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Retrieval of the Fine-Mode Aerosol Optical Depth over East China Using a Grouped Residual Error Sorting (GRES) Method from Multi-Angle and Polarized Satellite Data

机译:基于多角度和极化卫星数据的分组残差排序(GRES)方法反演华东地区精细模式气溶胶光学深度

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The fine-mode aerosol optical depth (AOD f ) is an important parameter for the environment and climate change study, which mainly represents the anthropogenic aerosols component. The Polarization and Anisotropy of Reflectances for Atmospheric Science coupled with Observations from a Lidar (PARASOL) instrument can detect polarized signal from multi-angle observation and the polarized signal mainly comes from the radiation contribution of the fine-mode aerosols, which provides an opportunity to obtain AOD f directly. However, the currently operational algorithm of Laboratoire d’Optique Atmosphérique (LOA) has a poor AOD f retrieval accuracy over East China on high aerosol loading days. This study focused on solving this issue and proposed a grouped residual error sorting (GRES) method to determine the optimal aerosol model in AOD f retrieval using the traditional look-up table (LUT) approach and then the AOD f retrieval accuracy over East China was improved. The comparisons between the GRES retrieved and the Aerosol Robotic Network (AERONET) ground-based AOD f at Beijing, Xianghe, Taihu and Hong_Kong_PolyU sites produced high correlation coefficients (r) of 0.900, 0.933, 0.957 and 0.968, respectively. The comparisons of the GRES retrieved AOD f and PARASOL AOD f product with those of the AERONET observations produced a mean absolute error (MAE) of 0.054 versus 0.104 on high aerosol loading days (AERONET mean AOD f at 865 nm = 0.283). An application using the GRES method for total AOD (AOD t ) retrieval also showed a good expandability for multi-angle aerosol retrieval of this method.
机译:精细模式气溶胶光学深度(AOD f)是环境和气候变化研究的重要参数,主要代表人为气溶胶成分。大气科学的反射率的偏振和各向异性与激光雷达的观测(PARASOL)仪器一起可以检测来自多角度观测的偏振信号,并且该偏振信号主要来自精细模式气溶胶的辐射贡献,这为直接获得AOD f。但是,在高气溶胶装填天数下,目前在华东地区运行的“光学实验室”(LOA)的AOD f检索精度较差。本研究着眼于解决这一问题,并提出了一种分组残差分类法(GRES),使用传统的查找表(LUT)方法确定AOD f检索中的最佳气溶胶模型,然后得出华东地区AOD f的检索精度为改善。在北京,香河,太湖和Hong_Kong_PolyU站点上检索到的GRES与气溶胶机器人网络(AERONET)地面AOD f的比较分别产生了0.900、0.933、0.957和0.968的高相关系数(r)。在高气溶胶加载天数下,GRES检索到的AOD f和PARASOL AOD f产品与AERONET观测值的比较产生了0.054相对于0.104的平均绝对误差(MAE)(865 nm处的AERONET平均AOD f = 0.283)。使用GRES方法进行总AOD(AOD t)检索的应用也显示了该方法的多角度气溶胶检索的良好扩展性。

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