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CERES Edition-2 Cloud Property Retrievals Using TRMM VIRS and Terra and Aqua MODIS Data—Part I: Algorithms

机译:使用TRMM VIRS和Terra和Aqua MODIS数据的CERES版本2云属性检索-第一部分:算法

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The National Aeronautics and Space Administration's Clouds and the Earth's Radiant Energy System (CERES) Project was designed to improve our understanding of the relationship between clouds and solar and longwave radiation. This is achieved using satellite broad-band instruments to map the top-of-atmosphere radiation fields with coincident data from satellite narrow-band imagers employed to retrieve the properties of clouds associated with those fields. This paper documents the CERES Edition-2 cloud property retrieval system used to analyze data from the Tropical Rainfall Measuring Mission Visible and Infrared Scanner and by the MODerate-resolution Imaging Spectrometer instruments on board the Terra and Aqua satellites covering the period 1998 through 2007. Two daytime retrieval methods are explained: the Visible Infrared Shortwave-infrared Split-window Technique for snow-free surfaces and the Shortwave-infrared Infrared Near-infrared Technique for snow or ice-covered surfaces. The Shortwave-infrared Infrared Split-window Technique is used for all surfaces at night. These methods, along with the ancillary data and empirical parameterizations of cloud thickness, are used to derive cloud boundaries, phase, optical depth, effective particle size, and condensed/frozen water path at both pixel and CERES footprint levels. Additional information is presented, detailing the potential effects of satellite calibration differences, highlighting methods to compensate for spectral differences and correct for atmospheric absorption and emissivity, and discussing known errors in the code. Because a consistent set of algorithms, auxiliary input, and calibrations across platforms are used, instrument and algorithm-induced changes in the data record are minimized. This facilitates the use of the CERES data products for studying climate-scale trends.
机译:美国国家航空航天局的“云与地球辐射能系统”项目旨在提高我们对云与太阳和长波辐射之间关系的理解。这是通过使用卫星宽带仪器绘制大气顶部辐射场与卫星窄带成像仪的一致数据进行映射来实现的,该卫星窄带成像仪用于检索与那些场相关的云的性质。本文记录了CERES Edition-2云属性检索系统,该系统用于分析1998年至2007年期间Terra和Aqua卫星上的热带降水测量任务可见和红外扫描仪以及MODerate分辨率成像光谱仪仪器的数据。两个解释了白天的检索方法:无雪表面的可见红外短波红外分窗技术和积雪或冰雪覆盖的表面的短波红外近红外技术。短波红外红外分割窗口技术可在夜间用于所有表面。这些方法以及云厚度的辅助数据和经验参数化可用于得出像素和CERES足迹级别的云边界,相位,光学深度,有效粒径以及冷凝/冻结水路径。介绍了其他信息,详细介绍了卫星校准差异的潜在影响,重点介绍了补偿光谱差异并校正大气吸收和发射率的方法,并讨论了代码中的已知错误。由于使用了一套一致的算法,辅助输入和跨平台的校准,因此可以将仪器和算法引起的数据记录更改最小化。这有助于使用CERES数据产品来研究气候规模趋势。

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