMCB.2011.2160625
22. Du Plessis, M.C., Engelbrecht, A.P.; Self-adaptive competitive differential evolution for dynamic environments;2011; IEEE SSCI 2011 - Symposium Series on Computational Intelligence - SDE 2011: 2011 IEEE Symposium onDifferential Evolution; 5952054; 41; 48; 4; 10.1109/SDE.2011.5952054
23. Kozlov, K., Samsonov, A.; DEEP-differential evolution entirely parallel method for gene regulatory networks; 2011;Journal of Supercomputing; 57; 2; 172; 178; 11; 10.1007/s11227-010-0390-617 of 43
24. Weber, M., Neri, F., Tirronen, V.; A study on scale factor in distributed differential evolution; 2011; InformationSciences; 181; 12; 2488; 2511; 63; 10.1016/j.ins.2011.02.008
25. Das, S., Suganthan, P.N.; Differential evolution: A survey of the state-of-the-art; 2011; IEEE Transactions onEvolutionary Computation; 15; 1; 5601760; 4; 31; 1552; 10.1109/TEVC.2010.2059031
26. Weber, M., Tirronen, V., Neri, F.; Scale factor inheritance mechanism in distributed differential evolution; 2010;Soft Computing; 14; 11; 1187; 1207; 74; 10.1007/s00500-009-0510-5
27. Weber, M., Neri, F., Tirronen, V.; Parallel random injection differential evolution; 2010; Lecture Notes in ComputerScience ; 6024 LNCS; PART 1; 471; 480; 5; 10.1007/978-3-642-12239-2-49
28. Weber, M., Neri, F., Tirronen, V.; Distributed differential evolution with explorative-exploitative populationfamilies; 2009; Genetic Programming and Evolvable Machines; 10; 4; 343; 371; 60; 10.1007/s10710-009-9089-y
29. Kozlov, K., Samsonov, A.; DEEP - Differential evolution entirely parallel method for gene regulatory networks;2009; Lecture Notes in Computer Science ; 5698 LNCS; 126; 132; 1; 10.1007/978-3-642-03275-2 13
30. Reynoso-Meza, G., Sanchis, J., Blasco, X.; An adaptive parameter control for the differential evolution algorithm;2009; Lecture Notes in Computer Science ; 5517 LNCS; PART 1; 375; 382; 3; 10.1007/978-3-642-02478-8 47
31. Zielinski, K., Wang, X., Laur, R.; Comparison of adaptive approaches for differential evolution; 2008; LectureNotes in Computer Science ; 5199 LNCS; 641; 650; 13; 10.1007/978-3-540-87700-4 64
32. Omran, M.G.H., Engelbrecht, A.P., Salman, A.; Self-adaptive barebones differential evolution; 2007; 2007 IEEECongress on Evolutionary Computation, CEC 2007; 4424834; 2858; 2865; 3; 10.1109/CEC.2007.4424834
33. Zielinski, K., Weitkemper, P., Laur, R., Kammeyer, K.-D.; Parameter study for differential evolution using a powerallocation problem including interference cancellation; 2006; 2006 IEEE Congress on Evolutionary Computation,CEC 2006; 1688533; 1857; 1864; 83;
34. Omran, M.G.H., Salman, A., Engelbrecht, A.P.; Self-adaptive differential evolution; 2005; Lecture Notes in Com-puter Science ; 3801 LNAI; 192; 199; 158; 10.1007/11596448 28
35. Liu, J., Lampinen, J.; A fuzzy adaptive differential evolution algorithm; 2005; Soft Computing; 9; 6; 448; 462; 470;10.1007/s00500-004-0363-x
36. Madavan, N.K.; On improving efficiency of differential evolution for aerodynamic shape optimization applications;2004; Collection of Technical Papers - 10th AIAA/ISSMO Multidisciplinary Analysis and Optimization Conference;6; 3590; 3609; 2;
37. Dragoi, E.-N., Dafinescu, V.; Parameter control and hybridization techniques in differential evolution: a survey;2016; Artificial Intelligence Review; 45; 4; 447; 470; 1; 10.1007/s10462-015-9452-8
18 of 43
Citari pentru D. Zaharie - Control of Population Diversity and Adaptation in Differential Evolution Algorithms,in R. Matousek, P. Osmera (eds.), Proc. of Mendel 2003, 9th International Conference on Soft Computing,Brno, Czech Republic, june 2003, pp. 41-46, 2003.
1. Santhosh, E.C., Sangwai, J.S.; A hybrid differential evolution algorithm approach towards assisted history matchingand uncertainty quantification for reservoir models; 2016; Journal of Petroleum Science and Engineering; 142; 21;35; 10.1016/j.petrol.2016.01.038
2. Dragoi, E.-N., Dafinescu, V.; Parameter control and hybridization techniques in differential evolution: a survey;2016; Artificial Intelligence Review; 45; 4; 447; 470; 10.1007/s10462-015-9452-8
3. Cavalini, A.A., Lobato, F.S., Koroishi, E.H., Steffen, V.; Model updating of a rotating machine using the self-adaptive differential evolution algorithm; 2016; Inverse Problems in Science and Engineering; 24; 3; 504; 523;10.1080/17415977.2015.1047364
4. Habibi Davijani, M., Banihabib, M.E., Nadjafzadeh Anvar, A., Hashemi, S.R.; Multi-Objective OptimizationModel for the Allocation of Water Resources in Arid Regions Based on the Maximization of Socioeconomic Effi-ciency; 2016; Water Resources Management; 30; 3; 927; 946; 10.1007/s11269-015-1200-y
5. Wu, G., Mallipeddi, R., Suganthan, P.N., Wang, R., Chen, H.; Differential evolution with multi-population basedensemble of mutation strategies; 2016; Information Sciences; 329; 329; 345; 10.1016/j.ins.2015.09.009
6. Habibi Davijani, M., Banihabib, M.E., Nadjafzadeh Anvar, A., Hashemi, S.R.; Optimization model for the allo-cation of water resources based on the maximization of employment in the agriculture and industry sectors; 2016;Journal of Hydrology; 533; 430; 438; 10.1016/j.jhydrol.2015.12.025
7. Park, S.-Y., Lee, J.-J.; Stochastic Opposition-Based Learning Using a Beta Distribution in Differential Evolution;2016; IEEE Transactions on Cybernetics; 46; 10; 7270303; 2184; 2194; 10.1109/TCYB.2015.2469722
8. Sharma, H., Sharma, V.P., Sharma, A., Meena, P.; An improved fitness based differential evolution algorithm (IFB-DEA); 2016; ACM International Conference Proceeding Series; 04-05-March-2016; a101; 10.1145/2905055.2905160
9. Mohamed, A.W.; An improved differential evolution algorithm with triangular mutation for global numericaloptimization; 2015; Computers and Industrial Engineering; 85; 359; 375; 10.1016/j.cie.2015.04.012
10. Mallipeddi, R., Lee, M.; An evolving surrogate model-based differential evolution algorithm; 2015; Applied SoftComputing Journal; 34; 770; 787; 10.1016/j.asoc.2015.06.010
11. Yang, M., Li, C., Cai, Z., Guan, J.; Differential evolution with auto-enhanced population diversity; 2015; IEEETransactions on Cybernetics; 45; 2; 6868218; 302; 315; 10.1109/TCYB.2014.2339495
12. Thangavelu, S., Jeyakumar, G., Balakrishnan, R.M., Velayutham, C.S.; Theoretical analysis of expected populationvariance evolution for a differential evolution variant; 2015; Smart Innovation, Systems and Technologies; 32; 403;416; 10.1007/978-81-322-2208-8 37
13. Tamura, K., Makise, K., Yasuda, K.; Concept of feedback-controlled differential evolution and its realization; 2015;IEEJ Transactions on Electrical and Electronic Engineering; 10; 4; 423; 437; 10.1002/tee.22102
14. Drozdik, M., Aguirre, H., Akimoto, Y., Tanaka, K.; Comparison of parameter control mechanisms in multi-objective differential evolution; 2015; Lecture Notes in Computer Science (including subseries Lecture Notes inArtificial Intelligence and Lecture Notes in Bioinformatics); 8994; 89; 103; 10.1007/978-3-319-19084-6 8
15. Thangavelu, S., Jeyakumar, G., Shunmuga Velyautham, C.; Population variance based empirical analysis of the be-havior of differential evolution variants; 2015; Applied Mathematical Sciences; 9; 65-68; 3249; 3263; 10.12988/ams.2015.54312
16. Miruna Joe Amali, S., Baskar, S.; Surrogate assisted-hybrid differential evolution algorithm using diversity control;2015; Expert Systems; 32; 4; 531; 545; 10.1111/exsy.12105
17. Gonuguntla, V., Mallipeddi, R., Veluvolu, K.C.; Differential evolution with population and strategy parameteradaptation; 2015; Mathematical Problems in Engineering; 2015; 287607; 10.1155/2015/287607
18. Gou, J., Guo, W.-P., Hou, F., Wang, C., Cai, Y.-Q.; Adaptive differential evolution with directional strategy andcloud model; 2015; Applied Intelligence; 42; 2; 369; 388; 10.1007/s10489-014-0592-3
19. Kuo, R.J., Zulvia, F.E.; The gradient evolution algorithm: A new metaheuristic; 2015; Information Sciences; 316;246; 265; 10.1016/j.ins.2015.04.031
20. Segura, C., Coello Coello, C.A., Hernndez-Daz, A.G.; Improving the vector generation strategy of DifferentialEvolution for large-scale optimization; 2015; Information Sciences; 323; 11623; 106; 129; 10.1016/j.ins.2015.06.029
21. Kadhar, K.M.A., Baskar, S., Amali, S.M.J.; Diversity Controlled Self Adaptive Differential Evolution based designof non-fragile multivariable PI controller; 2015; Engineering Applications of Artificial Intelligence; 46; 209; 222;10.1016/j.engappai.2015.09.015
22. Cai, Y., Wang, J.; Differential evolution with hybrid linkage crossover; 2015; Information Sciences; 320; 244; 287;10.1016/j.ins.2015.05.026
23. Sarker, R.A., Elsayed, S.M., Ray, T.; Differential evolution with dynamic parameters selection for optimizationproblems; 2014; IEEE Transactions on Evolutionary Computation; 18; 5; 6600821; 689; 707; 10.1109/TEVC.2013.2281528
24. Liu, S., Xiong, Y., Mao, D., Kong, X.; Game dynamic inspired differential evolution algorithm for numericaloptimization; 2014; Journal of Computational Information Systems; 10; 12; 5227; 5236; 10.12733/jcis10667
19 of 43
25. Dos Santos Coelho, L., Bora, T.C., Mariani, V.C.; Differential evolution based on truncated Lvy-type flights andpopulation diversity measure to solve economic load dispatch problems; 2014; International Journal of ElectricalPower and Energy Systems; 57; 178; 188; 10.1016/j.ijepes.2013.11.024
26. Sharma, H., Bansal, J.C., Arya, K.V.; Self balanced differential evolution; 2014; Journal of Computational Science;5; 2; 312; 323; 10.1016/j.jocs.2012.12.002
27. Xia, H.G., Wang, Q.Z.; Modified differential evolution algorithm for numerical optimization problems; 2014;Advanced Materials Research; 989-994; 2536; 2539; 10.4028/www.scientific.net/AMR.989-994.2536
28. Jiang, D.; Study on improved differential evolution algorithm for solving complex optimization problem; 2014;International Journal of Multimedia and Ubiquitous Engineering; 9; 12; 241; 248; 10.14257/ijmue.2014.9.12.22
29. Shi, E.C., Leung, F.H.F., Law, B.N.F.; Differential evolution with adaptive population size; 2014; InternationalConference on Digital Signal Processing, DSP; 2014-January; 6900794; 876; 881; 10.1109/ICDSP.2014.6900794
30. Abusnaina, A.A., Abdullah, R., Kattan, A.; Enhanced MWO training algorithm to improve classification accuracyof artificial neural networks; 2014; Advances in Intelligent Systems and Computing; 287; 183; 194; 10.1007/978-3-319-07692-8 18
31. Tanweer, M.R., Suresh, S., Sundararajan, N.; Human meta-cognition inspired collaborative search algorithm foroptimization; 2014; Processing of 2014 International Conference on Multisensor Fusion and Information Integrationfor Intelligent Systems, MFI 2014; 6997631; 10.1109/MFI.2014.6997631
32. Mallipeddi, R., Wu, G., Lee, M., Suganthan, P.N.; Gaussian adaptation based parameter adaptation for differentialevolution; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014; 6900601; 1760;1767; 10.1109/CEC.2014.6900601
33. Rahnamayan, S., Jesuthasan, J., Bourennani, F., Salehinejad, H., Naterer, G.F.; Computing opposition by involv-ing entire population; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014;6900329; 1800; 1807; 10.1109/CEC.2014.6900329
34. Elsayed, S.M., Ray, T., Sarker, R.A.; A surrogate-assisted differential evolution algorithm with dynamic param-eters selection for solving expensive optimization problems; 2014; Proceedings of the 2014 IEEE Congress onEvolutionary Computation, CEC 2014; 6900351; 1062; 1068; 10.1109/CEC.2014.6900351
35. Iacca, G., Neri, F., Caraffini, F., Suganthan, P.N.; A differential evolution framework with ensemble of parametersand strategies and pool of local search algorithms; 2014; Lecture Notes in Computer Science (including subseriesLecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics); 8602; 615; 626; 10.1007/978-3-662-45523-4 50
36. Mohamed, A.W.; RDEL: Restart differential evolution algorithm with local search mutation for global numericaloptimization; 2014; Egyptian Informatics Journal; 15; 3; 96; 175; 188; 10.1016/j.eij.2014.07.001
37. Segura, C., Coello, C.A.C., Segredo, E., Len, C.; An analysis of the automatic adaptation of the crossover ratein differential evolution; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014;6900585; 459; 466; 10.1109/CEC.2014.6900585
38. Yu, W.-J., Shen, M., Chen, W.-N., Zhan, Z.-H., Gong, Y.-J., Lin, Y., Liu, O., Zhang, J.; Differential evolu-tion with two-level parameter adaptation; 2014; IEEE Transactions on Cybernetics; 44; 7; 6588590; 1080; 1099;10.1109/TCYB.2013.2279211
39. Amali, S.M.J., Baskar, S.; Parameter adaptation in differential evolution based on diversity control; 2013; LectureNotes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes inBioinformatics); 8297 LNCS; PART 1; 146; 157; 10.1007/978-3-319-03753-0 14
40. Mallipeddi, R., Suganthan, P.N.; Improved adaptive differential evolution algorithm with external archive; 2013;Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notesin Bioinformatics); 8297 LNCS; PART 1; 170; 178; 10.1007/978-3-319-03753-0 16
41. Lian, H., Qin, Y., Liu, J.; An Adaptive Differential Evolution Algorithm Based on New Diversity; 2013; Interna-tional Journal of Computational Intelligence Systems; 6; 6; 1094; 1107; 10.1080/18756891.2013.816064
42. Kuo, H.-C., Lin, C.-H., Wu, J.-L.; A creative differential evolution algorithm for global optimization problems;2013; Journal of Marine Science and Technology (Taiwan); 21; 5; 551; 561; 10.6119/JMST-012-0917-1
43. Iacca, G.; Distributed optimization in wireless sensor networks: An island-model framework; 2013; Soft Computing;17; 12; 2257; 2277; 10.1007/s00500-013-1091-x
44. Xia, H.G., Wang, Q.Z.; An opposition-based modified differential evolution algorithm for numerical optimizationproblems; 2013; Applied Mechanics and Materials; 415; 309; 313; 10.4028/www.scientific.net/AMM.415.309
45. Zhao, H.W., Xia, H.G.; An improved differential evolution algorithm for numerical optimization problems; 2013;Applied Mechanics and Materials; 415; 349; 352; 10.4028/www.scientific.net/AMM.415.349
46. Cheng, J., Zhang, G., Neri, F.; Enhancing distributed differential evolution with multicultural migration for globalnumerical optimization; 2013; Information Sciences; 247; 72; 93; 10.1016/j.ins.2013.06.011
47. Chiang, T.-C., Chen, C.-N., Lin, Y.-C.; Parameter control mechanisms in differential evolution: A tutorial reviewand taxonomy; 2013; Proceedings of the 2013 IEEE Symposium on Differential Evolution, SDE 2013 - 2013 IEEESymposium Series on Computational Intelligence, SSCI 2013; 6601435; 1; 8; 10.1109/SDE.2013.660143520 of 43
48. Elsayed, S.M., Sarker, R.A.; Differential Evolution with automatic population injection scheme for constrainedproblems; 2013; Proceedings of the 2013 IEEE Symposium on Differential Evolution, SDE 2013 - 2013 IEEESymposium Series on Computational Intelligence, SSCI 2013; 6601450; 112; 118; 10.1109/SDE.2013.6601450
49. Deng, W., Yang, X., Zou, L., Wang, M., Liu, Y., Li, Y.; An improved self-adaptive differential evolution algorithmand its application; 2013; Chemometrics and Intelligent Laboratory Systems; 128; 66; 76; 10.1016/j.chemolab.2013.07.004
50. Hamza, N.M., Sarker, R.A., Essam, D.L.; Differential evolution with multi-constraint consensus methods forconstrained optimization; 2013; Journal of Global Optimization; 57; 2; 583; 611; 10.1007/s10898-012-9987-z
