Comparison of MODIS- and CALIPSO-Derived Temporal Aerosol Optical Depth over Yellow River Basin (China) from 2007 to 2015

Springer Science and Business Media LLC - Tập 4 - Trang 535-550 - 2020
Ziyue Zhang1, Miao Zhang1, Muhammad Bilal2, Bo Su1, Chun Zhang1, Liuna Guo1
1School of Environmental Science and Tourism, Nanyang Normal University, Nanyang, China
2School of Marine Sciences, Nanjing University of Information Science and Technology, Nanjing, China

Tóm tắt

In this study, Collection 6.1 (C6.1) of different aerosol optical depth (AOD) products of different spatial resolutions were used from the aqua moderate resolution imaging spectroradiometer (MODIS) including dark target (DT), deep blue (DB), deep blue (DB), and DT-DB (DTB). These products were compared with cloud-aerosol lidar, and infrared pathfinder satellite observation (CALIPSO) AOD retrievals over the Yellow River Basin (YERB), China from 2003 to 2017. The YERB was divided into three sub-regions, namely YERB1 (the mountainous terrain in the upper reaches of the YERB), YERB2 (the Loess Plateau region in the middle reaches of the YERB), and YERB3 (the plain region downstream of the YERB). Errors and agreement between MODIS and CALIPSO data were reported using Pearson’s correlation (R) and relative mean bias (RMB). Results showed that the CALIPSO whole layers AOD (AODS) were better matched with MODIS AOD than the CALIPSO lowest layer AOD (AOD1). The time series of AOD shows higher values in spring and summer, and a small difference in AOD products was observed in autumn. The overall average value of CALIPSO AOD and MODIS AOD both fitted the order: YERB3 > YERB2 > YERB1. The CALIPSO AOD retrievals have the best consistency with the DTB10K and the lowest consistency with DT3K. Overall, the regional distributions of the CALIPSO AOD and MODIS AOD are significantly different over the YERB, and the difference is closely related to the season, region, and topography. This study can help researchers understand the difference of aerosol temporal and spatial distribution utilizing different satellite products over YERB, and also can provide data and technical support for the government in atmospheric environmental governance over YERB.

