stochastic decision making for adaptive crowd sourcing in medical big-data platforms

1
Ph: +91 9573777164 http://www.mtechprojects.com MTECH PROJECTS 2015 - 2016 : JAVA PROJECTS DSP PROJECTS POWER SYSTEMS PROJECTS DOT NET PROJECTS DIP PROJECTS POWER ELECTRONICS PROJECTS NS2 PROJECTS VLSI PROJECTS MATLAB SIMULATION PROJECTS ANDROID PROJECTS VHDL PROJECTS ENERGY SOURCES PROJECTS CLOUD SIM PROJECTS VERILOG PROJECTS RELIABILITY PROJECTS CLOUD COMPUTING PROJECTS EMBEDDED PROJECTS PSCAD PROJECTS WIRELESS NETWORK PROJECTS ROBOTIC PROJECTS MECHANICAL PROJECTS MOBILE COMPUTING PROJECTS CADENCE PROJECTS CHEMICAL PROJECTS Ph: +91 9573777164 www.mtechprojects.com Stochastic Decision Making for Adaptive Crowd sourcing in Medical Big-Data Platforms ABSTRACT This paper proposes two novel algorithms for adaptive crowdsourcing in 60-GHz medical imaging big- data platforms, namely, a max-weight scheduling algorithm for medical cloud platforms and a stochastic decision-making algorithm for distributed power-and-latency-aware dynamic buffer management in medical devices. In the first algorithm, medical cloud platforms perform a joint queue-backlog and rate- aware scheduling decisions for matching deployed access points (APs) and medical users where APs are eventually connected to medical clouds. In the second algorithm, each scheduled medical device computes the amounts of power allocation to upload its own medical data to medical big-data clouds with stochastic decision making considering joint energy-efficiency and buffer stability optimization. Through extensive simulations, the proposed algorithms are shown to achieve the desired results.

Upload: mtechprojects

Post on 14-Feb-2016

10 views

Category:

Documents


2 download

DESCRIPTION

Stochastic Decision Making for Adaptive Crowd Sourcing in Medical Big-Data Platforms

TRANSCRIPT

Page 1: Stochastic Decision Making for Adaptive Crowd Sourcing in Medical Big-Data Platforms

Ph: +91 9573777164 http://www.mtechprojects.com

MTECH PROJECTS 2015 - 2016:

JAVA PROJECTS DSP PROJECTS POWER SYSTEMS PROJECTS DOT NET PROJECTS DIP PROJECTS POWER ELECTRONICS PROJECTS NS2 PROJECTS VLSI PROJECTS MATLAB SIMULATION PROJECTS ANDROID PROJECTS VHDL PROJECTS ENERGY SOURCES PROJECTS CLOUD SIM PROJECTS VERILOG PROJECTS RELIABILITY PROJECTS CLOUD COMPUTING PROJECTS EMBEDDED PROJECTS PSCAD PROJECTS WIRELESS NETWORK PROJECTS ROBOTIC PROJECTS MECHANICAL PROJECTS MOBILE COMPUTING PROJECTS CADENCE PROJECTS CHEMICAL PROJECTS

Ph: +91 9573777164 www.mtechprojects.com

Stochastic Decision Making for Adaptive Crowd sourcing in Medical Big-Data Platforms

ABSTRACT

This paper proposes two novel algorithms for adaptive crowdsourcing in 60-GHz medical imaging big-data platforms, namely, a max-weight scheduling algorithm for medical cloud platforms and a stochastic decision-making algorithm for distributed power-and-latency-aware dynamic buffer management in medical devices. In the first algorithm, medical cloud platforms perform a joint queue-backlog and rate-aware scheduling decisions for matching deployed access points (APs) and medical users where APs are eventually connected to medical clouds. In the second algorithm, each scheduled medical device computes the amounts of power allocation to upload its own medical data to medical big-data clouds with stochastic decision making considering joint energy-efficiency and buffer stability optimization. Through extensive simulations, the proposed algorithms are shown to achieve the desired results.