51. Zhu, J., Yan, X., Zhao, W.; Chemical process dynamic optimization based on the differential evolution al-gorithm with an adaptive scheduling mutation strategy; 2013; Engineering Optimization; 45; 10; 1205; 1221;10.1080/0305215X.2012.729052
52. Mallipeddi, R.; Harmony search based parameter ensemble adaptation for differential evolution; 2013; Journal ofApplied Mathematics; 2013; 750819; 10.1155/2013/750819
53. Ashlock, D., Krsic, N., Fogel, G.B.; Functions for the analysis of exploration and exploitation; 2013; 2013 IEEECongress on Evolutionary Computation, CEC 2013; 6557807; 2020; 2027; 10.1109/CEC.2013.6557807
54. Elsayed, S.M., Sarker, R.A., Ray, T.; Differential evolution with automatic parameter configuration for solving theCEC2013 competition on Real-Parameter Optimization; 2013; 2013 IEEE Congress on Evolutionary Computation,CEC 2013; 6557795; 1932; 1937; 10.1109/CEC.2013.6557795
55. Amali, S.M.J., Baskar, S.; Fuzzy logic-based diversity-controlled self-adaptive differential evolution; 2013; Engi-neering Optimization; 45; 8; 899; 915; 10.1080/0305215X.2012.713356
56. Weber, M., Neri, F., Tirronen, V.; A study on scale factor/crossover interaction in distributed differential evolution;2013; Artificial Intelligence Review; 39; 3; 195; 224; 10.1007/s10462-011-9267-1
57. Mohamed, A.W., Sabry, H.Z., Abd-Elaziz, T.; Real parameter optimization by an effective differential evolutionalgorithm; 2013; Egyptian Informatics Journal; 14; 1; 37; 53; 10.1016/j.eij.2013.01.001
58. Zhu, W., Tang, Y., Fang, J.-A., Zhang, W.; Adaptive population tuning scheme for differential evolution; 2013;Information Sciences; 223; 164; 191; 10.1016/j.ins.2012.09.019
59. Ma, H., Simon, D., Fei, M., Xie, Z.; Variations of biogeography-based optimization and Markov analysis; 2013;Information Sciences; 220; 492; 506; 10.1016/j.ins.2012.07.007
60. Zhou, Y., Li, X., Gao, L.; A differential evolution algorithm with intersect mutation operator; 2013; Applied SoftComputing Journal; 13; 1; 390; 401; 10.1016/j.asoc.2012.08.014
61. Epitropakis, M.G., Plagianakos, V.P., Vrahatis, M.N.; Evolving cognitive and social experience in Particle SwarmOptimization through Differential Evolution: A hybrid approach; 2012; Information Sciences; 216; 50; 92; 10.1016/j.ins.2012.05.017
62. Liu, S., Xiong, Y., Lu, Q., Huang, W.; Replicator dynamic inspired differential evolution algorithm for global opti-mization; 2012; IJCCI 2012 - Proceedings of the 4th International Joint Conference on Computational Intelligence;133; 143;
63. Zhang, P., Shan, X., Gu, W.; A modified differential algorithm with pitch adjustment for numerical optimization;2012; Proceedings - 2012 3rd International Conference on Digital Manufacturing and Automation, ICDMA 2012;6298259; 81; 84; 10.1109/ICDMA.2012.19
64. al-Rifaie, M.M., Bishop, J.M., Blackwell, T.; Information sharing impact of stochastic diffusion search on differ-ential evolution algorithm; 2012; Memetic Computing; 4; 4; 327; 338; 10.1007/s12293-012-0094-y
65. Liang, J.J., Mao, X.B., Qu, B.Y., Niu, B., Chen, T.J.; Elite multi-group differential evolution; 2012; 2012 IEEECongress on Evolutionary Computation, CEC 2012; 6256568; 10.1109/CEC.2012.6256568
66. Fajfar, I.; Selection strategies and random perturbations in differential evolution; 2012; 2012 IEEE Congress onEvolutionary Computation, CEC 2012; 6256446; 10.1109/CEC.2012.6256446
67. Mallipeddi, R., Lee, M.; Surrogate model assisted ensemble differential evolution algorithm; 2012; 2012 IEEECongress on Evolutionary Computation, CEC 2012; 6256479; 10.1109/CEC.2012.6256479
68. Elsayed, S.M., Sarker, R.A., Ray, T.; Parameters adaptation in differential evolution; 2012; 2012 IEEE Congresson Evolutionary Computation, CEC 2012; 6252931; 10.1109/CEC.2012.6252931
69. Elsayed, S.M., Sarker, R.A., Essam, D.L.; On an evolutionary approach for constrained optimization problemsolving; 2012; Applied Soft Computing Journal; 12; 10; 3208; 3227; 10.1016/j.asoc.2012.05.013
70. Fajfar, I., Tuma, T., Puhan, J., Olen?ek, J., Burmen, A.; Towards smaller populations in differential evolution;2012; Informacije MIDEM; 42; 3; 152; 163;
71. Bansal, J.C., Sharma, H.; Cognitive learning in differential evolution and its application to model order reductionproblem for single-input single-output systems; 2012; Memetic Computing; 4; 3; 209; 229; 10.1007/s12293-012-0089-8
72. Yu, W.-J., Zhang, J.; Adaptive differential evolution with optimization state estimation; 2012; GECCO’12 - Pro-ceedings of the 14th International Conference on Genetic and Evolutionary Computation; 1285; 1291; 10.1145/2330163.2330341
73. Ali, M., Pant, M., Abraham, A.; Improving differential evolution algorithm by synergizing different improvementmechanisms; 2012; ACM Transactions on Autonomous and Adaptive Systems; 7; 2; 20; 10.1145/2240166.224017021 of 43
74. Ali, M., Pant, M., Abraham, A., Ahn, C.W.; Swarm directions embedded differential evolution for faster conver-gence of global optimization problems; 2012; International Journal on Artificial Intelligence Tools; 21; 3; 1240013;10.1142/S0218213012400131
75. Afshar, P., Nobakhti, A., Wang, H.; Joint process and quality control of a continuously stirred tank reactor withnon-Gaussian process noise; 2012; IET Control Theory and Applications; 6; 5; 651; 661; 10.1049/iet-cta.2011.0108
76. Ghosh, S., Das, S., Vasilakos, A.V., Suresh, K.; On convergence of differential evolution over a class of continuousfunctions with unique global optimum; 2012; IEEE Transactions on Systems, Man, and Cybernetics, Part B:Cybernetics; 42; 1; 5961644; 107; 124; 10.1109/TSMCB.2011.2160625
77. Al-Rifaie, M.M., Bishop, J.M., Blackwell, T.; Resource allocation and dispensation impact of stochastic diffusionsearch on differential evolution algorithm; 2011; Studies in Computational Intelligence; 387; 21; 40; 10.1007/978-3-642-24094-2 2
78. Li, H.-R., Gao, Y.-L., Chao, L., Zhao, P.-J.; Improved differential evolution algorithm with adaptive Mutationand control parameters; 2011; Proceedings - 2011 7th International Conference on Computational Intelligence andSecurity, CIS 2011; 6128079; 81; 85; 10.1109/CIS.2011.26
79. Al-Rifaie, M.M., Bishop, J.M., Blackwell, T.; An investigation into the use of swarm intelligence for an evolu-tionary algorithm optimisation: The optimisation performance of Differential Evolution algorithm coupled withstochastic diffusion search; 2011; ECTA 2011 FCTA 2011 - Proceedings of the International Conference on Evolu-tionary Computation Theory and Applications and International Conference on Fuzzy Computation Theory andApplications; 553; 558;
80. Fajfar, I., Puhan, J., Toma?i?, S., Burmen, A.; On selection in differential evolution [Izbor v diferencialni evoluciji];2011; Elektrotehniski Vestnik/Electrotechnical Review; 78; 5; 275; 280;
81. Jeyakumar, G., Shanmugavelayutham, C.; Empirical measurements on the convergence nature of differential evo-lution variants; 2011; Communications in Computer and Information Science; 131 CCIS; PART 1; 472; 480;10.1007/978-3-642-17857-3 46
82. Ali, M., Pant, M., Abraham, A.; Improved differential evolution algorithm with decentralisation of population;2011; International Journal of Bio-Inspired Computation; 3; 1; 17; 30; 10.1504/IJBIC.2011.038701
83. Zio, E., Viadana, G.; Optimization of the inspection intervals of a safety system in a nuclear power plant byMulti-Objective Differential Evolution (MODE); 2011; Reliability Engineering and System Safety; 96; 11; 1552;1563; 10.1016/j.ress.2011.06.010
84. Mallipeddi, R., Iacca, G., Suganthan, P.N., Neri, F., Mininno, E.; Ensemble strategies in Compact Differ-ential Evolution; 2011; 2011 IEEE Congress of Evolutionary Computation, CEC 2011; 5949857; 1972; 1977;10.1109/CEC.2011.5949857
85. Hamza, N.M., Elsayed, S.M., Essam, D.L., Sarker, R.A.; Differential evolution combined with constraint consensusfor constrained optimization; 2011; 2011 IEEE Congress of Evolutionary Computation, CEC 2011; 5949709; 865;872; 10.1109/CEC.2011.5949709
86. Mallipeddi, R., Suganthan, P.N.; Ensemble differential evolution algorithm for CEC2011 problems; 2011; 2011IEEE Congress of Evolutionary Computation, CEC 2011; 5949801; 1557; 1564; 10.1109/CEC.2011.5949801
87. Elsayed, S.M., Sarker, R.A., Essam, D.L.; Differential evolution with multiple strategies for solving CEC2011real-world numerical optimization problems; 2011; 2011 IEEE Congress of Evolutionary Computation, CEC 2011;5949732; 1041; 1048; 10.1109/CEC.2011.5949732
88. Elsayed, S.M., Sarker, R.A., Essam, D.L.; Integrated strategies differential evolution algorithm with a local searchfor constrained optimization; 2011; 2011 IEEE Congress of Evolutionary Computation, CEC 2011; 5949945; 2618;2625; 10.1109/CEC.2011.5949945
89. Du Plessis, M.C., Engelbrecht, A.P.; Self-adaptive competitive differential evolution for dynamic environments;2011; IEEE SSCI 2011 - Symposium Series on Computational Intelligence - SDE 2011: 2011 IEEE Symposium onDifferential Evolution; 5952054; 41; 48; 10.1109/SDE.2011.5952054
90. Ali, M., Pant, M., Abraham, A., Snasel, V.; Differential evolution using mixed strategies in competitive environ-ment; 2011; International Journal of Innovative Computing, Information and Control; 7; 8; 5063; 5084;
91. Weber, M., Neri, F., Tirronen, V.; A study on scale factor in distributed differential evolution; 2011; InformationSciences; 181; 12; 2488; 2511; 10.1016/j.ins.2011.02.008
92. Liu, X., Shi, L., Chen, R.; JDEL: Differential evolution with local search mechanism for high-dimensional opti-mization problems; 2011; Communications in Computer and Information Science; 86 CCIS; 347; 352; 10.1007/978-3-642-19853-3 50
93. Ali, M., Pant, M.; Improving the performance of differential evolution algorithm using Cauchy mutation; 2011;Soft Computing; 15; 5; 991; 1007; 10.1007/s00500-010-0655-2
94. Gong, W., Cai, Z., Jia, L., Li, H.; A generalized hybrid generation scheme of differential evolution for globalnumerical optimization; 2011; International Journal of Computational Intelligence and Applications; 10; 1; 35; 65;10.1142/S1469026811002982
95. Mallipeddi, R., Suganthan, P.N., Pan, Q.K., Tasgetiren, M.F.; Differential evolution algorithm with ensemble of pa-rameters and mutation strategies; 2011; Applied Soft Computing Journal; 11; 2; 1679; 1696; 10.1016/j.asoc.2010.04.024
22 of 43
96. Ali, M., Pant, M., Nagar, A.; Two new approach incorporating centroid based mutation operators for differentialevolution; 2011; World Journal of Modelling and Simulation; 7; 1; 16; 28;
97. Epitropakis, M.G., Tasoulis, D.K., Pavlidis, N.G., Plagianakos, V.P., Vrahatis, M.N.; Enhancing differential evo-lution utilizing proximity-based mutation operators; 2011; IEEE Transactions on Evolutionary Computation; 15;1; 5678831; 99; 119; 10.1109/TEVC.2010.2083670
98. Pan, Q.-K., Suganthan, P.N., Wang, L., Gao, L., Mallipeddi, R.; A differential evolution algorithm with self-adapting strategy and control parameters; 2011; Computers and Operations Research; 38; 1; 394; 408; 10.1016/j.cor.2010.06.007
99. Thangraj, R., Pant, M., Abraham, A., Deep, K., Snasel, V.; Differential evolution using a localized Cauchy muta-tion operator; 2010; Conference Proceedings - IEEE International Conference on Systems, Man and Cybernetics;5641850; 3710; 3716; 10.1109/ICSMC.2010.5641850
100. Jeyakumar, G., Shanmugavelayutham, C.; Analyzing the explorative power of differential evolution variants ondifferent classes of problems; 2010; Lecture Notes in Computer Science (including subseries Lecture Notes inArtificial Intelligence and Lecture Notes in Bioinformatics); 6466 LNCS; 95; 102; 10.1007/978-3-642-17563-3 12
101. Mallipeddi, R., Suganthan, P.N.; Differential evolution algorithm with ensemble of parameters and mutation andcrossover strategies; 2010; Lecture Notes in Computer Science (including subseries Lecture Notes in ArtificialIntelligence and Lecture Notes in Bioinformatics); 6466 LNCS; 71; 78; 10.1007/978-3-642-17563-3 9
102. Lobato, F.S., Steffen Jr., V., Neto, A.J.S.; Self-adaptive differential evolution based on the concept of populationdiversity applied to simultaneous estimation of anisotropic scattering phase function, albedo and optical thickness;2010; CMES - Computer Modeling in Engineering and Sciences; 69; 1; 1; 17;
103. Lakshmi, K., Rama Mohan Rao, A., Bhaskar, K.; Multi-objective adaptive differential evolution algorithm for com-binatorial optimisation; 2010; 2010 2nd International Conference on Computing, Communication and NetworkingTechnologies, ICCCNT 2010; 5591823; 10.1109/ICCCNT.2010.5591823
104. Afshar, P., Nobakhti, A., Wang, H., Chai, T.; Multi-objective minimum entropy controller design for stochasticprocesses; 2010; Proceedings of the 2010 American Control Conference, ACC 2010; 5530823; 355; 360;
105. Gestal, M., Rivero, D., Fernndez, E., Rabual, J.R., Dorado, J.; Two-population genetic Algorithm: An approachto improve the population diversity; 2010; ICAART 2010 - 2nd International Conference on Agents and ArtificialIntelligence, Proceedings; 1; 635; 639;
106. Weber, M., Tirronen, V., Neri, F.; Scale factor inheritance mechanism in distributed differential evolution; 2010;Soft Computing; 14; 11; 1187; 1207; 10.1007/s00500-009-0510-5
107. Kuo, H.C., Chiu, J.T., Li, Y.J.; An intelligent garbage can decision-making model evolution algorithm in optimaldesign of fuzzy controller of active vibration isolation systems; 2010; Journal of Taiwan Society of Naval Architectsand Marine Engineers; 29; 2; 103; 112;
108. Dai, C., Chen, W., Zhu, Y.; Seeker optimization algorithm for digital IIR filter design; 2010; IEEE Transactionson Industrial Electronics; 57; 5; 5229209; 1710; 1718; 10.1109/TIE.2009.2031194
109. Nobakhti, A., Wang, H.; Minimization of Wet End disturbances during web breaks using online LAV estimation;2010; Control Engineering Practice; 18; 4; 433; 447; 10.1016/j.conengprac.2010.01.003
110. Thangaraj, R., Pant, M., Abraham, A.; New mutation schemes for differential evolution algorithm and their appli-cation to the optimization of directional over-current relay settings; 2010; Applied Mathematics and Computation;216; 2; 532; 544; 10.1016/j.amc.2010.01.071
111. Neri, F., Tirronen, V.; Recent advances in differential evolution: A survey and experimental analysis; 2010;Artificial Intelligence Review; 33; 01.feb; 61; 106; 10.1007/s10462-009-9137-2
112. Ali, M., Pant, M., Abraham, A.; Inserting information sharing mechanism of PSO to improve the convergenceof DE; 2009; 2009 World Congress on Nature and Biologically Inspired Computing, NABIC 2009 - Proceedings;5393720; 282; 287; 10.1109/NABIC.2009.5393720
113. Afshar, P., Nobakhti, A., Wang, H.; Direct solution of the parametric stochastic distribution control problem; 2009;Proceedings of the IEEE Conference on Decision and Control; 5399649; 2616; 2621; 10.1109/CDC.2009.5399649
114. Weber, M., Neri, F., Tirronen, V.; Distributed differential evolution with explorative-exploitative populationfamilies; 2009; Genetic Programming and Evolvable Machines; 10; 4; 343; 371; 10.1007/s10710-009-9089-y
115. Afshar, P., Nobakhti, A., Wang, H.; Probabilistic quality control in non-gaussian process control applications;2009; Proceedings of the 2009 IEEE International Conference on Automation and Logistics, ICAL 2009; 5262872;498; 503; 10.1109/ICAL.2009.5262872