Tài liệu tham khảo

Ali MA, Assiri M (2019) Analysis of AOD from MODIS-merged DT–DB products over the Arabian Peninsula. Earth Syst Environ 3(3):625–636 Ali MA, Islam MM, Islam MN, Almazroui M (2019) Investigations of MODIS AOD and cloud properties with CERES sensor based net cloud radiative effect and a NOAA HYSPLIT Model over Bangladesh for the period 2001–2016. Atmos Res 215:268–283 Ali MA et al (2020) Classification of aerosols over Saudi Arabia from 2004–2016. Atmos Environ 241:117785 Bilal M, Nichol JE, Bleiweiss MP, Dubois D, Rse J (2013) A Simplified high resolution MODIS aerosol retrieval algorithm (SARA) for use over mixed surfaces. Remote Sens Environ 136:135–145 Bilal M, Nichol JE, Chan PW (2014) Validation and accuracy assessment of a simplified aerosol retrieval algorithm (SARA) over Beijing under low and high aerosol loadings and dust storms. Remote Sens Environ 153:50–60 Bilal M, Qiu Z, Campbell JR, Scott S, Shen J, Nazeer M (2018) A New MODIS C6 dark target and deep blue merged aerosol product on a 3 km spatial grid. Remote Sens 10:463 Bilal M et al (2019) Evaluation of Terra-MODIS C6 and C6.1 aerosol products against Beijing, XiangHe, and Xinglong AERONET Sites in China during 2004–2014. Remote Sens 11:486 Butt EW et al (2016) The impact of residential combustion emissions on atmospheric aerosol, human health, and climate. Atmos Chem Phys 16:873–905 Che H et al (2013) Column aerosol optical properties and aerosol radiative forcing during a serious haze-fog month over North China Plain in 2013 based on ground-based sunphotometer measurements. Atmos Chem Phys 14:2125–2138 Che H et al (2014) Column aerosol optical properties and aerosol radiative forcing during a serious haze-fog month over North China plain in 2013 based on ground-based sunphotometer measurements. Atmos Chem Phys 14:2125–2138 Che H et al (2015) Ground-based aerosol climatology of China: aerosol optical depths from the China aerosol remote sensing network (CARSNET) 2002–2013. Atmos Chem Phys 15:7619–7652 Chen W, Fan A, Yan L (2017) Performance of MODIS C6 aerosol product during frequent haze-fog events: a case study of Beijing. Remote Sens 9:496 Deng X et al (2008) Effects of Southeast Asia biomass burning on aerosols and ozone concentrations over the Pearl River Delta (PRD) region. Atmos Environ 42:8493–8501 Development IPoCCWGIJE (2014) Climate change 2014: mitigation of climate change. Chapter 8: transport: final draft Dubovik O, Smirnov A, Holben BN, King MD, Kaufman YJ, Eck TF, Slutsker I (2012) Accuracy assessments of aerosol optical properties retrieved from aerosol robotic network (AERONET) Sun and sky radiance measurements. J Geophys Res Atmos 105:9791–9806 Edenhofer O, Seyboth K (2013) Intergovernmental panel on climate change (IPCC) Gong W, Zhang M, Han G, Ma X, Zhu Z (2015) An investigation of aerosol scattering and absorption properties in Wuhan, Central China. Atmosphere 6:503–520 Gupta P, Levy RC, Mattoo S, Remer LA, Munchak LA (2016) A surface reflectance scheme for retrieving aerosol optical depth over urban surfaces in MODIS dark target retrieval algorithm. Atmos Meas Tech 9:3293–3308 Han G, Xu H, Wei G, Liu J, Du J, Ma X, Liang A (2018) Feasibility study on measuring atmospheric CO2 in urban areas using spaceborne CO2-IPDA LIDAR. Remote Sens 10:985 He L, Wang L, Lin A, Ming Z, Bilal M, Tao M (2017) Aerosol optical properties and associated direct radiative forcing over the Yangtze River Basin during 2001–2015. Remote Sens 9:746 He L, Wang L, Lin A, Zhang M, Bilal M, Wei J (2018) Performance of the NPP-VIIRS and aqua-MODIS aerosol optical depth products over the Yangtze River Basin. Remote Sens 10:117 Hsu NC et al (2013) Enhanced deep blue aerosol retrieval algorithm: the second generation. J Geophys Res 118:9296–9315 Huang J et al (2008) An overview of the semi-arid climate and environment research observatory over the Loess plateau. Adv Atmos Sci 25:906–921 Jie Z et al (2017) Validation of MODIS C6 AOD products retrieved by the dark target method in the Beijing–Tianjin–Hebei urban agglomeration, China. Adv Atmos Sci 34:993–1002 Jing W, Lin S, Bo H, Bilal M, Wang L (2018) Verification, improvement and application of aerosol optical depths in China. Part 1: inter-comparison of NPP-VIIRS and Aqua-MODIS. Atmos Environ 175:221–233 Kaiser J, Granmar M (2005) Epidemiology. Mounting evidence indicts fine-particle pollution. Science 307:1858–1861. https://doi.org/10.1126/science.307.5717.1858a Kang N, Kumar KR, Hu K, Yu X, Yin Y (2016) Long-term (2002–2014) evolution and trend in collection 5.1 level-2 aerosol products derived from the MODIS and MISR sensors over the Chinese Yangtze River Delta. Atmos Res 181:29–43 Kato S, Loeb NG, Rutan DA, Rose FG, Sun-Mack S, Miller WF, Yan C (2012) Uncertainty estimate of surface irradiances computed with MODIS-, CALIPSO-, and CloudSat-Derived cloud and aerosol properties. Surv Geophys 33:395–412 Kaufman YJ, Tanre D, Boucher O (2002) A satellite view of aerosols in the climate system. Nature 419:215–223. https://doi.org/10.1038/nature01091 Kleidman RG et al (2005) Comparison of moderate resolution imaging spectroradiometer (MODIS) and aerosol robotic network (AERONET) remote-sensing retrievals of aerosol fine