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Evaluation of the MODIS Collection 6 multilayer cloud detection algorithm through comparisons with CloudSat Cloud Profiling Radar and CALIPSO CALIOP products

机译:通过使用CloudSat云分析雷达和Calipso Caliop产品的比较评估Modis Collection 6多层云检测算法

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Since multilayer cloud scenes are common in the atmosphere and can be an important source of uncertainty in passive satellite sensor cloud retrievals, the MODIS MOD06 and MYD06 standard cloud optical property products include a multilayer cloud detection algorithm to assist with data quality assessment. This paper presents an evaluation of the Aqua MODIS MYD06 Collection 6 multilayer cloud detection algorithm through comparisons with active Cloud Profiling Radar (CPR) and Cloud-Aerosol Lidar with Orthogonal Polarization (CALIOP) products that have the ability to provide cloud vertical distributions and directly classify multilayer cloud scenes and layer properties. To compare active sensor products with an imager such as MODIS, it is first necessary to define multilayer clouds in the context of their radiative impact on cloud retrievals. Three main parameters have thus been considered in this evaluation: (1)?the maximum separation distance between two cloud layers, (2)?the thermodynamic phase of those layers and (3)?the upper-layer cloud optical thickness. The impact of including the Pavolonis–Heidinger multilayer cloud detection algorithm, introduced in Collection 6, to assist with multilayer cloud detection has also been assessed. For the year 2008, the MYD06 C6 multilayer cloud detection algorithm identifies roughly 20 % of all cloudy pixels as multilayer (decreasing to about 13 % if the Pavolonis–Heidinger algorithm output is not used). Evaluation against the merged CPR and CALIOP 2B-CLDCLASS-lidar product shows that the MODIS multilayer detection results are quite sensitive to how multilayer clouds are defined in the radar and lidar product and that the algorithm performs better when the optical thickness of the upper cloud layer is greater than about 1.2 with a minimum layer separation distance of 1 km. Finally, we find that filtering the MYD06 cloud optical properties retrievals using the multilayer cloud flag improves aggregated statistics, particularly for ice cloud effective radius.
机译:由于多层云场景在大气中很常见,并且可以是被动卫星传感器云检索中的不确定度的重要来源,因此Modis Mod06和MyD06标准云光学属性产品包括多层云检测算法,可以帮助数据质量评估。本文通过与有源云分析雷达(CPR)和具有正交偏振(CALIOP)产品的云 - 气溶胶激光雷达的比较,提供了AQUA MODIS MYD06集合6多层云检测算法的评估,具有能够提供云垂直分布和直接分类的能力多层云场景和图层属性。为了将活动传感器产品与Modis等成像器进行比较,首先是在其对云检索的辐射影响的背景下定义多层云。在该评估中考虑了三个主要参数:(1)?两个云层之间的最大分离距离,(2)?这些层的热力学相和(3)?上层云光学厚度。在收集6中引入的Pavolonis-Heidinger多层云检测算法的影响也得到了评估,以协助多层云检测。 2008年,MyD06 C6多层云检测算法识别大约20%的多层多层的多层像素(如果未使用Pavolonis-Heidinger算法输出,则减少约13%)。对合并的CPR和CALIOP 2B-CLDCLASS-LIDAR产品的评估表明,MODIS多层检测结果对多层云定义在雷达和激光雷达产品中,并且当上云层的光学厚度时,算法更好地执行算法更好大于约1.2,最小层分离距离为1公里。最后,我们发现使用多层云标志过滤MyD06云光学属性检索,提高了聚合统计,特别是对于冰云有效半径。

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