116. Huang, V.L., Zhao, S.Z., Mallipeddi, R., Suganthan, P.N.; Multi-objective optimization using self-adaptive differ-ential evolution algorithm; 2009; 2009 IEEE Congress on Evolutionary Computation, CEC 2009; 4982947; 190;194; 10.1109/CEC.2009.4982947
117. Pant, M., Thangaraj, R., Abraham, A., Grosan, C.; Differential evolution with laplace mutation perator; 2009;2009 IEEE Congress on Evolutionary Computation, CEC 2009; 4983299; 2841; 2849; 10.1109/CEC.2009.4983299
118. Epitropakis, M.G., Plagianakos, V.P., Vrahatis, M.N.; Evolutionary adaptation of the differential evolution con-trol parameters; 2009; 2009 IEEE Congress on Evolutionary Computation, CEC 2009; 4983102; 1359; 1366;10.1109/CEC.2009.4983102 23 of 43
119. Kukkonen, S., Lampinen, J.; Performance assessment of generalized differential evolution 3 with a Given set ofconstrained multi-objective test problems; 2009; 2009 IEEE Congress on Evolutionary Computation, CEC 2009;4983178; 1943; 1950; 10.1109/CEC.2009.4983178
120. Nobakhti, A., Wang, H., Chai, T.; Algorithm for very fast computation of least absolute value regression; 2009;Proceedings of the American Control Conference; 5160229; 14; 19; 10.1109/ACC.2009.5160229
121. Ali, M., Pant, M., Singh, V.P.; A modified differential evolution algorithm with cauchy mutation for globaloptimization; 2009; Communications in Computer and Information Science; 40; 127; 137; 10.1007/978-3-642-03547-0 13
122. Das, S., Abraham, A., Chakraborty, U.K., Konar, A.; Differential evolution using a neighborhood-based mutationoperator; 2009; IEEE Transactions on Evolutionary Computation; 13; 3; 526; 553; 10.1109/TEVC.2008.2009457
123. Mallipeddi, R., Suganthan, P.N.; Differential evolution algorithm with ensemble of populations for global numericaloptimization; 2009; OPSEARCH; 46; 2; 184; 213; 10.1007/s12597-009-0012-3
124. Pant, M., Ali, M., Singh, V.P.; Parent-centric differential evolution algorithm for global optimization problems;2009; OPSEARCH; 46; 2; 153; 168; 10.1007/s12597-009-0010-5
125. Wang, F.-R., Wang, W.-H.; Hybrid chaotic differential evolution algorithm for location management problem ofmobile computing; 2009; Xitong Fangzhen Xuebao / Journal of System Simulation; 21; 6; 1609; 1614;
126. Das, S., Abraham, A., Konar, A.; Modeling and analysis of the population-dynamics of differential evolutionalgorithm; 2009; Studies in Computational Intelligence; 178; 111; 135; 10.1007/978-3-540-93964-1 3
127. Das, S., Abraham, A., Konar, A.; Differential evolution algorithm: Foundations and perspectives; 2009; Studiesin Computational Intelligence; 178; 63; 110; 10.1007/978-3-540-93964-1 2
128. Qin, A.K., Huang, V.L., Suganthan, P.N.; Differential evolution algorithm with strategy adaptation for global nu-merical optimization; 2009; IEEE Transactions on Evolutionary Computation; 13; 2; 398; 417; 10.1109/TEVC.2008.927706
129. Kukkonen, S., Lampinen, J.; Generalized differential evolution for constrained multi-objective optimization; 2008;Multi-Objective Optimization in Computational Intelligence: Theory and Practice; 43; 75; 10.4018/978-1-59904-498-9.ch003
130. Dasgupta, S., Biswas, A., Das, S., Abraham, A.; The population dynamics of Differential Evolution: A math-ematical model; 2008; 2008 IEEE Congress on Evolutionary Computation, CEC 2008; 4630983; 1439; 1446;10.1109/CEC.2008.4630983
131. Leguizamon, G., Ordonez, G., Molina, S., Alba, E.; Canonical Metaheuristics for Dynamic Optimization Problems;2008; Optimization Techniques for Solving Complex Problems; 83; 100; 10.1002/9780470411353.ch6
132. Nobakhti, A., Wang, H.; A simple self-adaptive Differential Evolution algorithm with application on the ALSTOMgasifier; 2008; Applied Soft Computing Journal; 8; 1; 350; 370; 10.1016/j.asoc.2006.12.005
133. Huang, V.L., Qin, A.K., Suganthan, P.N., Tasgetiren, M.F.; Multi-objective optimization based on self-adaptivedifferential evolution algorithm; 2007; 2007 IEEE Congress on Evolutionary Computation, CEC 2007; 4424939;3601; 3608; 10.1109/CEC.2007.4424939
134. Das, S., Konar, A., Chakraborty, U.K.; Annealed differential evolution; 2007; 2007 IEEE Congress on EvolutionaryComputation, CEC 2007; 4424709; 1926; 1933; 10.1109/CEC.2007.4424709
135. Kukkonen, S., Lampinen, J.; Performance assessment of Generalized Differential Evolution 3 (GDE3) with agiven set of problems; 2007; 2007 IEEE Congress on Evolutionary Computation, CEC 2007; 4424938; 3593; 3600;10.1109/CEC.2007.4424938
136. Omran, M.G.H., Engelbrecht, A.P., Salman, A.; Self-adaptive barebones differential evolution; 2007; 2007 IEEECongress on Evolutionary Computation, CEC 2007; 4424834; 2858; 2865; 10.1109/CEC.2007.4424834
137. Langdon, W.B., Poli, R.; Evolving problems to learn about particle swarm optimizers and other search algorithms;2007; IEEE Transactions on Evolutionary Computation; 11; 5; 561; 578; 10.1109/TEVC.2006.886448
138. Liu, B., Wang, L., Jin, Y.-H.; Advances in differential evolution; 2007; Kongzhi yu Juece/Control and Decision;22; 7; 721; 729;
139. Nobakhti, A., Wang, H.; Co-evolutionary self-adaptive differential evolution with a uniform-distribution up-date rule; 2006; IEEE International Symposium on Intelligent Control - Proceedings; 4064949; 1264; 1269;10.1109/ISIC.2006.285624
140. Tvrdik, J.; Differential evolution: Competitive setting of control parameters; 2006; Proceedings of the InternationalMulticonference on Computer Science and Information Technology, IMCSIT; 1; 207; 213;
141. Nobakliti, A., Wang, H.; A self-adaptive differential evolution with application on the ALSTOM gasifier; 2006;Proceedings of the American Control Conference; 2006; 1657426; 4489; 4494;
142. Tvrdik, J.; Competitive differential evolution; 2006; Mendel; 2006-January; January; 7; 12;
143. Madavan, N.K.; On improving efficiency of differential evolution for aerodynamic shape optimization applications;2004; Collection of Technical Papers - 10th AIAA/ISSMO Multidisciplinary Analysis and Optimization Conference;6; 3590; 3609;
144. Langdon, W.B., Poli, R.; Evolving problems to learn about particle swarm and other optimisers; 2005; 2005 IEEECongress on Evolutionary Computation, IEEE CEC 2005. Proceedings; 1; 81; 88;24 of 43
Citari pentru D. Zaharie, D. Petcu - Parallel implementation of multi-population differential evolution In Proc.of 2nd Workshop on Concurrent Information Processing and Computing (CIPC’03), Sinaia, Romania, eds. D.Grigoras et al., 2003.
1. Sun, Y.; Symbiosis co-evolutionary population topology differential evolution; 2017; Proceedings - 12th Interna-tional Conference on Computational Intelligence and Security, CIS 2016; 7820520; 530; 533; 10.1109/CIS.2016.128
2. Ge, Y.-F., Yu, W.-J., Zhang, J.; Diversity-based multi-population differential evolution for large-scale optimization;2016; GECCO 2016 Companion - Proceedings of the 2016 Genetic and Evolutionary Computation Conference; ;31; 32; 10.1145/2908961.2908995
3. Ge, Y.-F., Yu, W.-J., Li, J.-J., Yu, Z.-W., Zhang, J.; Enhancing distributed differential evolution with a space-driven topology; 2016; 2016 IEEE Congress on Evolutionary Computation, CEC 2016; 7744309; 4090; 4095;10.1109/CEC.2016.7744309
4. Penas, D.R., Banga, J.R., Gonzlez, P., Doallo, R.; Enhanced parallel differential evolution algorithm for problems incomputational systems biology; 2015; Applied Soft Computing Journal; 33; 2915; 86; 99; 10.1016/j.asoc.2015.04.025
5. Ramirez, A., Lopez, I., Villuendas, Y., Yanez, C.; Evolutive improvement of parameters in an associative classifier;2015; IEEE Latin America Transactions; 13; 5; 7112014; 1550; 1555; 10.1109/TLA.2015.7112014
6. Yuan, J., Zhang, X., Zhu, X., Feng, E., Yin, H., Xiu, Z.; Pathway identification using parallel optimization for anonlinear hybrid system in batch culture; 2015; Nonlinear Analysis: Hybrid Systems; 15; 112; 131; 10.1016/j.nahs.2014.08.004
7. Cheng, J., Zhang, G., Caraffini, F., Neri, F.; Multicriteria adaptive differential evolution for global numericaloptimization; 2015; Integrated Computer-Aided Engineering; 22; 2; 103; 117; 10.3233/ICA-150481
8. Biswas, S., Kundu, S., Das, S.; Inducing Niching Behavior in Differential Evolution Through Local InformationSharing; 2015; IEEE Transactions on Evolutionary Computation; 19; 2; 6778013; 246; 263; 10.1109/TEVC.2014.2313659
9. Deng, C., Tan, X., Dong, X., Tan, Y.; A parallel version of differential evolution based on resilient distributeddatasets model; 2015; Communications in Computer and Information Science; 562; 84; 93; 10.1007/978-3-662-49014-3 8
10. Jeyakumar, G., Shunmuga Velayutham, C.; Distributed heterogeneous mixing of differential and dynamic dif-ferential evolution variants for unconstrained global optimization; 2014; Soft Computing; 18; 10; 1949; 1965;10.1007/s00500-013-1178-4
11. Apolloni, J., Garca-Nieto, J., Alba, E., Leguizamn, G.; Empirical evaluation of distributed differential evolutionon standard benchmarks; 2014; Applied Mathematics and Computation; 236; 351; 366; 10.1016/j.amc.2014.03.083
12. Tagawa, K.; Concurrent implementation techniques using differential evolution for multi-core CPUs: A comparativestudy using statistical tests; 2014; Evolution, Complexity and Artificial Life; ; 261; 280; 10.1007/978-3-642-37577-4 17
13. Glotic, A., Glotic, A., Kitak, P., Pihler, J., Ticar, I.; Parallel self-adaptive differential evolution algorithm forsolving short-term hydro scheduling problem; 2014; IEEE Transactions on Power Systems; 29; 5; 6734725; 2347;2358; 10.1109/TPWRS.2014.2302033
14. Corts-Antonio, P., Rangel-Gonzlez, J., Villa-Vargas, L.A., Ramrez-Salinas, M.A., Molina-Lozano, H., Batyrshin,I.; Design and implementation of differential evolution algorithm on FPGA for double-precision floating-pointrepresentation; 2014; Acta Polytechnica Hungarica; 11; 4; 139; 153;
15. De Falco, I., Cioppa, A.D., Maisto, D., Scafuri, U., Tarantino, E.; Impact of the topology on the performanceof distributed differential evolution; 2014; Lecture Notes in Computer Science ; 8602; 75; 85; 10.1007/978-3-662-45523-4 7
16. Jeyakumar, G., Shunmuga Velayutham, C.; Distributed mixed variant differential evolution algorithms for uncon-strained global optimization; 2013; Memetic Computing; 5; 4; 275; 293; 10.1007/s12293-013-0119-1
17. Cheng, J., Zhang, G., Neri, F.; Enhancing distributed differential evolution with multicultural migration for globalnumerical optimization; 2013; Information Sciences; 247; 72; 93; 10.1016/j.ins.2013.06.011
18. Tagawa, K., Nakajima, K.; Island-based differential evolution with panmictic migration for multi-core CPUs; 2013;2013 IEEE Congress on Evolutionary Computation, CEC 2013; 6557657; 852; 859; 10.1109/CEC.2013.6557657
19. Jeyakumar, G., Shanmugavelayutham, C.; Experimental study on recent advances in differential evolution algo-rithm; 2013; Modeling Applications and Theoretical Innovations in Interdisciplinary Evolutionary Computation; ;111; 133; 10.4018/978-1-4666-3628-6.ch007
20. Weber, M., Neri, F., Tirronen, V.; A study on scale factor/crossover interaction in distributed differential evolution;2013; Artificial Intelligence Review; 39; 3; 195; 224; 10.1007/s10462-011-9267-1
21. Chen, Z., Jiang, X., Li, J., Li, S., Wang, L.; PDECO: Parallel differential evolution for clusters optimization; 2013;Journal of Computational Chemistry; 34; 12; 1046; 1059; 10.1002/jcc.23235
22. De Falco, I., Della Cioppa, A., Maisto, D., Scafuri, U., Tarantino, E.; Biological invasion-inspired migration indistributed evolutionary algorithms; 2012; Information Sciences; 207; 50; 65; 10.1016/j.ins.2012.04.027
23. Sun, Y., Li, Y., Liu, J., Hu, H.; Enhancing differential evolution performance with self-adaptive populationtopologies on numerical benchmark problems; 2012; Journal of Convergence Information Technology; 7; 21; 501;508; 10.4156/jcit.vol7.issue21.61
25 of 43
24. Sun, Y., Li, Y., Liu, G., Liu, J.; A novel differential evolution algorithm with adaptive of population topology;2012; Lecture Notes in Computer Science ; 7473 LNCS; 531; 538; 10.1007/978-3-642-34062-8 69
25. Huo, C.-L., Lien, Y.-S., Yu, Y.-H., Sun, T.-Y.; Effectively multi-swarm sharing management for differential evolu-tion; 2012; 2012 IEEE Congress on Evolutionary Computation, CEC 2012; 6252890; 10.1109/CEC.2012.6252890
26. Ishimizu, T., Tagawa, K.; Experimental study of a structured differential evolution with mixed strategies; 2011;Journal of Advanced Computational Intelligence and Intelligent Informatics; 15; 9; 1310; 1319;
27. Weber, M., Neri, F., Tirronen, V.; A study on scale factor in distributed differential evolution; 2011; InformationSciences; 181; 12; 2488; 2511; 10.1016/j.ins.2011.02.008
28. Epitropakis, M.G., Tasoulis, D.K., Pavlidis, N.G., Plagianakos, V.P., Vrahatis, M.N.; Enhancing differential evo-lution utilizing proximity-based mutation operators; 2011; IEEE Transactions on Evolutionary Computation; 15;1; 5678831; 99; 119; 10.1109/TEVC.2010.2083670
29. Dorronsoro, B., Bouvry, P.; Improving classical and decentralized differential evolution with new mutation oper-ator and population topologies; 2011; IEEE Transactions on Evolutionary Computation; 15; 1; 5714781; 67; 98;10.1109/TEVC.2010.2081369
30. Ishimizu, T., Tagawa, K.; Experiment study of a structured differential evolution with mixed strategies; 2010;Proceedings - 2010 2nd World Congress on Nature and Biologically Inspired Computing, NaBIC 2010; 5716284;591; 596; 10.1109/NABIC.2010.5716284
31. Ishimizu, T., Tagawa, K.; A comparative study of structured Differential Evolutions; 2010; International Confer-ence on Applied Computer Science - Proceedings; ; 321; 326;
32. Jeyakumar, G., Velayutham, C.S.; Empirical study on migration topologies and migration policies for islandbased distributed differential evolution variants; 2010; Lecture Notes in Computer Science ; 6466 LNCS; 29; 37;10.1007/978-3-642-17563-3 4
33. Weber, M., Tirronen, V., Neri, F.; Scale factor inheritance mechanism in distributed differential evolution; 2010;Soft Computing; 14; 11; 1187; 1207; 10.1007/s00500-009-0510-5
34. Weber, M., Neri, F., Tirronen, V.; Parallel random injection differential evolution; 2010; Lecture Notes in ComputerScience ; 6024 LNCS; PART 1; 471; 480; 10.1007/978-3-642-12239-2-49
35. Chung, C.Y., Liang, C.H., Wong, K.P., Duan, X.Z.; Hybrid algorithm of differential evolution and evolution-ary programming for optimal reactive power flow; 2010; IET Generation, Transmission and Distribution; 4; 1;IGTDAW000004000001000084000001; 84; 93; 10.1049/iet-gtd.2009.0007
36. Weber, M., Neri, F., Tirronen, V.; Distributed differential evolution with explorative-exploitative populationfamilies; 2009; Genetic Programming and Evolvable Machines; 10; 4; 343; 371; 10.1007/s10710-009-9089-y
37. Zielinski, K., Laur, R.; Stopping criteria for differential evolution in constrained single-objective optimization;2008; Studies in Computational Intelligence; 143; 111; 138; 10.1007/978-3-540-68830-3 4
26 of 43
Citari pentru D. Zaharie, D. Petcu - Adaptive Pareto Differential Evolution and its Parallelization, Proc. of 5thInternational Conference on Parallel Processing and Applied Mathematics, Czestochowa, Poland, sept. 2003 ,Lecture Notes in Computer Science Volume 3019, pp 261-268, 2004.
