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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: [email protected]) 1.Background ÿ`ěÁĺHć\ĵH¥¦ĤHĥĸÌ8ēĶĸIJĴĢŇě=ļĺúDéOŃ½īňıłě3=Ĥ,õĪĴH¥¦8ēĹ/ŇףgëĤĠňĜÉÑĵĻěŔŮŲŢŬĸH¥¼DŌu{ĬňıłĺĪġ1î)r¨Ōy ĬňĶĶŃĹěH¥¦¶øĶ?©'ĺĎŌĪěć\ĺH¥¼DŌòĬňĨĶŌÄÃĶĪıĜŏōŮřŬĺKÃ-ĩųAODŴĶěŐŰŔŗŞŮŲŧųANGŴĹÆÄĪě2001`~2010`ĺÁ60ć\ĺAODĶANGĺĎ ŌõĽıĜįĺÙěć\ĺH¥¼DŌěH¥¼Dl)pųRŴěH¥¼D9pųGŴěâµcĒpųBŴĺ3pĹðĪě3pįʼnİʼnĹRěGěBĺãĺpĶPiĩĮňĨĶĹŅŇěºĹĢħňH¥¦l)?AŌ& ÃĹ1î)ĬňĨĶĹp$ĪıĜ2004`~201310`čĵěĵĻGĺE%ěRĶBĺS6Ĥģňĸķěć\ĺH¥¼DF)Ōp)ĪĴMċÃĹņģĹĪıĜ¢Ĺ2004`~2012`ĹĢħňć\ĺGDPĶRpŌĪı ĶĨŊěÂUā=ĺGĦĺć\ĻěRĺĥĶGDPE%¸ĻĪĴġňěĄ=ĺGĦĺć\ĻěRĺS6ĶGDPE%¸ĤľĿ5Ĺ]ĪěĠňÐbć\ĤÂUĬňĶěH¥¼DĻ5ĺ#4ĵ9ĩʼnňĨĶĤņ ģĹĸIJıĜ¢ĹěçĹŅňï®Ĥ1áĵěÚñÃĸ´w¯ŝŲŚĤr1áĸNO2ĶŏōŮřŬĶĺ¤üģņěĂù¯wĺ#4ĤĖġNO2Ķěâ'û2ĶwŒŗí!ĶĺĎŌõĽıĶĨŊěě«ĹĢġĴ ěwŒŗí!"dĵNO2ĻS6ĹĠŇě*ĹĢġĴěâ'û2Ļ±EĪĴġňŃĺĺěNO2ĺ6ĹĻF)ĤèʼnĴġĸġĸķěwŒŗí!ĺ&ĶįĺÐbĤÊóĩʼnıĜ dĺôēĶĪĴěÉÑĵsŋĸģIJıCO2ěVOCĸķŃßoĪěH¥¼DěجÂUě¼Dí!ĺ3ijĺĎkŌěòĬňĨĶĤgëĵĠňĜQÃĹěH¥¼DŌï®ĬňçĻěH^ĸká6ĤìþŀʼnĴġňĜ3 =Ĥ,õĪıH¥¼Dĺòr¨ĺÊÓĤj(ĵĠŇěeņʼnıÈìĺ¼Dí!ļĺ©¿ĤWĊëĹĸňĜ ŝÁºÒ ï\Ċ)ĻHıĥěķ¸ĩFöXĤFēFĔħÁ7ĂĥħġģĐķċFĪĊăĩ µ¹SĥĥIJĨ¹´ęĊµóĨĴġģ-9ĥħķèIJD(ęģĔĠċ°<Ċʤ¹Sĩ; ČĨđĐģIJĊĥ4ďķĐĪĞĸĩF7ĂēéėĶĢĢďķċ ŝnÖºÒ FĪâĊp{ĻòĚģÆüºĨD(ěķĠıĊKª¦KĤĪ¦KRēÍкĨ÷ÏĘĸģđĵĜ Ċ*ĨF³BĻouĤĔħĐċ ÁºĊnÖºÒĒĵĊ2;ē+åęģF7ĂĨ.ĶÉİbÛēďĶĊ×ߦĻ¶Đģ± ĨđĖķF³BĻouěķėĥēe'Ĥďķċ ĞėĤĊčF³BĩouĨđĖķ}ęĐ0Þ(l ĩsĎĥč=¡&ĥĩìĨĴķöXĩF³ BĩâĎĻ¾Åĩ»ºĥěķċ Figure 1 ¾ Å ĩ ¢ ĸ ³BqÝ %ĩâ Èà NoxÝ ĊÔ&ë1| MODIS- AOD MODIS- ANG OMI-NO2 «/Ô¬º şRGBŒŊőŠ j Ā È à ì öXĩGDPC$¯ F³Bĥʤ ĩýf Figure 2 2001\ Ţ 2010\ ĩ ¸ 60ö X ĩ { Y : 3.Result 5.Future works Reference ŝÂĭĒš2000-2010\ĩļŅļ?ĨđĖķľļŚŇŘIº,ĘĩÊ\D(ĊFæ¨æÿ99ĊPP259Ċ2011 ŝ)UcĭĒšFľļŚŇŘĩ¦ß¦Ċ²VIÎ3¾Åk¾ÅA614ĊPP13-24Ċ2002 ŝ@ĭĒš2002\ĩÆĩ=?ĨĴķľŞŚŇŘIº,ĘĥĿŜŃņŌŚŞœ|ĩõĐĨĢĐģĊFæ¨æÿ84ĊPP268Ċ 2003 ŝ-·ĄøĭĒšļŅļĨđĖķ«é§ľļŚŇŘĨĴķIº,Ęĩï\ĩŌřŜōĩàĊG59(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 ŝMODISĨđĖķAODĥANGĩxĻĊ AERONETş=ߦŠŋŞňĤÚJęĠħķ ŝCO2ĊVOCşv¹f(3ŠħĦĊ¾ÅĤ mĺħĒġĠFèIJÑięĠĊF³B Ċʤ¹SĊ³BÝĩýfĩĊâ ŝ×ߦŋŞňĒĵĩÔ&ë1|ĩðrKij ĊqÝ%ĩâl ĩ¿Ç ANG AOD y = -0.0977x + 5.8995 y = 0.0282x - 1.7029 y = -0.2049x + 12.375 -100 -50 0 50 100 2004/01- 2004/04- 2004/07- 2004/10- 2005/01- 2005/04- 2005/07- 2005/10- 2006/01- 2006/04- 2006/07- 2006/10- 