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Remote sensing of environment and disaster laboratory Institute of Industrial Science, the University of Tokyo, Japan
For further details, contact: Aya Fujikawa, Ce-506, 6-1, Komaba 4-chome, Meguro, Tokyo 153-8505 JAPAN (URL: http://wtlab.iis.u-tokyo.ac.jp/ E-mail: ayafuji@iis.u-tokyo.ac.jp)
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Reference�ű��Í�ľģŵ2000-2010`ĺ�ōŖōAĹĢħňŏōŮřŬ�KÃ-ĩĺØ`F)ěH�ö°�öĐ99ěPP259ě2011 ű*X£hľģŵH¥ŏōŮřŬĺ��®�ï®ě»ZKÜ4ÉÑqÉÑC714ěPP13-24ě2002 űB��ľģŵ2002`��ĺ���Òĺ?AĹŅňŏŲŮřŬ�KÃ-ĩĶŐŰŔŗŞŮŲŧ��ĺąġĹijġĴěH�ö°�öĐ84ěPP268ě2003 ű.Àĕĉľģŵ�ōŖōĹĢħň�´ù¯ŏōŮřŬĹŅň�KÃ-ĩĺÿ`ĺŞŭŰşĺð�ěI¥59(8)ěPP701-707ě2012 űBUCSELA, E. J. ,ET AT AL ŵA NEW STRATOSPHERIC AND TROPOSPHERIC NO2 RETRIEVAL ALGORITHM FOR NADIR-VIEWING SATELLITE INSTRUMENTS: APPLICATIONS TO OMIěATMOSPHERIC MEASUREMENT TECHNIQUES DISCUSSIONSě2013,ěVOL. 6 ISSUE 1,ěP1361 űCHARLES ICHOKU, ET AT ALŵA SPATIO-TEMPORAL APPROACH FOR GLOBAL VALIDATION AND ANALYSIS OF MODIS AEROSOL PRODUCTSěGEOPHYSICAL RESEARCH LETTERSěVOLUME 29ěISSUE 12ěPPMOD1-1–MOD1-4ě2002 űN. BENASA, ET AT ALŵVALIDATION OF MERIS/AATSR SYNERGY ALGORITHM FOR AEROSOL RETRIEVAL AGAINST GLOBALLY DISTRIBUTED AERONET OBSERVATIONS AND COMPARISON WITH MODIS AEROSOL PRODUCTěATMOSPHERIC RESEARCHěVOLUMES 132–133ěPP102-113ě2013
4.Conclusion űMODISĹĢħňAODĶANGĺ¡~�ŌěAERONETų?�ï®ŴŝŲŚĵêLĪı�ĸň���űCO2ěVOCų|Âk� )4¶Ŵĸķě�ÉÑĵsŋĸģIJıH¥¦�¶øŃßoĪıěH¥¼DěجÂUě¼Dí!ĺĎ�kĺ��ěò��űç�ï®ŝŲŚģņĺâ'û2�ĺĀxMńěw�í!&�ĺò�r¨ĺÊÓ�
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Reference�ŝ��Â�ĭĒš2000-2010\ĩ�ļŅļ?ĨđĖķľļŚŇŘ�Iº,ĘĩÊ\D(ĊF�æ¨�æÿ99ĊPP259Ċ2011 ŝ)U�cĭĒšF�ľļŚŇŘĩ��¦�ߦĊ²VIÎ3¾Åk¾ÅA614ĊPP13-24Ċ2002 ŝ@��ĭĒš2002\��ĩ���Æĩ=?