1. Jana, N.D., Sil, J.; Levy distributed parameter control in differential evolution for numerical optimization; 2016;Natural Computing; 15; 3; 371; 384; 1; 10.1007/s11047-015-9488-3
2. Bhatnagar, A., Sharma, K., Singh, M.; Exploited Differential Evolution Algorithm; 2016; Proceedings - 2015International Conference on Computational Intelligence and Communication Networks, CICN 2015; 7546298;1261; 1269; 10.1109/CICN.2015.243
3. Wang, X., Tang, L.; An adaptive multi-population differential evolution algorithm for continuous multi-objectiveoptimization; 2016; Information Sciences; 348; 124; 141; 8; 10.1016/j.ins.2016.01.068 Mallipeddi, R., Lee, M.; Anevolving surrogate model-based differential evolution algorithm; 2015; Applied Soft Computing Journal; 34; 770;787; 9; 10.1016/j.asoc.2015.06.010
4. Gonuguntla, V., Mallipeddi, R., Veluvolu, K.C.; Differential evolution with population and strategy parameteradaptation; 2015; Mathematical Problems in Engineering; 2015; 287607; 5; 10.1155/2015/287607
5. Sharma, H., Bansal, J.C., Arya, K.V.; Self balanced differential evolution; 2014; Journal of Computational Science;5; 2; 312; 323; 6; 10.1016/j.jocs.2012.12.002
6. Mallipeddi, R., Wu, G., Lee, M., Suganthan, P.N.; Gaussian adaptation based parameter adaptation for differentialevolution; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014; 6900601; 1760;1767; 7; 10.1109/CEC.2014.6900601
7. Yu, W.-J., Shen, M., Chen, W.-N., Zhan, Z.-H., Gong, Y.-J., Lin, Y., Liu, O., Zhang, J.; Differential evolutionwith two-level parameter adaptation; 2014; IEEE Transactions on Cybernetics; 44; 7; 6588590; 1080; 1099; 39;10.1109/TCYB.2013.2279211
8. Chiang, T.-C., Chen, C.-N., Lin, Y.-C.; Parameter control mechanisms in differential evolution: A tutorial reviewand taxonomy; 2013; Proceedings of the 2013 IEEE Symposium on Differential Evolution, SDE 2013 - 2013 IEEESymposium Series on Computational Intelligence, SSCI 2013; 6601435; 1; 8; 4; 10.1109/SDE.2013.6601435
9. Mallipeddi, R.; Harmony search based parameter ensemble adaptation for differential evolution; 2013; Journal ofApplied Mathematics; 2013; 750819; 4; 10.1155/2013/750819
10. Qin, D., Li, Z.; Orthogonal design and analysis of variance based performance analysis of differential evolution al-gorithm; 2013; Advanced Materials Research; 694 697; 2751; 2756; 10.4028/www.scientific.net/AMR.694-697.2751
11. Zhao, S.-Z., Suganthan, P.N.; Empirical investigations into the exponential crossover of differential evolutions;2013; Swarm and Evolutionary Computation; 9; 27; 36; 15; 10.1016/j.swevo.2012.09.004
12. Bansal, J.C., Sharma, H.; Cognitive learning in differential evolution and its application to model order reductionproblem for single-input single-output systems; 2012; Memetic Computing; 4; 3; 209; 229; 22; 10.1007/s12293-012-0089-8
13. Nagy, R., Suciu, M.A., Dumitrescu, D.; Lorenz equilibrium: Equitability in non-cooperative games; 2012; GECCO’12- Proceedings of the 14th International Conference on Genetic and Evolutionary Computation; 489; 496; 10.1145/2330163.2330233
14. Nagy, R., Dumitrescu, D., Lung, R.I.; Lorenz equilibrium: Concept and evolutionary detection; 2012; Proceedings- 13th International Symposium on Symbolic and Numeric Algorithms for Scientific Computing, SYNASC 2011;6169608; 408; 412; 10.1109/SYNASC.2011.46
15. Wang, S., Ding, L., Shu, W., Xie, C., Yang, H.; Differential evolution without scaling factor; 2012; InternationalJournal of Advancements in Computing Technology; 4; 4; 41; 48; 4; 10.4156/ijact.vol4.issue4.6
16. Ye, H., Zhou, M., Wu, Y.; Advances in differential evolution for solving multiobjective optimization problems;2012; Lecture Notes in Computer Science ; 7331 LNCS; PART 1; 366; 373; 10.1007/978-3-642-30976-2 44
17. Rama Mohan Rao, A., Lakshmi, K., Venkatachalam, D.; Damage diagnostic technique for structural health mon-itoring using POD and self adaptive differential evolution algorithm; 2012; Computers and Structures; 106-107;228; 244; 10; 10.1016/j.compstruc.2012.05.009
18. Ali, M., Pant, M., Abraham, A.; Improving differential evolution algorithm by synergizing different improvementmechanisms; 2012; ACM Transactions on Autonomous and Adaptive Systems; 7; 2; 20; 9; 10.1145/2240166.2240170
19. Piotrowski, A.P., Napiorkowski, J.J., Kiczko, A.; Differential Evolution algorithm with Separated Groups formulti-dimensional optimization problems; 2012; European Journal of Operational Research; 216; 1; 33; 46; 35;10.1016/j.ejor.2011.07.038 Mallipeddi, R., Lee, M.; Surrogate model assisted ensemble differential evolution algo-rithm; 2012; 2012 IEEE Congress on Evolutionary Computation, CEC 2012; 6256479; 1; 10.1109/CEC.2012.6256479Garca-Martnez, C., Rodrguez, F.J., Lozano, M.; Role differentiation and malleable mating for differential evolution:An analysis on large-scale optimisation; 2011; Soft Computing; 15; 11; 2109; 2126; 11; 10.1007/s00500-010-0641-8
20. Mallipeddi, R., Suganthan, P.N.; Ensemble differential evolution algorithm for CEC2011 problems; 2011; 2011IEEE Congress of Evolutionary Computation, CEC 2011; 5949801; 1557; 1564; 25; 10.1109/CEC.2011.5949801
21. Ali, M., Pant, M.; Improving the performance of differential evolution algorithm using Cauchy mutation; 2011;Soft Computing; 15; 5; 991; 1007; 31; 10.1007/s00500-010-0655-227 of 43
22. Mallipeddi, R., Suganthan, P.N., Pan, Q.K., Tasgetiren, M.F.; Differential evolution algorithm with ensem-ble of parameters and mutation strategies; 2011; Applied Soft Computing Journal; 11; 2; 1679; 1696; 434;10.1016/j.asoc.2010.04.024
23. Ali, M., Pant, M., Nagar, A.; Two new approach incorporating centroid based mutation operators for differentialevolution; 2011; World Journal of Modelling and Simulation; 7; 1; 16; 28; 1;
24. Pan, Q.-K., Suganthan, P.N., Wang, L., Gao, L., Mallipeddi, R.; A differential evolution algorithm with self-adapting strategy and control parameters; 2011; Computers and Operations Research; 38; 1; 394; 408; 96;10.1016/j.cor.2010.06.007
25. Arias Montao, A., Coello Coello, C.A., Mezura-Montes, E.; pMODE-LD+SS: An effective and efficient paralleldifferential evolution algorithm for multi-objective optimization; 2010; Lecture Notes in Computer Science; 6239LNCS; PART 2; 21; 30; 2; 10.1007/978-3-642-15871-1 3
26. Neri, F., Tirronen, V.; Recent advances in differential evolution: A survey and experimental analysis; 2010;Artificial Intelligence Review; 33; 01.feb; 61; 106; 386; 10.1007/s10462-009-9137-2
27. Mallipeddi, R., Suganthan, P.N.; Differential evolution algorithm with ensemble of parameters and mutation andcrossover strategies; 2010; Lecture Notes in Computer Science; 6466 LNCS; 71; 78; 34; 10.1007/978-3-642-17563-3 9
28. Das, S., Abraham, A., Chakraborty, U.K., Konar, A.; Differential evolution using a neighborhood-based mutationoperator; 2009; IEEE Transactions on Evolutionary Computation; 13; 3; 526; 553; 567; 10.1109/TEVC.2008.2009457
29. Huang, V.L., Zhao, S.Z., Mallipeddi, R., Suganthan, P.N.; Multi-objective optimization using self-adaptive differ-ential evolution algorithm; 2009; 2009 IEEE Congress on Evolutionary Computation, CEC 2009; 4982947; 190;194; 58; 10.1109/CEC.2009.4982947
30. Dasgupta, S., Das, S., Biswas, A., Abraham, A.; On stability and convergence of the population-dynamics indifferential evolution; 2009; AI Communications; 22; 1; 1; 20; 47; 10.3233/AIC-2009-0440
31. Qin, A.K., Huang, V.L., Suganthan, P.N.; Differential evolution algorithm with strategy adaptation for global nu-merical optimization; 2009; IEEE Transactions on Evolutionary Computation; 13; 2; 398; 417; 1284; 10.1109/TEVC.2008.927706
32. Dasgupta, S., Biswas, A., Das, S., Abraham, A.; The population dynamics of Differential Evolution: A math-ematical model; 2008; 2008 IEEE Congress on Evolutionary Computation, CEC 2008; 4630983; 1439; 1446; 7;10.1109/CEC.2008.4630983
33. Fu, J., Liu, Q., Zhou, X., Xiang, K., Zeng, Z.; An adaptive variable strategy Pareto differential evolution algorithmfor multi-objective optimization; 2008; 2008 IEEE Congress on Evolutionary Computation, CEC 2008; 4630864;648; 652; 2; 10.1109/CEC.2008.4630864
34. Storn, R.; Differential evolution research - Trends and open questions; 2008; Studies in Computational Intelligence;143; 1; 31; 40; 10.1007/978-3-540-68830-3 1
35. Liu, B., Wang, L., Jin, Y.-H.; Advances in differential evolution; 2007; Kongzhi yu Juece/Control and Decision;22; 7; 721; 729; 80;
36. Huang, V.L., Qin, A.K., Suganthan, P.N., Tasgetiren, M.F.; Multi-objective optimization based on self-adaptivedifferential evolution algorithm; 2007; 2007 IEEE Congress on Evolutionary Computation, CEC 2007; 4424939;3601; 3608; 44; 10.1109/CEC.2007.4424939
37. Das, S., Konar, A., Chakraborty, U.K.; Annealed differential evolution; 2007; 2007 IEEE Congress on EvolutionaryComputation, CEC 2007; 4424709; 1926; 1933; 23; 10.1109/CEC.2007.4424709
38. Luna, F., Nebro, A.J., Alba, E.; Parallel evolutionary multiobjective optimization; 2006; Studies in ComputationalIntelligence; 22; 33; 56; 7; 10.1007/3-540-32839-4 2
39. Nebro, A.J., Luna, F., Talbi, E.G., Alba, E.; Parallel Multiobjective Optimization; 2005; Parallel Metaheuristics:A New Class of Algorithms; 371; 394; 12; 10.1002/0471739383.ch16
40. Luna, F., Alba, E., Nebro, A.J.; Parallel Heterogeneous Metaheuristics; 2005; Parallel Metaheuristics: A NewClass of Algorithms; 395; 422; 5; 10.1002/0471739383.ch17
28 of 43
Citari pentru D. Zaharie - A Multipopulation Differential Evolution Algorithm for Multimodal Optimization ,in R. Matousek, P. Osmera (eds.), Proc. of Mendel 2004, 10th International Conference on Soft Computing,Brno, june 2004, pp. 17-22, 2004.
1. Zamuda, A., Brest, J.; Self-adaptive control parameters’ randomization frequency and propagations in differentialevolution; 2015; Swarm and Evolutionary Computation; 25; 72; 99; 10.1016/j.swevo.2015.10.007
2. Biswas, S., Kundu, S., Das, S.; Inducing Niching Behavior in Differential Evolution Through Local InformationSharing; 2015; IEEE Transactions on Evolutionary Computation; 19; 2; 6778013; 246; 263; 10.1109/TEVC.2014.2313659
3. Mukherjee, R., Patra, G.R., Kundu, R., Das, S.; Cluster-based differential evolution with Crowding Archive forniching in dynamic environments; 2014; Information Sciences; 267; 58; 82; 10.1016/j.ins.2013.11.025
4. Ali, M.Z., Awad, N.H.; A novel class of niche hybrid Cultural Algorithms for continuous engineering optimization;2014; Information Sciences; 267; 158; 190; 10.1016/j.ins.2014.01.002
5. Guo, X., Wu, Y., Xie, L.; Modified brain storm optimization algorithm for multimodal optimization; 2014; LectureNotes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes inBioinformatics); 8795; 340; 351;
6. Gao, W., Yen, G.G., Liu, S.; A cluster-based differential evolution with self-adaptive strategy for multimodaloptimization; 2014; IEEE Transactions on Cybernetics; 44; 8; 6621004; 1314; 1327; 10.1109/TCYB.2013.2282491
7. Cheng, J., Zhang, G., Neri, F.; Enhancing distributed differential evolution with multicultural migration for globalnumerical optimization; 2013; Information Sciences; 247; 72; 93; 10.1016/j.ins.2013.06.011
8. Biswas, S., Kundu, S., Bose, D., Das, S., Suganthan, P.N.; Synchronizing Differential Evolution with a mod-ified affinity-based mutation framework; 2013; Proceedings of the 2013 IEEE Symposium on Differential Evo-lution, SDE 2013 - 2013 IEEE Symposium Series on Computational Intelligence, SSCI 2013; 6601443; 61; 68;10.1109/SDE.2013.6601443
9. Basak, A., Das, S., Tan, K.C.; Multimodal optimization using a biobjective differential evolution algorithm en-hanced with mean distance-based selection; 2013; IEEE Transactions on Evolutionary Computation; 17; 5; 6374243;666; 685; 10.1109/TEVC.2012.2231685
10. Zamuda, A., Brest, J., Mezura-Montes, E.; Structured Population Size Reduction Differential Evolution withMultiple Mutation Strategies on CEC 2013 real parameter optimization; 2013; 2013 IEEE Congress on EvolutionaryComputation, CEC 2013; 6557794; 1925; 1931; 10.1109/CEC.2013.6557794
11. Roy, S., Islam, S.M., Das, S., Ghosh, S., Vasilakos, A.V.; A simulated weed colony system with subregional differen-tial evolution for multimodal optimization; 2013; Engineering Optimization; 45; 4; 459; 481; 10.1080/0305215X.2012.678494
12. Roy, S., Islam, S.M., Das, S., Ghosh, S.; Multimodal optimization by artificial weed colonies enhanced withlocalized group search optimizers; 2013; Applied Soft Computing Journal; 13; 1; 27; 46; 10.1016/j.asoc.2012.08.038
13. Epitropakis, M.G., Plagianakos, V.P., Vrahatis, M.N.; Evolving cognitive and social experience in Particle SwarmOptimization through Differential Evolution: A hybrid approach; 2012; Information Sciences; 216; 50; 92; 10.1016/j.ins.2012.05.017
14. Jada, C., Yenala, H., Rachavarapu, K.K., Chittipolu, N.K., Omkar, S.N.; Modified Roaming Optimization formulti-modal optima; 2012; Proceedings - 2012 3rd International Conference on Emerging Applications of Informa-tion Technology, EAIT 2012; 6407861; 56; 61; 10.1109/EAIT.2012.6407861
15. Qu, B.Y., Suganthan, P.N., Liang, J.J.; Differential evolution with neighborhood mutation for multimodal opti-mization; 2012; IEEE Transactions on Evolutionary Computation; 16; 5; 6151116; 601; 614; 10.1109/TEVC.2011.2161873
16. Xie, D., Ding, L., Du, X., Hu, Y., Wang, S.; Self-adaptive pseudo-parallel differential evolution algorithm; 2012;Journal of Computational Information Systems; 8; 8; 3403; 3411;
17. Montgomery, J., Chen, S.; A simple strategy for maintaining diversity and reducing crowding in differential evolu-tion; 2012; 2012 IEEE Congress on Evolutionary Computation, CEC 2012; 6252891; 10.1109/CEC.2012.6252891
18. Dasa, S., Maity, S., Qu, B.-Y., Suganthan, P.N.; Real-parameter evolutionary multimodal optimization-A surveyof the state-of-the-art; 2011; Swarm and Evolutionary Computation; 1; 2; 71; 78; 10.1016/j.swevo.2011.05.005
19. Epitropakis, M.G., Tasoulis, D.K., Pavlidis, N.G., Plagianakos, V.P., Vrahatis, M.N.; Enhancing differential evo-lution utilizing proximity-based mutation operators; 2011; IEEE Transactions on Evolutionary Computation; 15;1; 5678831; 99; 119; 10.1109/TEVC.2010.2083670
20. Weber, M., Tirronen, V., Neri, F.; Scale factor inheritance mechanism in distributed differential evolution; 2010;Soft Computing; 14; 11; 1187; 1207; 10.1007/s00500-009-0510-5
21. Ellabaan, M.M.H., Ong, Y.S.; Valley-adaptive clearing scheme for multimodal optimization evolutionary search;2009; ISDA 2009 - 9th International Conference on Intelligent Systems Design and Applications; 5363222; 1; 6;10.1109/ISDA.2009.115
22. Weber, M., Neri, F., Tirronen, V.; Distributed differential evolution with explorative-exploitative populationfamilies; 2009; Genetic Programming and Evolvable Machines; 10; 4; 343; 371; 10.1007/s10710-009-9089-y
23. Qing, A.; Differential Evolution: Fundamentals and Applications in Electrical Engineering; 2009; DifferentialEvolution: Fundamentals and Applications in Electrical Engineering; 1; 418; 10.1002/978047082394129 of 43
24. Li, J., Mourelatos, Z.P.; Reliability estimation for time-dependent problems using a niching genetic algorithm;2008; 2007 Proceedings of the ASME International Design Engineering Technical Conferences and Computers andInformation in Engineering Conference, DETC2007; 6 PART B; 1119; 1133; 10.1115/DETC2007-34865
25. Li, J., Mourelatos, Z.P.; A time-dependent reliability analysis method using a niching genetic algorithm; 2007;SAE Technical Papers; ; 10.4271/2007-01-0548
30 of 43
Citari pentru D. Zaharie - Extensions of Differential Evolution Algorithms for Multimodal Optimization, in D.Petcu et.al (eds.), Proc. of SYNASC’04, 6th International Symposium of Symbolic and Numeric Algorithms forScientific Computing, Timisoara, september 26-30, pp. 523-534, 2004.