2007/01- 2007/04- 2007/07- 2007/10- 2008/01- 2008/04- 2008/07- 2008/10- 2009/01- 2009/04- 2009/07- 2009/10- 2010/01- 2010/04- 2010/07- 2010/10- 2011/01- 2011/04- 2011/07- 2011/10- 2012/01- 2012/04- 2012/07- 2012/10- 2013/01- 2013/04- 2013/07- R-!R G-!G B-!B Linear (R- !R) Linear (G- !G) Figure 4 Ĩ đ Ė ķ RGBj Ê \ D ( (LAT:35°45N,LON:139°39E) Tokyo Jakarta Seoul New Deli Shanghai Manila Karachi NewYork SaoPaulo Mexico City Beijing Guangzou Mumbai Osaka Moscow Cairo Los Kolkata Bangkok Dhaka Buenos Aires Tehran Istanbul Lagos Rio Paris Nagoya London Lima 0.000 1.000 2.000 3.000 4.000 5.000 6.000 7.000 -0.5 -0.4 -0.3 -0.2 -0.1 0 0.1 0.2 0.3 öXĩGDPC$¯ş%/¹Sñ;ć]ĕ{ ô;ćĒkĨÿ RşF³Bg(jŠ ĩD(ú OMI-NO2ŋŞň 0 0.1 0.2 0.3 0.4 0.5 0.6 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010 2011 2012 2013 ļŔŗŀ EURO ; ) NOx(g/km) Ĉ2004\10ߦûH EU ÝûH ;ş)Š ÝûH ; ş)ĻþĕŠ ÝûH y = -23.763x + 8514.9 y = -74.583x + 30241 y = -12.767x + 7446.9 0 5000 10000 15000 20000 25000 30000 35000 2004/10- 2004/12- 2005/02- 2005/04- 2005/06- 2005/08- 2005/10- 2005/12- 2006/02- 2006/04- 2006/06- 2006/08- 2006/10- 2006/12- 2007/02- 2007/04- 2007/06- 2007/08- 2007/10- 2007/12- 2008/02- 2008/04- 2008/06- 2008/08- 2008/10- 2008/12- 2009/02- 2009/04- 2009/06- 2009/08- 2009/10- 2009/12- 2010/02- 2010/04- 2010/06- 2010/08- 2010/10- 2010/12- 2011/02- 2011/04- 2011/06- 2011/08- 2011/10- 2011/12- 2012/02- 2012/04- 2012/06- 2012/08- 2012/10- 2012/12- 2013/02- 2013/04- 2013/06- 2013/08- 2013/10- 2013/12- Mg/m^2 Ş F Ş [> Ş P 30,241 21,962 3%/\¥Q ŝľļŚŇŘĩ®hĻÕĨDtěķėĥĤĊF³BĻ% ºĨ0Þ(ěķėĥĨj#ęĠ ŝöXĩF³BD(Ļj(ęģĊKúºĨĵĒĨ ęĠ ŝ¹Sñ;ĩöXĪʤ¹SĥF³Bg(jĩ ýĪ{ęģĐķ~Ċô;ĩöXĪʤ¹Sĥ F³Bg(jĩ¥Q"3ēĭĮ4ĤďķėĥĻ ÀęĠ ŝÔ&ë1|ĥ³BÝĩ%ĥĞĩÄ^ĻĊ× ß¦Ĥ¿ãĤĔĠ Figure8 ĩ 2004\ 10 Ţ 2013\ 12 ĩ NO2ş à ^ 30kmŠ Ê\D( F³BD(ĥöXĩ¹S^Ļì 2004\1Ţ2013\9įĤĩAODŝ ANG[>ĻRGBĨDt Ĉ 10\ĩ2RGB[>Ēĵĩ WĻőŚŊŌ ďķÄ^öXē¹SěķĥĊ F³BD(ĥöXĩ¹S ^ĪKĨħķ Figure5 F ³ B g ( j ĩ D ( ú ĥ ö X ĩ GDPC $ ¯ ĩ { Y : Figure6 Ø ; Ĩ đ Ė ķ ï \ ĩ Ô & ë NOxÝ ® y = -23.763x + 8514.9 y = -25.973x + 27007 y = -13.64x + 5558.7 0 5000 10000 15000 20000 25000 30000 35000 Mg/m^2 y = -23.763x + 8514.9 y = -74.777x + 25461 y = 4.9247x + 6190.9 0 5000 10000 15000 20000 25000 30000 35000 2008/01- 2008/03- 2008/05- 2008/07- 2008/09- 2008/11- 2009/01- 2009/03- 2009/05- 2009/07- 2009/09- 2009/11- 2010/01- 2010/03- 2010/05- 2010/07- 2010/09- 2010/11- 2011/01- 2011/03- 2011/05- 2011/07- 2011/09- 2011/11- 2012/01- 2012/03- 2012/05- 2012/07- 2012/09- 2012/11- 2013/01- 2013/03- 2013/05- 2013/07- 2013/09- 2013/11- 1%/\¥Q 27,007 25,994 25,461 20,077 y = -66.692x + 10213 y = -33.447x + 29115 y = 41.582x + 6543.2 0 5000 10000 15000 20000 25000 30000 35000 Mg/m^2 y = -28.203x + 7268.6 y = 14.206x + 26995 y = 1.6521x + 6740.6 0 5000 10000 15000 20000 25000 30000 35000 2008/01- 2008/03- 2008/05- 2008/07- 2008/09- 2008/11- 2009/01- 2009/03- 2009/05- 2009/07- 2009/09- 2009/11- 2010/01- 2010/03- 2010/05- 2010/07- 2010/09- 2010/11- 2011/01- 2011/03- 2011/05- 2011/07- 2011/09- 2011/11- 2012/01- 2012/03- 2012/05- 2012/07- 2012/09- 2012/11- 2013/01- 2013/03- 2013/05- 2013/07- 2013/09- 2013/11- 1%/\¥Q 0.6%/\C$ 29,115 27,810 26,99 5 28,017 !"#$%"" %'(!""" ))#*)"" '**(("" (()+'"" ('"**"" +"%($"" !)!'+"" %$+#$#% %%(#"*# " +"""""" %"""""" $"""""" '"""""" (""""""" +""% +"") +""$ +""# +""' +""* +"(" +"(( +"(+ 北京 上海 東京 1| Figure7 ŝ £ ŝ ) ĩ ï \ ĩ Ô & ë 1 | ĩ r à Figure9 £ ĩ 2004\ 10 Ţ 2013\ 12 ĩ NO2ş à ^ 30kmŠ Figure10 ) ĩ 2004\ 10 Ţ 2013\ 12 ĩ NO2ş à ^ 30kmŠ ç í ¾ÅĪĊGreen Network of Excellence – Environmental Information (Grene – ei)ĩywĻ/ĖģLĘĸĠ Figure 3 RGBŒ Ŋ ő (2013/09 average10km!10km size of data) 0 0.5 1 1.5 2 0 0.4 0.8 1.2 1.6 2 ANG AOD F=?ĩ0Þ( ) £ ʼnŊŀ ŎŕŞŋŗŞ œŜŏĽ ŚŜōŜ Őŗ ŚŞŒ ŎŕŞŖŞł śńŜŌŜD.C. 2.Methodology 1.Background

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Page 1: 9 ' HH¥¼D : 6ò

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: [email protected])

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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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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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