ĨĴķľŞŚŇŘ�Iº,ĘĥĿŜŃņŌŚŞœ�|ĩõĐĨĢĐģĊF�æ¨�æÿ84ĊPP268Ċ2003 ŝ-·ĄøĭĒš�ļŅļĨđĖķ«é§ľļŚŇŘĨĴķ�Iº,Ęĩï\ĩŌřŜōĩà�ĊG�59(8)ĊPP701-707Ċ2012 ŝBUCSELA, E. J. ,ET AT AL šA NEW STRATOSPHERIC AND TROPOSPHERIC NO2 RETRIEVAL ALGORITHM FOR NADIR-VIEWING SATELLITE INSTRUMENTS: APPLICATIONS TO OMIĊATMOSPHERIC MEASUREMENT TECHNIQUES DISCUSSIONSĊ2013,ĊVOL. 6 ISSUE 1,ĊP1361 ŝCHARLES ICHOKU, ET AT ALšA SPATIO-TEMPORAL APPROACH FOR GLOBAL VALIDATION AND ANALYSIS OF MODIS AEROSOL PRODUCTSĊGEOPHYSICAL RESEARCH LETTERSĊVOLUME 29ĊISSUE 12ĊPPMOD1-1–MOD1-4Ċ2002 ŝN. BENASA, ET AT ALšVALIDATION OF MERIS/AATSR SYNERGY ALGORITHM FOR AEROSOL RETRIEVAL AGAINST GLOBALLY DISTRIBUTED AERONET OBSERVATIONS AND COMPARISON WITH MODIS AEROSOL PRODUCTĊATMOSPHERIC RESEARCHĊVOLUMES 132–133ĊPP102-113Ċ2013
4.Conclusion ŝMODISĨđĖķAODĥANGĩ�x�ĻĊAERONETş=�ߦŠŋŞňĤÚJęĠ�ħķ���ŝCO2ĊVOCşv¹f��(3ŠħĦĊ�¾ÅĤmĺħĒġĠF���èIJÑięĠĊF�³BĊʤ¹SĊ³BÝ ĩý�fĩ��Ċâ��ŝ×�ߦŋŞňĒĵĩÔ&ë1|ĩðrKijĊq�Ý %�ĩâ�l ĩ¿Ç�
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Reference�ŝ��Â�ĭĒš2000-2010\ĩ�ļŅļ?ĨđĖķľļŚŇŘ�Iº,ĘĩÊ\D(ĊF�æ¨�æÿ99ĊPP259Ċ2011 ŝ)U�cĭĒšF�ľļŚŇŘĩ��¦�ߦĊ²VIÎ3¾Åk¾ÅA614ĊPP13-24Ċ2002 ŝ@��ĭĒš2002\��ĩ���Æĩ=?ĨĴķľŞŚŇŘ�Iº,ĘĥĿŜŃņŌŚŞœ�|ĩõĐĨĢĐģĊF�æ¨�æÿ84ĊPP268Ċ2003 ŝ-·ĄøĭĒš�ļŅļĨđĖķ«é§ľļŚŇŘĨĴķ�Iº,Ęĩï\ĩŌřŜōĩà�ĊG�59(8)ĊPP701-707Ċ2012 ŝBUCSELA, E. J. ,ET AT AL šA NEW STRATOSPHERIC AND TROPOSPHERIC NO2 RETRIEVAL ALGORITHM FOR NADIR-VIEWING SATELLITE INSTRUMENTS: APPLICATIONS TO OMIĊATMOSPHERIC MEASUREMENT TECHNIQUES DISCUSSIONSĊ2013,ĊVOL. 6 ISSUE 1,ĊP1361 ŝCHARLES ICHOKU, ET AT ALšA SPATIO-TEMPORAL APPROACH FOR GLOBAL VALIDATION AND ANALYSIS OF MODIS AEROSOL PRODUCTSĊGEOPHYSICAL RESEARCH LETTERSĊVOLUME 29ĊISSUE 12ĊPPMOD1-1–MOD1-4Ċ2002 ŝN. BENASA, ET AT ALšVALIDATION OF MERIS/AATSR SYNERGY ALGORITHM FOR AEROSOL RETRIEVAL AGAINST GLOBALLY DISTRIBUTED AERONET OBSERVATIONS AND COMPARISON WITH MODIS AEROSOL PRODUCTĊATMOSPHERIC RESEARCHĊVOLUMES 132–133ĊPP102-113Ċ2013