1. Guo, X., Wu, Y., Xie, L.; Modified brain storm optimization algorithm for multimodal optimization; 2014; LectureNotes in Computer Science ; 8795; 340; 351;
2. Gao, W., Yen, G.G., Liu, S.; A cluster-based differential evolution with self-adaptive strategy for multimodaloptimization; 2014; IEEE Transactions on Cybernetics; 44; 8; 6621004; 1314; 1327; 10.1109/TCYB.2013.2282491
3. Dasgupta, B., Divya, K., Mehta, V.K., Deb, K.; REPAMO: Recursive Perturbation Approach for MultimodalOptimization; 2013; Engineering Optimization; 45; 9; 1073; 1090; 10.1080/0305215X.2012.725050
4. Epitropakis, M.G., Li, X., Burke, E.K.; A dynamic archive niching differential evolution algorithm for mul-timodal optimization; 2013; 2013 IEEE Congress on Evolutionary Computation, CEC 2013; 6557556; 79; 86;10.1109/CEC.2013.6557556
5. Jamil, M., Zepernick, H.-J.; Multimodal function optimisation with cuckoo search algorithm; 2013; InternationalJournal of Bio-Inspired Computation; 5; 2; 73; 83; 10.1504/IJBIC.2013.053509
6. Qu, B., Liang, J., Suganthan, P.N., Chen, T.; Ensemble of clearing differential evolution for multi-modal optimiza-tion; 2012; Lecture Notes in Computer Science ; 7331 LNCS; PART 1; 350; 357; 10.1007/978-3-642-30976-2 42
7. Epitropakis, M.G., Plagianakos, V.P., Vrahatis, M.N.; Multimodal optimization using niching differential evolutionwith index-based neighborhoods; 2012; 2012 IEEE Congress on Evolutionary Computation, CEC 2012; 6256480;10.1109/CEC.2012.6256480
8. Gao, Y., Lv, D.; Principal coordinate strategy: A novel adaptive control strategy for differential evolution; 2012;GECCO’12 - Proceedings of the 14th International Conference on Genetic and Evolutionary Computation Com-panion; 573; 578; 10.1145/2330784.2330876
9. De Magalhes, C.S., Dos S. Barbosa, C.H., Almeida, D.M., Dardenne, L.E.; Improving differential evolution accu-racy for flexible ligand docking using a multi-solution strategy; 2012; Lecture Notes in Computer Science ; 7435LNCS; 688; 698; 10.1007/978-3-642-32639-4 82
10. Liang, J.J., Qu, B.Y., Ma, S.T., Suganthan, P.N.; Memetic fitness Euclidean-distance particle swarm optimizationfor multi-modal optimization; 2011; Lecture Notes in Computer Science ; 6840 LNBI; 378; 385; 10.1007/978-3-642-24553-4 50
11. Epitropakis, M.G., Plagianakos, V.P., Vrahatis, M.N.; Finding multiple global optima exploiting differential evo-lution’s niching capability; 2011; IEEE SSCI 2011 - Symposium Series on Computational Intelligence - SDE 2011:2011 IEEE Symposium on Differential Evolution; 5952058; 80; 87; 10.1109/SDE.2011.5952058
12. Dasa, S., Maity, S., Qu, B.-Y., Suganthan, P.N.; Real-parameter evolutionary multimodal optimization-A surveyof the state-of-the-art; 2011; Swarm and Evolutionary Computation; 1; 2; 71; 78; 10.1016/j.swevo.2011.05.005
13. Qu, B.Y., Suganthan, P.N.; Modified species-based differential evolution with self-adaptive radius for multi-modaloptimization; 2010; 2010 International Conference on Computational Problem-Solving, ICCP 2010; 5695999; 326;331;
14. Qu, B.-Y., Suganthan, P.N.; Novel multimodal problems and differential evolution with ensemble of restrictedtournament selection; 2010; 2010 IEEE World Congress on Computational Intelligence, WCCI 2010 - 2010 IEEECongress on Evolutionary Computation, CEC 2010; 5586341; 10.1109/CEC.2010.5586341
15. Qu, B.Y., Gouthanan, P., Suganthan, P.N.; Dynamic grouping crowding differential evolution with ensembleof parameters for multi-modal optimization; 2010; Lecture Notes in Computer Science ; 6466 LNCS; 19; 28;10.1007/978-3-642-17563-3 3
16. Qing, A.; Differential Evolution: Fundamentals and Applications in Electrical Engineering; 2009; DifferentialEvolution: Fundamentals and Applications in Electrical Engineering; 1; 418; 10.1002/9780470823941
17. Lung, R.I., Chira, C., Dumitrescu, D.; An agent-based collaborative evolutionary model for multimodal optimiza-tion; 2008; GECCO’08: Proceedings of the 10th Annual Conference on Genetic and Evolutionary Computation2008; 1969; 1975;
18. Lung, R.I., Dumitrescu, D.; A new evolutionary model for detecting multiple optima; 2007; Proceedings of GECCO2007: Genetic and Evolutionary Computation Conference; 1296; 1303; 10.1145/1276958.1277204
19. Li, X.; Efficient differential evolution using speciation for multimodal function optimization; 2005; GECCO 2005- Genetic and Evolutionary Computation Conference; 873; 880;
20. Stoean, C., Preuss, M., Gorunescu, R., Dumitrescu, D.; Elitist generational genetic chromodynamics - A newradii-based evolutionary algorithm for multimodal optimization; 2005; 2005 IEEE Congress on Evolutionary Com-putation, IEEE CEC 2005. Proceedings; 2; 1839; 1846;
21. Lacroix, B., Molina, D., Herrera, F.; Region-based memetic algorithm with archive for multimodal optimisation;2016; Information Sciences; 367-368; 719; 746; 10.1016/j.ins.2016.05.049
22. Jamil, M., Zepernick, H.-J., Yang, X.-S.; Multimodal function optimization using an improved bat algorithm innoise-free and noisy environments; 2017; Modeling and Optimization in Science and Technologies; 10; 29; 49;10.1007/978-3-319-50920-4 2 31 of 43
Citari pentru D. Zaharie, G. Ciobanu - Distributed Evolutionary Algorithms Inspired by Membranes in Con-tinuous Optimization Problems , in H.J. Hoogeboom, G. Paun, G. Rozenberg (eds), Pre-Proceedings of 7thWorkshop on Membrane Computing, Leiden, 17-21 iulie, pp. 522-537, 2006.
1. Maroosi, A., Muniyandi, R.C., Sundararajan, E., Zin, A.M.; A parallel membrane inspired harmony search for op-timization problems: A case study based on a flexible job shop scheduling problem; 2016; Applied Soft ComputingJournal; 49; 120; 136; 10.1016/j.asoc.2016.08.007
2. Niu, Y., Zhang, K., Wu, Y., Xiao, J.; Membrane-inspired evolutionary algorithms for finding the core nodesof large connected graphs; 2016; Journal of Computational and Theoretical Nanoscience; 13; 6; 3871; 3877;10.1166/jctn.2016.5221
3. Liu, C., Fan, L.; Evolutionary algorithm based on dynamical structure of membrane systems in uncertain environ-ments; 2016; International Journal of Biomathematics; 9; 2; 1650017; 10.1142/S1793524516500170
4. Cheng, F., Qin, L., Chen, Z., Peng, H.; A membrane computing inspired optimization algorithm for functionoptimization problem; 2015; ICIC Express Letters, Part B: Applications; 6; 10; 2709; 2714;
5. Zhang, G., Gheorghe, M., Pan, L., Prez-Jimnez, M.J.; Evolutionary membrane computing: A comprehensivesurvey and new results; 2014; Information Sciences; 279; 528; 551; 35; 10.1016/j.ins.2014.04.007
6. Han, M., Liu, C., Xing, J.; A multi-objective evolutionary algorithm based on membrane system theory; 2014;Zidonghua Xuebao/Acta Automatica Sinica; 40; 3; 431; 438; 1; 10.3724/SP.J.1004.2014.00431
7. Xiao, J., Huang, Y., Cheng, Z., He, J., Niu, Y.; A hybrid membrane evolutionary algorithm for solving constrainedoptimization problems; 2014; Optik; 125; 2; 897; 902; 16; 10.1016/j.ijleo.2013.08.032
8. Maroosi, A., Muniyandi, R.C., Sundararajan, E., Zin, A.M.; Parallel and distributed computing models on agraphics processing unit to accelerate simulation of membrane systems; 2014; Simulation Modelling Practice andTheory; 47; 60; 78; 5; 10.1016/j.simpat.2014.05.005
9. Niu, Y., He, J., Wang, Z., Xiao, J.; A P-based hybrid evolutionary algorithm for vehicle routing problem withtime windows; 2014; Mathematical Problems in Engineering; 2014; 169481; 1; 10.1155/2014/169481
10. Zhang, G., Cheng, J., Gheorghe, M., Meng, Q.; A hybrid approach based on differential evolution and tissuemembrane systems for solving constrained manufacturing parameter optimization problems; 2013; Applied SoftComputing Journal; 13; 3; 1528; 1542; 74; 10.1016/j.asoc.2012.05.032
11. Chen, H., Lu, J.; A constrained optimization evolutionary algorithm based on membrane computing; 2012; Journalof Digital Information Management; 10; 2; 121; 125; 1;
12. Xiao, J.H., Zhang, X.Y., Xu, J.; A membrane evolutionary algorithm for DNA sequence design in DNA computing;2012; Chinese Science Bulletin; 57; 6; 698; 706; 29; 10.1007/s11434-011-4928-7
13. Zhang, G., Gheorghe, M., Li, Y.; A membrane algorithm with quantum-inspired subalgorithms and its applicationto image processing; 2012; Natural Computing; 11; 4; A013; 701; 717; 29; 10.1007/s11047-012-9320-2
14. Zhong, L., Luo, W.; An improved membrane algorithm for solving time-consuming water quality retrieval; 2011;Proceedings of SPIE - The International Society for Optical Engineering; 8005; 800509; 1; 10.1117/12.901923
15. Cheng, J., Zhang, G., Zeng, X.; A novel membrane algorithm based on differential evolution for numerical opti-mization; 2011; International Journal of Unconventional Computing; 7; 3; 159; 183; 28;
16. Tudose, C., Lefticaru, R., Ipate, F.; Using genetic algorithms and model checking for P systems automatic design;2011; Studies in Computational Intelligence; 387; 285; 302; 6; 10.1007/978-3-642-24094-2 20
17. Chen, H.-Z., Lu, J.-Y., Wang, Y.-X.; An approximate algorithm based on membrane computing for travelingsalesman problems; 2011; Journal of Harbin Institute of Technology (New Series); 18; SUPPL. 1; 347; 354;
18. Zhang, G., Cheng, J., Gheorghe, M.; A membrane-inspired approximate algorithm for traveling salesman problems;2011; Romanian Journal of Information Science and Technology; 14; 1; 3; 19; 28;
19. Zhang, G., Li, Y., Gheorghe, M.; A multi-objective membrane algorithm for knapsack problems; 2010; Proceedings2010 IEEE 5th International Conference on Bio-Inspired Computing: Theories and Applications, BIC-TA 2010;5645194; 604; 609; 10; 10.1109/BICTA.2010.5645194
20. Zhang, G.-X., Liu, C.-X., Rong, H.-N.; Analyzing radar emitter signals with membrane algorithms; 2010; Mathe-matical and Computer Modelling; 52; 11.dec; 1997; 2010; 31; 10.1016/j.mcm.2010.06.002
21. Zhou, F., Zhang, G., Rong, H., Cheng, J., Gheorghe, M., Ipate, F., Lefticaru, R.; A particle swarm optimizationbased on P systems; 2010; Proceedings - 2010 6th International Conference on Natural Computation, ICNC 2010;6; 5582450; 3003; 3007; 15; 10.1109/ICNC.2010.5582450
22. Liu, C., Zhang, G., Zhang, X., Liu, H.; A memetic algorithm based on P systems for IIR digital filter design; 2009;8th IEEE International Symposium on Dependable, Autonomic and Secure Computing, DASC 2009; 5380567; 330;334; 11; 10.1109/DASC.2009.63
23. Zhang, G., Liu, C., Gheorghe, M., Ipate, F.; Solving satisfiability problems with membrane algorithms; 2009; BIC-TA 2009 - Proceedings, 2009 4th International Conference on Bio-Inspired Computing: Theories and Applications;5338159; 29; 36; 15; 10.1109/BICTA.2009.533815932 of 43
24. Weber, M., Neri, F., Tirronen, V.; Distributed differential evolution with explorative-exploitative populationfamilies; 2009; Genetic Programming and Evolvable Machines; 10; 4; 343; 371; 60; 10.1007/s10710-009-9089-y
25. Zhang, G.-X., Gheorghe, M., Wu, C.-Z.; A quantum-inspired evolutionary algorithm based on P systems forknapsack problem; 2008; Fundamenta Informaticae; 87; 1; 93; 116; 85;
26. Paun, G., Romero-Campero, F.J.; Membrane computing as a modeling framework. Cellular systems case studies;2008; Lecture Notes in Computer Science; 5016 LNCS; 168; 214; 5; 10.1007/978-3-540-68894-5 6
27. Paun, G.; A quick overview of membrane computing with some details about spiking neural P systems; 2007;Frontiers of Computer Science in China; 1; 1; 37; 49; 2; 10.1007/s11704-007-0005-4
28. Cheng, J., Zhang, G., Wang, T.; A membrane-inspired evolutionary algorithm based on population P sys-tems and differential evolution for multi-objective optimization; 2015; Journal of Computational and TheoreticalNanoscience; 12; 7; 1150; 1160; 2; 10.1166/jctn.2015.3866
29. Paun, G.; Membrane computing; 2012; Computational Complexity: Theory, Techniques, and Applications; 9,78146E+12;1851; 1862; 10.1007/978-1-4614-1800-9 120
33 of 43
Citari pentru D. Zaharie - A comparative analysis of crossover variants in differential evolution in M. Ganzha,M. Paprzycki, T. Pelech-Pilichowski (eds), Proc. of International Multiconference on Computer Science andInformation Technology IMCSIT 2007, 15-17 oct., Wisla, Poland, ISSN 1896-7094, pg. 171-181, 2007
1. Hu, Z., Su, Q., Yang, X., Xiong, Z.; Not guaranteeing convergence of differential evolution on a class of multimodalfunctions; 2016; Applied Soft Computing Journal; 41; 479; 487; 10.1016/j.asoc.2016.01.001
2. Singh, H., Srivastava, L.; Recurrent multi-objective differential evolution approach for reactive power management;2016; IET Generation, Transmission and Distribution; 10; 1; 192; 204; 10.1049/iet-gtd.2015.0648
3. Elsayed, S., Hamza, N., Sarker, R.; Testing united multi-operator evolutionary algorithms-II on single objectiveoptimization problems; 2016; 2016 IEEE Congress on Evolutionary Computation, CEC 2016; 7744164; 2966; 2973;10.1109/CEC.2016.7744164
4. Elsayed, S., Sarker, R., Coello, C.C.; Enhanced multi-operator differential evolution for constrained optimization;2016; 2016 IEEE Congress on Evolutionary Computation, CEC 2016; 7744322; 4191; 4198; 10.1109/CEC.2016.7744322