mode fraction over ocean. J Geophys Res 110:D22205 Kulmala M et al (2013) Direct observations of atmospheric aerosol nucleation. Science 339:943–946. https://doi.org/10.1126/science.1227385 Kumar A, Singh N, Solanki R (2018) Evaluation and utilization of MODIS and CALIPSO aerosol retrievals over a complex terrain in Himalaya. Remote Sens Environ 206:139–215 Lelieveld J, Evans JS, Fnais M, Giannadaki D, Pozzer A (2015) The contribution of outdoor air pollution sources to premature mortality on a global scale. Nature 525:367–371 Levy RC, Mattoo S, Munchak LA, Remer LA, Sayer AM, Patadia F, Hsu NC (2013) The collection 6 MODIS aerosol products over land and ocean. Atmos Meas Tech 6:2989–3034 Liu Z et al (2008) Airborne dust distributions over the Tibetan Plateau and surrounding areas derived from the first year of CALIPSO lidar observations. Atmos Chem Phys 8:5045–5060 Magistrale V (1992) Health aspects of air pollution. Springer, Berlin Marchant B, Platnick S, Meyer K, Wind G (2020) Evaluation of the Aqua MODIS Collection 6.1 multilayer cloud detection algorithm through comparisons with CloudSat CPR and CALIPSO CALIOP products. Atmos Meas Tech 13:3263–3275 Miao Z, Liu J, Bilal M, Zhang C, Nazeer M, Atique L, Han G, Gong W (2020) Aerosol optical properties and contribution to differentiate haze and haze-free weather in Wuhan City. Atmophere 11:322 Ming Z, Wang L, Wei G, Ma Y, Liu B (2017) Aerosol optical properties and direct radiative effects over Central China. Remote Sens 9:997 Misra A, Jayaraman A, Ganguly D (2008) Validation of MODIS derived aerosol optical depth over Western India. J Geophys Res Atmos 113:D04203 Nichol JE, Bilal M, Ali MA, Qiu Z (2020) Air pollution scenario over China during COVID-19. Remote Sens 12:2100 Omar AH, Winker DM, Vaughan MA, Hu Y, Trepte CR, Ferrare RA et al (2009) The Calipso automated aerosol classification and lidar ratio selection algorithm. J Atmos Ocean Technol 26:1994–2014 Qin W et al (2018) Characteristic and driving factors of aerosol optical depth over Mainland China during 1980–2017. Remote Sensing 10:1064 Rosenfeld D (2000) Suppression of rain and snow by urban and industrial air pollution. Science 287:1793–1796. https://doi.org/10.1126/science.287.5459.1793 Shen XJ et al (2015) Characterization of submicron aerosols and effect on visibility during a severe haze-fog episode in Yangtze River Delta, China. Atmos Environ 120:307–316 Shi H, Xiao Z, Zhan X, Ma H, Tian X (2019) Evaluation of MODIS and two reanalysis aerosol optical depth products over AERONET sites. Atmos Res 220:75–80 Shi Y, Liu B, Chen S, Gong W, Jin Y (2020) Characteristics of aerosol within the nocturnal residual layer and its effects on surface PM2.5 over China. Atmos Environ 241:117841 Sun J, Ariya PA (2006) Atmospheric organic and bio-aerosols as cloud condensation nuclei (CCN): a review. Atmos Environ 40:795–820 Tao M et al (2017) How do aerosol properties affect the temporal variation of MODIS AOD bias in Eastern China. Remote Sens 9:800 Tian X, Liu Q, Li X, Wei J (2018) Validation and comparison of MODIS C6.1 and C6 aerosol products over Beijing. China. Remote Sens 10:2021 Tie X, Wu D, Brasseur G (2009) Lung cancer mortality and exposure to atmospheric aerosol particles in Guangzhou, China. Atmos Environ 43:2375–2377 Wang H, Yang Z, Saito Y, Liu JP, Wang Y (2007) Stepwise decreases of the Huanghe (Yellow River) sediment load (1950–2005): impacts of climate change and human activities. Glob Planet Change 57:331–354 Wang Y, Yuan Q, Li T, Shen H, Zheng L, Zhang L (2019) Evaluation and comparison of MODIS Collection 6.1 aerosol optical depth against AERONET over regions in China with multifarious underlying surfaces. Atmos Environ 200:280–301 Winker DM, Pelon J, Mccormick MP (2003) The CALIPSO mission: spaceborne lidar for observation of aerosols and clouds. Proc Spie 4893:1211–1229 Winker DM, Hunt WH, Mcgill M (2007) Initial performance assessment of CALIOP. Geophys Res Lett 34:228–262 Winker DM et al (2009) Overview of the CALIPSO mission and CALIOP data processing algorithms. J Atmos Ocean Technol 26:2310–2323 Xia X et al (2016) Ground-based remote sensing of aerosol climatology in China: aerosol optical properties, direct radiative effect and its parameterization. Atmos Environ 124:243–251 Yang Y, Wu J, Bai L, Wang B (2020) Reliability of gridded precipitation products in the Yellow River Basin, China. Remote Sens 12:374 Yu H, Chin M, Yuan T, Bian H, Zhao C (2015) The fertilizing role of african dust in the amazon rainforest: a first multiyear assessment based on CALIPSO Lidar observations. Geophys Res Lett 42:1984–1991 Zhang MM, Liu ZB, Yun-Jian GE, Basin EY (2014a) Spatio-temporal distribution of atmospheric aerosol optical depth in Jiangsu Province Zhang M, Gong W, Zhu Z (2014b) Aerosol optical properties of a haze episode in Wuhan based on ground-based and satellite observations. Atmosphere 5:699–719 Zhang M, Liu J, Bilal M, Zhang C, Zhao F, Xie X, Khedher KM (2019a) Optical and physical characteristics of the lowest aerosol layers over the Yellow River Basin. Atmosphere 10:638 Zhang M et al (2019b) Evaluation of the aqua-MODIS C6 and C6.1 aerosol optical depth products in the Yellow River Basin, China. Atmosphere 10:426