4.Conclusion ŝMODISĨđĖķAODĥANGĩ�x�ĻĊAERONETş=�ߦŠŋŞňĤÚJęĠ�ħķ���ŝCO2ĊVOCşv¹f��(3ŠħĦĊ�¾ÅĤmĺħĒġĠF���èIJÑięĠĊF�³BĊʤ¹SĊ³BÝ ĩý�fĩ��Ċâ��ŝ×�ߦŋŞňĒĵĩÔ&ë1|ĩðrKijĊq�Ý %�ĩâ�l ĩ¿Ç�
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űÌ�Ãà� ÿ`ě*ŌJłĶĬň�ÁĺHć\ĵH¥¦�ĤHĥĸÌ�8ēĶĸIJĴġňĜH¥¦�Ļě�Ĕĺ¾�ÂUĶĶŃĹ½Īě¾��ăĹŅIJĴ.;Ķĸň¦�¶øŃF)ĪĴĥıĜ¹>ěجÂU�ĺ=ĝĹĢġĴŃě��Ķ5�ĠňġĻįʼn��ĺH¥¦�8ēĤùĨŇijijĠňĜ�űtæÃà� H¥ĻϪěv�ŌĂīĴ�ÒčÃĹF)ĬňıłěM³®MĵĻ®MTĤÛÞÃĹĈÝĩʼnĴĢņĭě+�ĹH¥¼DŌu{ĵĥĸġĜ �Ì�ÃětæÃà�ģņě3=Ĥ,õĪĴH¥¦�8ēĹ/ŇףgëĤĠŇěç�ï®Ō¿ġĴ�ºĹĢħňH¥¼DŌu{ĬňĨĶĤj(ĵĠňĜ�įĨĵěĞH¥¼Dĺu{ĹĢħň�Īġ1î)r¨ĺy�ğĶĞ?�©'Ķĺ¤üĹŅňć\ĺH¥¼Dĺò�ğŌ�ÉÑĺÄÃĶĬňĜ�
Reference�ű��Í�ľģŵ2000-2010`ĺ�ōŖōAĹĢħňŏōŮřŬ�KÃ-ĩĺØ`F)ěH�ö°�öĐ99ěPP259ě2011 ű*X£hľģŵH¥ŏōŮřŬĺ��®�ï®ě»ZKÜ4ÉÑqÉÑC714ěPP13-24ě2002 űB��ľģŵ2002`��ĺ���Òĺ?AĹŅňŏŲŮřŬ�KÃ-ĩĶŐŰŔŗŞŮŲŧ��ĺąġĹijġĴěH�ö°�öĐ84ěPP268ě2003 ű.Àĕĉľģŵ�ōŖōĹĢħň�´ù¯ŏōŮřŬĹŅň�KÃ-ĩĺÿ`ĺŞŭŰşĺð�ěI¥59(8)ěPP701-707ě2012 űBUCSELA, E. J. ,ET AT AL ŵA NEW STRATOSPHERIC AND TROPOSPHERIC NO2 RETRIEVAL ALGORITHM FOR NADIR-VIEWING SATELLITE INSTRUMENTS: APPLICATIONS TO OMIěATMOSPHERIC MEASUREMENT TECHNIQUES DISCUSSIONSě2013,ěVOL. 6 ISSUE 1,ěP1361 űCHARLES ICHOKU, ET AT ALŵA SPATIO-TEMPORAL APPROACH FOR GLOBAL VALIDATION AND ANALYSIS OF MODIS AEROSOL PRODUCTSěGEOPHYSICAL RESEARCH LETTERSěVOLUME 29ěISSUE 12ěPPMOD1-1–MOD1-4ě2002 űN. BENASA, ET AT ALŵVALIDATION OF MERIS/AATSR SYNERGY ALGORITHM FOR AEROSOL RETRIEVAL AGAINST GLOBALLY DISTRIBUTED AERONET OBSERVATIONS AND COMPARISON WITH MODIS AEROSOL PRODUCTěATMOSPHERIC RESEARCHěVOLUMES 132–133ěPP102-113ě2013
4.Conclusion űMODISĹĢħňAODĶANGĺ¡~�ŌěAERONETų?�ï®ŴŝŲŚĵêLĪı�ĸň���űCO2ěVOCų|Âk� )4¶Ŵĸķě�ÉÑĵsŋĸģIJıH¥¦�¶øŃßoĪıěH¥¼DěجÂUě¼Dí!ĺĎ�kĺ��ěò��űç�ï®ŝŲŚģņĺâ'û2�ĺĀxMńěw�í!&�ĺò�r¨ĺÊÓ�
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