5. Chaves-Gonzlez, J.M., Prez-Toledano, M.A.; Differential evolution with Pareto tournament for the multi-objectivenext release problem; 2015; Applied Mathematics and Computation; 252; 1; 13; 10.1016/j.amc.2014.11.093
6. Gil, D., Roche, D., Borrs, A., Giraldo, J.; Terminating evolutionary algorithms at their steady state; 2015;Computational Optimization and Applications; 61; 2; 9722; 489; 515; 10.1007/s10589-014-9722-4
7. Thangavelu, S., Jeyakumar, G., Balakrishnan, R.M., Velayutham, C.S.; Theoretical analysis of expected populationvariance evolution for a differential evolution variant; 2015; Smart Innovation, Systems and Technologies; 32; 403;416; 10.1007/978-81-322-2208-8 37
8. Khaparde, A.R., Raghuwanshi, M.M., Malik, L.G.; Distance-based analysis for base vector selection in mutationoperation of differential evolution algorithm; 2015; Advances in Intelligent Systems and Computing; 335; 417; 430;10.1007/978-81-322-2217-0 36
9. Jiang, D., Li, L., Gong, J., Fan, Z.; Optimal trajectory searching based differential evolution; 2015; InternationalJournal of Wireless and Mobile Computing; 8; 4; 384; 393; 10.1504/IJWMC.2015.070944
10. Iliya, S., Goodyer, E., Shell, J., Gongora, M., Gow, J.; Optimized Neural Network using differential evolutionaryand swarm intelligence optimization algorithms for RF power prediction in cognitive radio network: A comparativestudy; 2015; IEEE International Conference on Adaptive Science and Technology, ICAST; 2015-January; 7068129;10.1109/ICASTECH.2014.7068129
11. Abbas, Q., Ahmad, J., Jabeen, H.; A Novel Tournament Selection Based Differential Evolution Variant for Contin-uous Optimization Problems; 2015; Mathematical Problems in Engineering; 2015; 205709; 10.1155/2015/205709
12. Luchian, H., Breaban, M.E.; On meta-heuristics in optimization and data analysis. Application to geosciences;2015; Artificial Intelligent Approaches in Petroleum Geosciences; 53; 100; 10.1007/978-3-319-16531-8 2
13. Cimino, M.G.C.A., Lazzeri, A., Vaglini, G.; Improving the analysis of context-aware information via marker-basedstigmergy and differential evolution; 2015; Lecture Notes in Artificial Intelligence (Subseries of Lecture Notes inComputer Science); 9120; 341; 352; 10.1007/978-3-319-19369-4 31
14. Moeed Amjad, A., Salam, Z.; A review of soft computing methods for harmonics elimination PWM for invert-ers in renewable energy conversion systems; 2014; Renewable and Sustainable Energy Reviews; 33; 141; 153;10.1016/j.rser.2014.01.080
15. Gong, W., Cai, Z., Wang, Y.; Repairing the crossover rate in adaptive differential evolution; 2014; Applied SoftComputing Journal; 15; 149; 168; 10.1016/j.asoc.2013.11.005
16. Chaves-Gonzlez, J.M., Vega-Rodrguez, M.A.; DNA strand generation for DNA computing by using a multi-objective differential evolution algorithm; 2014; BioSystems; 116; 1; 49; 64; 10.1016/j.biosystems.2013.12.005
17. Menezes, R.A., Nievola, J.C.; RCMDE-GMD: Predicting gene ontology terms using differential evolution; 2014;2014 11th International Conference on Fuzzy Systems and Knowledge Discovery, FSKD 2014; 6980888; 518; 524;10.1109/FSKD.2014.6980888
18. Iliya, S., Goodyer, E., Gongora, M., Shell, J., Gow, J.; Optimized artificial neural network using differential evolu-tion for prediction of RF power in VHF/UHF TV and GSM 900 bands for cognitive radio networks; 2014; 2014 14thUK Workshop on Computational Intelligence, UKCI 2014 - Proceedings; 6930183; 10.1109/UKCI.2014.6930183
19. Arafa, M., Sallam, E.A., Fahmy, M.M.; An enhanced differential evolution optimization algorithm; 2014; 2014 4thInternational Conference on Digital Information and Communication Technology and Its Applications, DICTAP2014; 6821685; 216; 225; 10.1109/DICTAP.2014.6821685
20. Menezes, R.A., Nievola, J.C.; Predicting the function of proteins using differential evolution; 2014; Proceedings ofthe 7th IADIS International Conference Information Systems 2014, IS 2014; 78; 86;
21. Vecek, N., Crepinek, M., Mernik, M., Hrncic, D.; A comparison between different chess rating systems for rankingevolutionary algorithms; 2014; 2014 Federated Conference on Computer Science and Information Systems, FedCSIS2014; 6933058; 511; 518; 10.15439/2014F33
22. Moravec, J., Pok, P.; A comparative study: The effect of the perturbation vector type in the differential evolutionalgorithm on the accuracy of robot pose and heading estimation; 2014; Evolutionary Intelligence; 6; 3; 171; 191;10.1007/s12065-013-0090-2
34 of 43
23. Mashwani, W.K.; Enhanced versions of differential evolution: State-of-the-art survey; 2014; International Journalof Computing Science and Mathematics; 5; 2; 107; 126; 10.1504/IJCSM.2014.064064
24. Yang, X.-S.; Nature-Inspired Optimization Algorithms; 2014; Nature-Inspired Optimization Algorithms; 1; 263;10.1016/C2013-0-01368-0
25. Zavoianu, A.-C., Lughofer, E., Amrhein, W., Klement, E.P.; Efficient Multi-Objective Optimization Using 2-Population Cooperative Coevolution; 2013; Lecture Notes in Computer Science (including subseries Lecture Notesin Artificial Intelligence and Lecture Notes in Bioinformatics); 8111 LNCS; PART 1; 251; 258; 10.1007/978-3-642-53856-8-32
26. Baltzis, K.B.; Patented applications of differential evolution in microwave and communication engineering; 2013;Recent Patents on Computer Science; 6; 2; 115; 128;
27. Hu, Z., Xiong, S., Su, Q., Zhang, X.; Sufficient conditions for global convergence of differential evolution algorithm;2013; Journal of Applied Mathematics; 2013; 193196; 10.1155/2013/193196
28. Tvrdk, J., Polkov, R., Veselsk, J., Bujok, P.; Adaptive Variants of Differential Evolution: Towards Control-Parameter-Free Optimizers; 2013; Intelligent Systems Reference Library; 38; 423; 449; 10.1007/978-3-642-30504-7 17
29. Polkov, R., Tvrdk, J.; A combined approach to adaptive differential evolution; 2013; Neural Network World; 23;1; 3; 15;
30. Polkov, R., Tvrdk, J.; Competitive differential evolution algorithm in comparison with other adaptive variants;2013; Advances in Intelligent Systems and Computing; 188 AISC; 133; 142; 10.1007/978-3-642-32922-7 14
31. Chaves-Gonzlez, J.M., Martnez-Gil, J.; Evolutionary algorithm based on different semantic similarity functions forsynonym recognition in the biomedical domain; 2013; Knowledge-Based Systems; 37; 62; 69; 10.1016/j.knosys.2012.07.005
32. Dragoi, E.-N., Curteanu, S., Galaction, A.-I., Cascaval, D.; Optimization methodology based on neural networksand self-adaptive differential evolution algorithm applied to an aerobic fermentation process; 2013; Applied SoftComputing Journal; 13; 1; 222; 238; 10.1016/j.asoc.2012.08.004
33. Lavanya, M., Revathi, R., Rajesh, J.S., Basha, S.I.M.; Efficiency enhancement of PV panel using soft computingbased seeker optimization algorithm and seven level inverter configuration; 2012; International Conference onIntelligent Systems Design and Applications, ISDA; 6416549; 269; 273; 10.1109/ISDA.2012.6416549
34. Tayal, D., Gupta, C., Jain, A.; A new crossover operator in Differential Evolution for numerical optimization;2012; Proceedings - 2012 International Conference on Communication, Information and Computing Technology,ICCICT 2012; 6398178; 10.1109/ICCICT.2012.6398178
35. Crocker, S.E., Miller, J.H., Potty, G.R., Osler, J.C., Hines, P.C.; Nonlinear inversion of acoustic scalar and vectorfield transfer functions; 2012; IEEE Journal of Oceanic Engineering; 37; 4; 6287028; 589; 606; 10.1109/JOE.2012.2206852
36. Kushida, J., Oba, K., Kamei, K.; An analysis of behavior of differential evolution based on characteristics inheri-tance; 2012; ICIC Express Letters; 6; 3; 581; 588;
37. Xu, K., Zhou, J., Zhang, Y., Gu, R.; Differential evolution based on ?-domination and orthogonal design method forpower environmentally-friendly dispatch; 2012; Expert Systems with Applications; 39; 4; 3956; 3963; 10.1016/j.eswa.2011.08.145
38. Baraldi, P., Zio, E., Di Maio, F., Pappaglione, L., Chevalier, R., Seraoui, R.; Differential evolution for optimalgrouping of condition monitoring signals of nuclear components; 2012; Advances in Safety, Reliability and RiskManagement - Proceedings of the European Safety and Reliability Conference, ESREL 2011; 410; 418;
39. Benala, T.R., Dehuri, S., Sirisetti, G.S.S.V., Pagadala, A.; Differential evolution for optimizing the hybrid filtercombination in image edge enhancement; 2011; Lecture Notes in Computer Science (including subseries LectureNotes in Artificial Intelligence and Lecture Notes in Bioinformatics); 7076 LNCS; PART 1; 35; 42; 10.1007/978-3-642-27172-4 5
40. Lin, C., Qing, A., Feng, Q.; A comparative study of crossover in differential evolution; 2011; Journal of Heuristics;17; 6; 675; 703; 10.1007/s10732-010-9151-1
41. Bardsiri, A.K., Rafsanjani, M.K.; Differential evolution algorithms for grid scheduling problem; 2011; InternationalJournal of Physical Sciences; 6; 24; 5682; 5687;
42. Dragoi, E.-N., Curteanu, S., Leon, F., Galaction, A.-I., Cascaval, D.; Modeling of oxygen mass transfer in thepresence of oxygen-vectors using neural networks developed by differential evolution algorithm; 2011; EngineeringApplications of Artificial Intelligence; 24; 7; 1214; 1226; 10.1016/j.engappai.2011.06.004
43. Polkov, R., Tvrdk, J.; Various mutation strategies in enhanced competitive differential evolution for constrainedoptimization; 2011; IEEE SSCI 2011 - Symposium Series on Computational Intelligence - SDE 2011: 2011 IEEESymposium on Differential Evolution; 5952070; 17; 24; 10.1109/SDE.2011.5952070
44. Tvrdk, J., K?iv, I.; Hybrid adaptive differential evolution in partitional clustering; 2011; Mendel; 1; 8;
45. Kushida, J.-I., Oba, K., Kamei, K.; Generation alternation model for reducing the number of fitness evaluationson differential evolution; 2010; ICIC Express Letters; 4; 6:00 AM; 2089; 2095;
46. Tvrdk, J., Polkov, R.; Competitive differential evolution for constrained problems; 2010; 2010 IEEE World Congresson Computational Intelligence, WCCI 2010 - 2010 IEEE Congress on Evolutionary Computation, CEC 2010;5586299; 10.1109/CEC.2010.5586299
35 of 43
47. Tvrdk, J., Polkov, R.; Enhanced competitive differential evolution for constrained optimization; 2010; Proceedingsof the International Multiconference on Computer Science and Information Technology, IMCSIT 2010; 5; 5680058;909; 915;
48. Salam, Z., Bahari, N.; Selective Harmonics Elimination PWM (SHE-PWM) using differential evolution approach;2010; 2010 Joint International Conference on Power Electronics, Drives and Energy Systems, PEDES 2010 and2010 Power India; 5712375; 10.1109/PEDES.2010.5712375
49. Bahari, N., Salam, Z., Taufik; Application of differential evolution to determine the HEPWM angles of a threephase voltage source inverter; 2010; IECON Proceedings (Industrial Electronics Conference); 5675130; 2683; 2688;10.1109/IECON.2010.5675130
50. Curteanu, S., Leon, F., Furtuna, R., Dragoi, E.N., Curteanu, N.; Comparison between different methods for devel-oping neural network topology applied to a complex polymerization process; 2010; Proceedings of the InternationalJoint Conference on Neural Networks; 5596592; 10.1109/IJCNN.2010.5596592
51. Abou El Ela, A.A., Abido, M.A., Spea, S.R.; Differential evolution algorithm for emission constrained economicpower dispatch problem; 2010; Electric Power Systems Research; 80; 10; 1286; 1292; 10.1016/j.epsr.2010.04.011
52. Abido, M.A.; Robust design of power system stabilizers for multimachine power systems using differential evolution;2010; Studies in Computational Intelligence; 302; 1; 18; 10.1007/978-3-642-14013-6 1
53. Abou El Ela, A.A., Abido, M.A., Spea, S.R.; Optimal power flow using differential evolution algorithm; 2010;Electric Power Systems Research; 80; 7; 878; 885; 10.1016/j.epsr.2009.12.018
54. Polkov, R.; A variant of competitive differential evolution algorithm with exponential crossover; 2010; NeuralNetwork World; 20; 1; 159; 169;
55. Tvrdk, J., K?iv, I.; Differential evolution in partitional clustering; 2010; Mendel; 7; 14;
56. Tvrdk, J.; A comparison of control-arameter-free algorithms for single-objective optimization; 2010; Mendel; 71;77;
57. Cervenka, M., Boudn, H.; Visual aid for better control parameter configuration of differential evolution; 2009;PACIIA 2009 - 2009 2nd Asia-Pacific Conference on Computational Intelligence and Industrial Applications; 1;5406393; 439; 442; 10.1109/PACIIA.2009.5406393
58. Tvrdk, J.; Adaptation in differential evolution: A numerical comparison; 2009; Applied Soft Computing Journal;9; 3; 1149; 1155; 10.1016/j.asoc.2009.02.010
59. Tvrdk, J.; Adaptive differential evolution and exponential crossover; 2008; Proceedings of the International Mul-ticonference on Computer Science and Information Technology, IMCSIT 2008; 3; 4747353; 927; 931; 10.1109/IM-CSIT.2008.4747353
60. Tvrdk, J.; Exponential crossover in competitive differential evolution; 2008; MENDEL 2008 - 14th InternationalConference on Soft Computing: Evolutionary Computation, Genetic Programming, Fuzzy Logic, Rough Sets,Neural Networks, Fractals, Bayesian Methods; 44; 49;
36 of 43
Citari pentru D. Zaharie - Influence of crossover on the behavior of the Differential Evolution Algorithm, AppliedSoft Computing, vol 9, issue 3, pg. 1126-1138, 2009.
