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Geostatistical Methods for Filling Gaps in Level-3 Monthly-Mean Aerosol Optical Depth Data from Multi-Angle Imaging SpectroRadiometer

机译:多角度成像分光辐射计中3级月平均气溶胶光学深度数据中填充间隙的地统计学方法

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The Aerosol Optical Depth (AOD) retrieved from satellite remote sensing measurements such as from MISR and MODIS, both onboard the Terra platform, are widely used for studying regional and global patterns of aerosol loading. Aerosol products from these sensors are also used for analyzing feedbacks and relationship between aerosols and climatic variables including clouds, precipitation, and radiation fluxes. Several statistical techniques leading to the understanding of such relationships, including empirical orthogonal function and temporal trend extraction methods, require spatially complete AOD data records. Inherent to remote sensing of aerosols, cloud cover significantly affects aerosol retrievals and results in missing data across the AOD products. This paper demonstrates widely-used geostatistical techniques, such as Co-Kriging (CK) and Regression Kriging (RK), for spatially-filling missing data in the MISR AOD product for the period 2001–2013. Among the unique characteristics of this data-filling algorithm is that it utilizes additional AOD information obtained from MODIS. The mean accuracy of the predicted MISR AOD using CK method is estimated to be 0.05, globally. The gap-filled MISR AOD data are also compared with 131 ground-based Aerosol Robotic Network (AERONET) stations, located around the world. It is found that Root Mean Squared Error of the gap-filled AOD dataset and the original MISR AOD product with respect to AERONET data are 0.143. The gap-filled AOD dataset can be used in applications where the presence of missing values is undesirable such as for global/regional aerosol variability and trend analysis.
机译:Terra平台上从卫星遥感测量(例如从MISR和MODIS)获取的气溶胶光学深度(AOD)被广泛用于研究气溶胶负荷的区域和全球模式。这些传感器的气溶胶产品还用于分析反馈和气溶胶与气候变量(包括云,降水和辐射通量)之间的关系。导致理解这种关系的几种统计技术,包括经验正交函数和时间趋势提取方法,都需要空间上完整的AOD数据记录。气溶胶遥感具有固有的意义,云层覆盖会显着影响气溶胶的回收,并导致整个AOD产品中的数据丢失。本文演示了广泛使用的地统计学技术,例如Co-Kriging(CK)和Regression Kriging(RK),用于在空间上填充MISR AOD产品中2001-2013年期间的缺失数据。这种数据填充算法的独特特征之一是它利用了从MODIS获得的其他AOD信息。使用CK方法预测的MISR AOD的平均准确度总体估计为0.05。空缺的MISR AOD数据也与世界各地的131个地面气溶胶机器人网络(AERONET)站进行了比较。发现,相对于AERONET数据,空缺AOD数据集和原始MISR AOD乘积的均方根误差为0.143。空隙填充的AOD数据集可用于不希望存在缺失值的应用程序中,例如用于全局/区域气溶胶变异性和趋势分析。

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