1. Chai, R., Savvaris, A., Tsourdos, A., Chai, S.; Multi-objective trajectory optimization of Space Manoeuvre Ve-hicle using adaptive differential evolution and modified game theory; 2017; Acta Astronautica; 136; 273; 280;10.1016/j.actaastro.2017.02.023
2. Skanderova, L., Fabian, T.; Differential evolution dynamics analysis by complex networks; 2017; Soft Computing;21; 7; 1817; 1831; 10.1007/s00500-015-1883-2
3. Sakr, W.S., EL-Sehiemy, R.A., Azmy, A.M.; Adaptive differential evolution algorithm for efficient reactive powermanagement; 2017; Applied Soft Computing Journal; 53; 336; 351; 10.1016/j.asoc.2017.01.004
4. Costa, A., Fichera, S.; Economic statistical design of ARMA control chart through a Modified Fitness-based Self-Adaptive Differential Evolution; 2017; Computers and Industrial Engineering; 105; 174; 189; 10.1016/j.cie.2016.12.031
5. Huang, D., Xu, J.-X., Deng, X., Venkataramanan, V., Tuong Huynh, T.C.; Differential evolution based high-orderpeak filter design with application to compensation of contact-induced vibration in HDD servo systems; 2017;International Journal of Automation and Computing; 14; 1; 45; 56; 10.1007/s11633-016-1034-y
6. Piotrowski, A.P.; Review of Differential Evolution population size; 2017; Swarm and Evolutionary Computation;32; 1; 24; 10.1016/j.swevo.2016.05.003
7. Do, D.T.T., Lee, S., Lee, J.; A modified differential evolution algorithm for tensegrity structures; 2016; CompositeStructures; 158; 11; 19; 10.1016/j.compstruct.2016.08.039
8. Dragoi, E.-N., Curteanu, S., Cascaval, D., Galaction, A.-I.; Artificial Neural Network Modeling of Mixing Effi-ciency in a Split-Cylinder Gas-Lift Bioreactor for Yarrowia lipolytica Suspensions; 2016; Chemical EngineeringCommunications; 203; 12; 1600; 1608; 10.1080/00986445.2016.1206892
9. Lim, Z.Y., Ponnambalam, S.G., Izui, K.; Nature inspired algorithms to optimize robot workcell layouts; 2016;Applied Soft Computing Journal; 49; 570; 589; 10.1016/j.asoc.2016.08.048
10. Qiu, X., Xu, J., Tan, K.C.; Enhancing exploration in differential evolution via exponential recombination; 2016;2016 IEEE Congress on Evolutionary Computation, CEC 2016; 7744307; 4076; 4081; 10.1109/CEC.2016.7744307
11. Bujok, P., Tvrdik, J., Polakova, R.; Evaluating the performance of SHADE with competing strategies on CEC2014 single-parameter test suite; 2016; 2016 IEEE Congress on Evolutionary Computation, CEC 2016; 7748322;5002; 5009; 10.1109/CEC.2016.7748322
12. Polakova, R., Tvrdik, J., Bujok, P.; Evaluating the performance of L-SHADE with competing strategies onCEC2014 single parameter-operator test suite; 2016; 2016 IEEE Congress on Evolutionary Computation, CEC2016; 7743921; 1181; 1187; 10.1109/CEC.2016.7743921
13. Polakova, R., Tvrdik, J., Bujok, P.; L-SHADE with competing strategies applied to CEC2015 learning-based testsuite; 2016; 2016 IEEE Congress on Evolutionary Computation, CEC 2016; 7744403; 4790; 4796; 10.1109/CEC.2016.7744403
14. De Falco, I., Scafuri, U., Tarantino, E., Della Cioppa, A.; An asynchronous adaptive multi-population model fordistributed differential evolution; 2016; 2016 IEEE Congress on Evolutionary Computation, CEC 2016; 7748324;5010; 5017; 10.1109/CEC.2016.7748324
15. Banitalebi, A., Aziz, M.I.A., Aziz, Z.A.; A self-adaptive binary differential evolution algorithm for large scalebinary optimization problems; 2016; Information Sciences; 367-368; 487; 511; 10.1016/j.ins.2016.05.037
16. Park, S.-Y., Lee, J.-J.; Stochastic Opposition-Based Learning Using a Beta Distribution in Differential Evolution;2016; IEEE Transactions on Cybernetics; 46; 10; 7270303; 2184; 2194; 10.1109/TCYB.2015.2469722
17. Mesejo, P., Ibez, ?., Cordn, ?., Cagnoni, S.; A survey on image segmentation using metaheuristic-based de-formable models: State of the art and critical analysis; 2016; Applied Soft Computing Journal; 44; 1; 29;10.1016/j.asoc.2016.03.004
18. Zhou, Y., Yi, W., Gao, L., Li, X.; Analysis of mutation vectors selection mechanism in differential evolution; 2016;Applied Intelligence; 44; 4; 904; 912; 10.1007/s10489-015-0738-y
19. Tatsis, V.A., Parsopoulos, K.E.; Grid search for operator and parameter control in differential evolution; 2016;ACM International Conference Proceeding Series; 18-20-May-2016; a7; 10.1145/2903220.2903238
20. Zamuda, A., Hernandez Sosa, J.D., Adler, L.; Constrained differential evolution optimization for underwaterglider path planning in sub-mesoscale eddy sampling; 2016; Applied Soft Computing Journal; 42; 93; 118;10.1016/j.asoc.2016.01.038
21. Hu, Z., Su, Q., Yang, X., Xiong, Z.; Not guaranteeing convergence of differential evolution on a class of multimodalfunctions; 2016; Applied Soft Computing Journal; 41; 479; 487; 10.1016/j.asoc.2016.01.001
22. Qiu, X., Xu, J.-X., Tan, K.C., Abbass, H.A.; Adaptive Cross-Generation Differential Evolution Operators forMultiobjective Optimization; 2016; IEEE Transactions on Evolutionary Computation; 20; 2; 7138611; 232; 244;10.1109/TEVC.2015.2433672
23. Dragoi, E.-N., Dafinescu, V.; Parameter control and hybridization techniques in differential evolution: a survey;2016; Artificial Intelligence Review; 45; 4; 447; 470; 10.1007/s10462-015-9452-837 of 43
24. Goodfellow, R.C., Dimitrakopoulos, R.; Global optimization of open pit mining complexes with uncertainty; 2016;Applied Soft Computing Journal; 40; 292; 304; 10.1016/j.asoc.2015.11.038
25. Cremene, M., Suciu, M., Pallez, D., Dumitrescu, D.; Comparative analysis of multi-objective evolutionary algo-rithms for QoS-aware web service composition; 2016; Applied Soft Computing Journal; 39; 124; 139; 10.1016/j.asoc.2015.11.012
26. Wu, G., Mallipeddi, R., Suganthan, P.N., Wang, R., Chen, H.; Differential evolution with multi-population basedensemble of mutation strategies; 2016; Information Sciences; 329; 329; 345; 10.1016/j.ins.2015.09.009
27. Liu, J., Yin, X., Gu, X.; Differential evolution improved with adaptive control parameters and double mutationstrategies; 2016; Communications in Computer and Information Science; 643; 186; 198; 10.1007/978-981-10-2663-8 20
28. Bujok, P., Tvrdk, J., Polkov, R.; Differential evolution with exponential crossover revisited; 2016; Mendel; ; 17;24;
29. Vinoth Kumar, B., Karpagam, G.R.; Knowledge-based differential evolution approach to quantisation table gen-eration for the JPEG baseline algorithm; 2016; International Journal of Advanced Intelligence Paradigms; 8; 1;20; 41; 10.1504/IJAIP.2016.074776
30. Camps-Echevarria, L., Llanes-Santiago, O., de Campos Velho, H.F., da Silva Neto, A.J.; Diagnosing time-dependent incipient faults; 2016; Mathematical Modeling and Computational Intelligence in Engineering Ap-plications; ; 47; 62; 10.1007/978-3-319-38869-4 4
31. Nama, S., Saha, A.K., Ghosh, S.; A new ensemble algorithm of differential evolution and backtracking s algorithmwith adaptive control parameter for function optimization; 2016; International Journal of Industrial EngineeringComputations; 7; 2; 323; 338; 10.5267/j.ijiec.2015.9.003
32. Zavoianu, A.-C., Lughofer, E., Bramerdorfer, G., Amrhein, W., Klement, E.P.; DECMO2: a robust hybrid andadaptive multi-objective evolutionary algorithm; 2015; Soft Computing; 19; 12; 3551; 3569; 10.1007/s00500-014-1308-7
33. Mahdaviani, M., Kordestani, J.K., Rezvanian, A., Meybodi, M.R.; LADE: Learning automata based differentialevolution; 2015; International Journal on Artificial Intelligence Tools; 24; 6; 1550023; 10.1142/S0218213015500232
34. Zamuda, A., Brest, J.; Self-adaptive control parameters’ randomization frequency and propagations in differentialevolution; 2015; Swarm and Evolutionary Computation; 25; 72; 99; 10.1016/j.swevo.2015.10.007
35. Skanderova, L., Fabian, T., Zelinka, I.; Differential Evolution Enhanced by the Closeness Centrality: Initial Study;2015; Proceedings - 2015 International Conference on Intelligent Networking and Collaborative Systems, IEEEINCoS 2015; 7312095; 346; 353; 10.1109/INCoS.2015.65
36. Guo, J., Li, Z., Xie, W., Wang, H.; Dissipative differential evolution with self-adaptive control parameters; 2015;2015 IEEE Congress on Evolutionary Computation, CEC 2015 - Proceedings; 7257274; 3088; 3095; 10.1109/CEC.2015.7257274
37. Polakova, R., Tvrdik, J., Bujok, P.; Cooperation of optimization algorithms: A simple hierarchical model; 2015;2015 IEEE Congress on Evolutionary Computation, CEC 2015 - Proceedings; 7257005; 1046; 1052; 10.1109/CEC.2015.7257005
38. Tvrdik, J., Kiv, I.; Hybrid differential evolution algorithm for optimal clustering; 2015; Applied Soft ComputingJournal; 35; 502; 512; 10.1016/j.asoc.2015.06.032
39. Zheng, F., Zecchin, A.C., Simpson, A.R.; Investigating the run-time searching behavior of the differential evolutionalgorithm applied to water distribution system optimization; 2015; Environmental Modelling and Software; 69;292; 307; 10.1016/j.envsoft.2014.09.022
40. Mallipeddi, R., Lee, M.; An evolving surrogate model-based differential evolution algorithm; 2015; Applied SoftComputing Journal; 34; 770; 787; 10.1016/j.asoc.2015.06.010
41. Biswas, S., Kundu, S., Das, S.; Inducing Niching Behavior in Differential Evolution Through Local InformationSharing; 2015; IEEE Transactions on Evolutionary Computation; 19; 2; 6778013; 246; 263; 10.1109/TEVC.2014.2313659
42. Bujok, P., Tvrdk, J.; Adaptive differential evolution: SHADE with competing crossover strategies; 2015; LectureNotes in Artificial Intelligence (Subseries of Lecture Notes in Computer Science); 9119; 329; 339; 10.1007/978-3-319-19324-3 30
43. Raghu, R., Jeyakumar, G.; Empirical analysis on the population diversity of the sub-population in distributeddifferential evolution algorithm; 2015; International Journal of Control Theory and Applications; 8; 5; 1809; 1816;
44. Szlachcic, E., Klempous, R.; Differential evolution multi-objective optimisation for chemotherapy treatment plan-ning; 2015; Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence andLecture Notes in Bioinformatics); 9520; 471; 478; 10.1007/978-3-319-27340-2 59
45. Zamuda, A., Hernndez-Sosa, J.D.; Underwater glider path planning and population size reduction in differentialevolution; 2015; Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligenceand Lecture Notes in Bioinformatics); 9520; 853; 860; 10.1007/978-3-319-27340-2 104
46. Zakaria, M.Z., Jamaluddin, H., Ahmad, R., Harun, A., Hussin, R., Khalil, A.N.M., Naim, M.K.M., Annuar,A.F.; Perturbation parameters tuning of multi-objective optimization differential evolution and its application todynamic system modeling; 2015; Jurnal Teknologi; 75; 11; 77; 90; 10.11113/jt.v75.5335
47. Gayatri, R., Baskar, N.; Performance analysis of non-traditional algorithmic parameters in machining operation;2015; International Journal of Advanced Manufacturing Technology; 77; 01.apr; 443; 460; 10.1007/s00170-014-6452-9
38 of 43
48. Das, S., Ghosh, A., Mullick, S.S.; A switched parameter differential evolution for large scale global optimization ?simpler may be better; 2015; Advances in Intelligent Systems and Computing; 378; 103; 125; 10.1007/978-3-319-19824-8 9
49. Patel, N., Padhiyar, N.; Modified genetic algorithm using Box Complex method: Application to optimal controlproblems; 2015; Journal of Process Control; 26; 35; 50; 10.1016/j.jprocont.2015.01.001
50. Segura, C., Coello Coello, C.A., Hernndez-Daz, A.G.; Improving the vector generation strategy of DifferentialEvolution for large-scale optimization; 2015; Information Sciences; 323; 11623; 106; 129; 10.1016/j.ins.2015.06.029
51. Wang, L., Shen, J.-N., Wang, S.-Y., Deng, J.; Advances in co-evolutionary algorithms; 2015; Kongzhi yu Juece/Controland Decision; 30; 2; 193; 202; 10.13195/j.kzyjc.2014.0624
52. Cai, Y., Wang, J.; Differential evolution with hybrid linkage crossover; 2015; Information Sciences; 320; 244; 287;10.1016/j.ins.2015.05.026
53. Biswas, S., Kundu, S., Das, S.; An improved parent-centric mutation with normalized neighborhoods for inducingniching behavior in differential evolution; 2014; IEEE Transactions on Cybernetics; 44; 10; 6693743; 1726; 1737;10.1109/TCYB.2013.2292971
54. Liu, G., Xiong, C., Guo, Z.; Enhanced differential evolution using random-based sampling and neighborhoodmutation; 2014; Soft Computing; 19; 8; 2173; 2192; 10.1007/s00500-014-1399-1
55. Caraffini, F., Neri, F., Picinali, L.; An analysis on separability for Memetic Computing automatic design; 2014;Information Sciences; 265; 1; 22; 10.1016/j.ins.2013.12.044
56. Gong, W., Cai, Z., Wang, Y.; Repairing the crossover rate in adaptive differential evolution; 2014; Applied SoftComputing Journal; 15; 149; 168; 10.1016/j.asoc.2013.11.005
57. Hu, Z., Wang, H., He, J., Wang, H.; Improved control method for solar auto-tracking based on difference evolutionalgorithm; 2014; Taiyangneng Xuebao/Acta Energiae Solaris Sinica; 35; 6; 1016; 1021;
58. Xia, H., Wang, Z., Zhou, Y.; Double-population differential evolution based on logistic model; 2014; Journal ofInformation and Computational Science; 11; 15; 5549; 5557; 10.12733/jics20104712
59. Lin, F.-T.; Improving convergence speed of modified differential evolution on global optimization; 2014; ICICExpress Letters, Part B: Applications; 5; 5; 1489; 1496;
60. Yin, X., Ling, Z., Guan, L., Liang, F.; Minimum distance clustering algorithm based on an improved differentialevolution; 2014; International Journal of Sensor Networks; 15; 1; 1; 10; 10.1504/IJSNET.2014.059990
61. Jariyatantiwait, C., Yen, G.G.; Fuzzy multiobjective differential evolution using performance metrics feedback;2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014; 6900533; 1959; 1966;10.1109/CEC.2014.6900533
62. Bujok, P., Tvrdk, J., Polkov, R.; Differential evolution with rotation-invariant mutation and competing-strategiesadaptation; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014; 6900626;2253; 2258; 10.1109/CEC.2014.6900626
63. Polakova, R., Tvrdik, J., Bujok, P.; Controlled restart in differential evolution applied to CEC2014 benchmarkfunctions; 2014; Proceedings of the 2014 IEEE Congress on Evolutionary Computation, CEC 2014; 6900632; 2230;2236; 10.1109/CEC.2014.6900632
64. Zhou, X., Wu, Z., Wang, H., Rahnamayan, S.; Enhancing differential evolution with role assignment scheme; 2014;Soft Computing; 18; 11; 2209; 2225; 10.1007/s00500-013-1195-3
65. Tvrdik, J., Polakova, R.; Competitive-adaptive differential evolution with rotation-invariant strategies; 2014;Mendel; 2014-January; January; 59; 64;
66. Echevarria, L.C., Santiago, O.L., Silva Neto, A.J., De Campos Velho, H.F.; An approach to fault diagnosis usingmeta-heuristics: A new variant of the differential evolution algorithm; 2014; Computacion y Sistemas; 18; 1; 5; 17;10.13053.CyS-18-1-2014-015
67. Iacca, G., Neri, F., Caraffini, F., Suganthan, P.N.; A differential evolution framework with ensemble of parametersand strategies and pool of local search algorithms; 2014; Lecture Notes in Computer Science (including subseriesLecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics); 8602; 615; 626; 10.1007/978-3-662-45523-4 50
68. Tang, D., Cai, Y., Zhao, J., Xue, Y.; A quantum-behaved particle swarm optimization with memetic algo-rithm and memory for continuous non-linear large scale problems; 2014; Information Sciences; 289; 1; 162; 189;10.1016/j.ins.2014.08.030
69. Gonzalez-Alvarez, D.L., Vega-Rodrguez, M.A., Rubio-Largo, ?.; Parallelizing and optimizing a hybrid differentialevolution with Pareto tournaments for discovering motifs in DNA sequences; 2014; Journal of Supercomputing;70; 2; 880; 905; 10.1007/s11227-014-1266-y
70. Piotrowski, A.P.; Differential Evolution algorithms applied to Neural Network training suffer from stagnation;2014; Applied Soft Computing Journal; 21; 382; 406; 10.1016/j.asoc.2014.03.039
71. Zamuda, A., Hernndez Sosa, J.D.; Differential evolution and underwater glider path planning applied to the short-term opportunistic sampling of dynamic mesoscale ocean structures; 2014; Applied Soft Computing Journal; 24;95; 108; 10.1016/j.asoc.2014.06.048
39 of 43
72. Kundu, S., Das, S., Vasilakos, A.V., Biswas, S.; A modified differential evolution-based combined routing and sleepscheduling scheme for lifetime maximization of wireless sensor networks; 2014; Soft Computing; 19; 3; 637; 659;10.1007/s00500-014-1286-9
73. Yang, X.-S.; Nature-Inspired Optimization Algorithms; 2014; Nature-Inspired Optimization Algorithms; ; 1; 263;10.1016/C2013-0-01368-0
74. Caraffini, F., Neri, F., Passow, B.N., Iacca, G.; Re-sampled inheritance search: High performance despite thesimplicity; 2013; Soft Computing; 17; 12; 2235; 2256; 10.1007/s00500-013-1106-7
75. Baltzis, K.B.; Patented applications of differential evolution in microwave and communication engineering; 2013;Recent Patents on Computer Science; 6; 2; 115; 128;
76. Escalona-Vargas, D.I., Gutirrez, D., Lopez-Arevalo, I.; Performance of different metaheuristics in EEG source local-ization compared to the Cramr-Rao bound; 2013; Neurocomputing; 120; 597; 609; 10.1016/j.neucom.2013.04.010
77. Hu, Z., Xiong, S., Su, Q., Zhang, X.; Sufficient conditions for global convergence of differential evolution algorithm;2013; Journal of Applied Mathematics; 2013; 193196; 10.1155/2013/193196
78. Balkaya, C.; An implementation of differential evolution algorithm for inversion of geoelectrical data; 2013; Journalof Applied Geophysics; 98; 160; 175; 10.1016/j.jappgeo.2013.08.019
79. Tvrdik, J., Polakova, R., Veselski, J., Bujok, P.; Adaptive Variants of Differential Evolution: Towards Control-Parameter-Free Optimizers; 2013; Intelligent Systems Reference Library; 38; 423; 449; 10.1007/978-3-642-30504-7 17
80. Kalegari, D.H., Lopes, H.S.; An improved parallel differential evolution approach for protein structure predictionusing both 2D and 3D off-lattice models; 2013; Proceedings of the 2013 IEEE Symposium on Differential Evo-lution, SDE 2013 - 2013 IEEE Symposium Series on Computational Intelligence, SSCI 2013; 6601454; 143; 150;10.1109/SDE.2013.6601454
81. Deng, W., Yang, X., Zou, L., Wang, M., Liu, Y., Li, Y.; An improved self-adaptive differential evolution algorithmand its application; 2013; Chemometrics and Intelligent Laboratory Systems; 128; 66; 76; 10.1016/j.chemolab.2013.07.004
82. Mallipeddi, R.; Harmony search based parameter ensemble adaptation for differential evolution; 2013; Journal ofApplied Mathematics; 2013; 750819; 10.1155/2013/750819
83. Tvrdik, J., Polakova, R.; Competitive differential evolution applied to CEC 2013 problems; 2013; 2013 IEEECongress on Evolutionary Computation, CEC 2013; 6557759; 1651; 1657; 10.1109/CEC.2013.6557759
84. Zamuda, A., Brest, J., Mezura-Montes, E.; Structured Population Size Reduction Differential Evolution withMultiple Mutation Strategies on CEC 2013 real parameter optimization; 2013; 2013 IEEE Congress on EvolutionaryComputation, CEC 2013; 6557794; 1925; 1931; 10.1109/CEC.2013.6557794
85. Piotrowski, A.P.; Adaptive memetic differential evolution with global and local neighborhood-based mutationoperators; 2013; Information Sciences; 241; 164; 194; 10.1016/j.ins.2013.03.060
86. Yin, X., Ling, Z., Guan, L.; Low energy adaptive routing hierarchy based on differential evolution; 2013; Interna-tional Journal on Smart Sensing and Intelligent Systems; 6; 2; 523; 547;
87. Melzer, A., Pedross, A., Mcke, M.; Holistic biquadratic IIR filter design for communication systems using differ-ential evolution; 2013; Journal of Electrical and Computer Engineering; 741251; 10.1155/2013/741251
88. Onuki, R., Kitayama, S., Yamazaki, K., Arakawa, M.; Proposal of adaptive range differential evolution; 2013;Nihon Kikai Gakkai Ronbunshu, C Hen/Transactions of the Japan Society of Mechanical Engineers, Part C; 79;798; 429; 441; 10.1299/kikaic.79.429
89. Polakova, R., Tvrdk, J.; A combined approach to adaptive differential evolution; 2013; Neural Network World; 23;1; 3; 15;
90. Zhao, S.-Z., Suganthan, P.N.; Empirical investigations into the exponential crossover of differential evolutions;2013; Swarm and Evolutionary Computation; 9; 27; 36; 10.1016/j.swevo.2012.09.004
91. Caamao, P., Bellas, F., Becerra, J.A., Duro, R.J.; Evolutionary algorithm characterization in real parameteroptimization problems; 2013; Applied Soft Computing Journal; 13; 4; 1902; 1921; 10.1016/j.asoc.2013.01.002
92. Tvrdik, J., Bujok, P., Polakova, R.; A comparison of adaptive differential evolution algorithms on CEC 2013benchmark problems; 2013; Mendel; ; 123; 128;
93. Polakova, R., Tvrdik, J.; Competitive differential evolution algorithm in comparison with other adaptive variants;2013; Advances in Intelligent Systems and Computing; 188 AISC; 133; 142; 10.1007/978-3-642-32922-7 14
94. Zhou, Y., Li, X., Gao, L.; A differential evolution algorithm with intersect mutation operator; 2013; Applied SoftComputing Journal; 13; 1; 390; 401; 10.1016/j.asoc.2012.08.014
95. Xie, W., Yu, W., Zou, X.; Diversity-maintained differential evolution embedded with gradient-based local search;2013; Soft Computing; 17; 8; 1511; 1535; 10.1007/s00500-012-0962-x
96. Dragoi, E.-N., Curteanu, S., Galaction, A.-I., Cascaval, D.; Optimization methodology based on neural networksand self-adaptive differential evolution algorithm applied to an aerobic fermentation process; 2013; Applied SoftComputing Journal; 13; 1; 222; 238; 10.1016/j.asoc.2012.08.004
40 of 43
97. Dragoi, E.-N., Curteanu, S., Vlad, D.; Differential evolution applications in electromagnetics; 2012; EPE 2012 -Proceedings of the 2012 International Conference and Exposition on Electrical and Power Engineering; 6463801;636; 640; 10.1109/ICEPE.2012.6463801
98. Alguliev, R.M., Aliguliyev, R.M., Isazade, N.R.; DESAMC+DocSum: Differential evolution with self-adaptivemutation and crossover parameters for multi-document summarization; 2012; Knowledge-Based Systems; 36; 21;38; 10.1016/j.knosys.2012.05.017
99. Suganthan, P.N.; Differential evolution algorithm: Recent advances; 2012; Lecture Notes in Computer Science(including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics); 7505 LNCS; 30;46; 10.1007/978-3-642-33860-1 4
100. Sorsa, A., Koskenniemi, A., Leivisk, K.; Differential evolution in parameter identification fuel cell as an example;2012; ICINCO 2012 - Proceedings of the 9th International Conference on Informatics in Control, Automation andRobotics; 1; 40; 49;
101. Fajfar, I.; Selection strategies and random perturbations in differential evolution; 2012; 2012 IEEE Congress onEvolutionary Computation, CEC 2012; 6256446; 10.1109/CEC.2012.6256446
102. Mallipeddi, R., Lee, M.; Surrogate model assisted ensemble differential evolution algorithm; 2012; 2012 IEEECongress on Evolutionary Computation, CEC 2012; 6256479; 10.1109/CEC.2012.6256479
103. Dragoi, E.-N., Curteanu, S., Lisa, C.; A neuro-evolutive technique applied for predicting the liquid crystalline prop-erty of some organic compounds; 2012; Engineering Optimization; 44; 10; 1261; 1277; 10.1080/0305215X.2011.644546
104. Fajfar, I., Tuma, T., Puhan, J., Olencek, J., Burmen, A.; Towards smaller populations in differential evolution;2012; Informacije MIDEM; 42; 3; 152; 163;
105. Polakova, R., Tvrdik, J.; A comparison of two adaptation approaches in differential evolution; 2012; LectureNotes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes inBioinformatics); 7269 LNCS; 317; 324; 10.1007/978-3-642-29353-5 37
106. Weber, M., Neri, F.; Contiguous binomial crossover in differential evolution; 2012; Lecture Notes in ComputerScience (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics); 7269LNCS; 145; 153; 10.1007/978-3-642-29353-5 17
107. Bujok, P., Tvrdk, J.; Parallel migration model employing various adaptive variants of differential evolution; 2012;Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notesin Bioinformatics); 7269 LNCS; 39; 47; 10.1007/978-3-642-29353-5 5
108. Zamuda, A., Brest, J.; Population reduction differential evolution with multiple mutation strategies in real worldindustry challenges; 2012; Lecture Notes in Computer Science (including subseries Lecture Notes in ArtificialIntelligence and Lecture Notes in Bioinformatics); 7269 LNCS; 154; 161; 10.1007/978-3-642-29353-5 18
109. Tvrdk, J., Krivy, I.; Differential evolution with competing strategies applied to partitional clustering; 2012; LectureNotes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes inBioinformatics); 7269 LNCS; 136; 144; 10.1007/978-3-642-29353-5 16
110. Bujok, P., Tvrdik, J.; Parallel migration models applied to competitive differential evolution; 2012; Proceedings- 13th International Symposium on Symbolic and Numeric Algorithms for Scientific Computing, SYNASC 2011;6169596; 306; 312; 10.1109/SYNASC.2011.45
111. Dragoi, E.-N., Curteanu, S., Fissore, D.; Freeze-drying modeling and monitoring using a new neuro-evolutivetechnique; 2012; Chemical Engineering Science; 72; 195; 204; 10.1016/j.ces.2012.01.021
112. Bashiri, M., Vatankhah, H., Ghidary, S.S.; Hybrid adaptive differential evolution for mobile robot localization;2012; Intelligent Service Robotics; 5; 2; 99; 107; 10.1007/s11370-012-0106-2
113. Kushida, J., Oba, K., Kamei, K.; An analysis of behavior of differential evolution based on characteristics inheri-tance; 2012; ICIC Express Letters; 6; 3; 581; 588;
114. Ghosh, S., Das, S., Vasilakos, A.V., Suresh, K.; On convergence of differential evolution over a class of continuousfunctions with unique global optimum; 2012; IEEE Transactions on Systems, Man, and Cybernetics, Part B:Cybernetics; 42; 1; 5961644; 107; 124; 10.1109/TSMCB.2011.2160625
115. Coelho, L.D.S., Mariani, V.C., Leite, J.V.; Solution of Jiles-Atherton vector hysteresis parameters estimationby modified Differential Evolution approaches; 2012; Expert Systems with Applications; 39; 2; 2021; 2025;10.1016/j.eswa.2011.08.035
116. Liu, G., Li, Y., Nie, X., Zheng, H.; A novel clustering-based differential evolution with 2 multi-parent crossoversfor global optimization; 2012; Applied Soft Computing Journal; 12; 2; 663; 681; 10.1016/j.asoc.2011.09.020
117. Tvrdk, J., Polkov, R., Bujok, P.; A comparison of adaptive differential evolution variants for single-objectiveoptimization; 2012; Mendel; ; 132; 137;
118. Wang, L., He, J., Wu, D., Zeng, Y.-R.; A novel differential evolution algorithm for joint replenishment problemunder interdependence and its application; 2012; International Journal of Production Economics; 135; 1; 190; 198;10.1016/j.ijpe.2011.06.015
119. Sabat, S.L., Kumar, K.S., Rangababu, P.; Differential evolution algorithm for motion estimation; 2011; LectureNotes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes inBioinformatics); 7080 LNAI; 309; 316; 10.1007/978-3-642-25725-4 27
41 of 43
120. Fajfar, I., Puhan, J., Toma?i?, S., Burmen, A.; On selection in differential evolution [Izbor v diferencialni evoluciji];2011; Elektrotehniski Vestnik/Electrotechnical Review; 78; 5; 275; 280;
121. Zamuda, A., Brest, J., Boskovic, B., Zumer, V.; Differential evolution for parameterized procedural woody plantmodels reconstruction; 2011; Applied Soft Computing Journal; 11; 8; 4904; 4912; 10.1016/j.asoc.2011.06.009
122. Srdjevic, B., Srdjevic, Z.; Bi-criteria evolution strategy in estimating weights from the AHP ratio-scale matrices;2011; Applied Mathematics and Computation; 218; 4; 1254; 1266; 10.1016/j.amc.2011.06.006
123. Mallipeddi, R., Suganthan, P.N.; Ensemble differential evolution algorithm for CEC2011 problems; 2011; 2011IEEE Congress of Evolutionary Computation, CEC 2011; 5949801; 1557; 1564; 10.1109/CEC.2011.5949801
124. Montgomery, J., Randall, M., Lewis, A.; Differential evolution for RFID antenna design: A comparison withant colony optimisation; 2011; Genetic and Evolutionary Computation Conference, GECCO’11; ; 673; 680;10.1145/2001576.2001669
125. Arabas, J., Bartnik, ?., Opara, K.; DMEA - An algorithm that combines differential mutation with the fitnessproportionate selection; 2011; IEEE SSCI 2011 - Symposium Series on Computational Intelligence - SDE 2011:2011 IEEE Symposium on Differential Evolution; 5952057; 49; 56; 10.1109/SDE.2011.5952057
126. Polakova, R., Tvrdik, J.; Various mutation strategies in enhanced competitive differential evolution for constrainedoptimization; 2011; IEEE SSCI 2011 - Symposium Series on Computational Intelligence - SDE 2011: 2011 IEEESymposium on Differential Evolution; 5952070; 17; 24; 10.1109/SDE.2011.5952070
127. Chen, H., Fan, Y.-R., Deng, S.-G.; Adaptive differential evolution algorithm based on logistic model; 2011; Kongzhiyu Juece/Control and Decision; 26; 7; ;
128. Mallipeddi, R., Suganthan, P.N., Pan, Q.K., Tasgetiren, M.F.; Differential evolution algorithm with ensemble of pa-rameters and mutation strategies; 2011; Applied Soft Computing Journal; 11; 2; 1679; 1696; 10.1016/j.asoc.2010.04.024
129. Epitropakis, M.G., Tasoulis, D.K., Pavlidis, N.G., Plagianakos, V.P., Vrahatis, M.N.; Enhancing differential evo-lution utilizing proximity-based mutation operators; 2011; IEEE Transactions on Evolutionary Computation; 15;1; 5678831; 99; 119; 10.1109/TEVC.2010.2083670
130. Das, S., Suganthan, P.N.; Differential evolution: A survey of the state-of-the-art; 2011; IEEE Transactions onEvolutionary Computation; 15; 1; 5601760; 4; 31; 10.1109/TEVC.2010.2059031
131. Bujok, P., Tvrdk, J.; A comparison of various strategies in differential evolution; 2011; Mendel; ; 48; 55;
132. Tvrdk, J., K?iv?, I.; Hybrid adaptive differential evolution in partitional clustering; 2011; Mendel; ; 1; 8;
133. Kaya, M.; The effects of two new crossover operators on genetic algorithm performance; 2011; Applied SoftComputing Journal; 11; 1; 881; 890; 10.1016/j.asoc.2010.01.008
134. Patel, N., Padhiyar, N.; Alien genetic algorithm for exploration of search space; 2010; AIP Conference Proceedings;1298; 325; 330; 10.1063/1.3516325
135. Montgomery, J.; Crossover and the different faces of differential evolution searches; 2010; 2010 IEEE WorldCongress on Computational Intelligence, WCCI 2010 - 2010 IEEE Congress on Evolutionary Computation, CEC2010; 5586184; 10.1109/CEC.2010.5586184
136. Mallipeddi, R., Suganthan, P.N.; Differential evolution algorithm with ensemble of parameters and mutation andcrossover strategies; 2010; Lecture Notes in Computer Science (including subseries Lecture Notes in ArtificialIntelligence and Lecture Notes in Bioinformatics); 6466 LNCS; 71; 78; 10.1007/978-3-642-17563-3 9
137. Montgomery, J., Chen, S.; An analysis of the operation of differential evolution at high and low crossover rates;2010; 2010 IEEE World Congress on Computational Intelligence, WCCI 2010 - 2010 IEEE Congress on Evolution-ary Computation, CEC 2010; 5586128; 10.1109/CEC.2010.5586128
138. Tvrdk, J., Polakova, R.; Competitive differential evolution for constrained problems; 2010; 2010 IEEE WorldCongress on Computational Intelligence, WCCI 2010 - 2010 IEEE Congress on Evolutionary Computation, CEC2010; 5586299; 10.1109/CEC.2010.5586299
139. Tvrdk, J., Polakova, R.; Enhanced competitive differential evolution for constrained optimization; 2010; Proceed-ings of the International Multiconference on Computer Science and Information Technology, IMCSIT 2010; 5;5680058; 909; 915;
140. Kitayama, S., Arakawa, M., Yamazaki, K.; Proposal of discrete differential evolution; 2010; Nihon Kikai GakkaiRonbunshu, C Hen/Transactions of the Japan Society of Mechanical Engineers, Part C; 76; 772; 3828; 3836;
141. Kida, Y., Yata, N., Nagao, T.; An evolutionary algorithm for posture estimation of a three-dimensional object;2010; Proceedings of the SICE Annual Conference; 5602794; 1637; 1640;
142. Wei, Y., Yao, J.; Application on target localization based on adaptive particle swarm optimization algorithm; 2010;2010 6th International Conference on Wireless Communications, Networking and Mobile Computing, WiCOM2010; 5601373; 10.1109/WICOM.2010.5601373
143. Kitayama, S., Sakai, S., Arakawa, M., Yamazaki, K.; Differential evolution as the global optimization techniqueand its computing; 2010; Nihon Kikai Gakkai Ronbunshu, C Hen/Transactions of the Japan Society of MechanicalEngineers, Part C; 76; 771; 2819; 2828;
144. Neri, F., Mininno, E.; Memetic compact differential evolution for cartesian robot control; 2010; IEEE Computa-tional Intelligence Magazine; 5; 2; 5447943; 54; 65; 10.1109/MCI.2010.936305
42 of 43
145. Polakova, R.; A variant of competitive differential evolution algorithm with exponential crossover; 2010; NeuralNetwork World; 20; 1; 159; 169;
146. Tvrdk, J., Krivy, I.; Differential evolution in partitional clustering; 2010; Mendel; ; 7; 14;
147. Tvrdk, J.; A comparison of control-arameter-free algorithms for single-objective optimization; 2010; Mendel; ; 71;77;
148. Hajizadeh, Y., Christie, M., Demyanov, V.; Application of differential evolution as a new method for automatic his-tory matching; 2009; Society of Petroleum Engineers - Kuwait International Petroleum Conference and Exhibition,KIPCE 2009: Meeting Energy Demand for Long Term Economic Growth; ; 272; 284;
43 of 43