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Inter-Comparison of Cloud Detection and Cloud Top Height Retrievals Using the CREW Database

机译:云检测和云顶部高度检索使用船员数据库的互相比较

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About 70% of the earth's surface is covered with clouds. They strongly influence the radiation balance and the water cycle of the earth. Hence the detailed monitoring of cloud properties - such as cloud fraction, cloud top temperature, cloud particle size, and cloud water path - is important to understand the role of clouds in the weather and the climate system. The remote sensing with passive sensors is an essential mean for the global observation of the cloud parameters, but is nevertheless challenging. To understand the uncertainty characteristics of cloud remote sensing 12 state-of-art cloud detection and cloud top properties retrievals using SEVIRI observations were inter-compared and validated against CALIPSO and CPR measurements. Our results show that the cloud detection results of the individual algorithms are different for thin cloud layers, broken cloud fields, and aerosol situations. Cloud top height retrievals are uncertain for multilayer situations and thin cloud layers.
机译:大约70%的地球表面覆盖着云层。它们强烈影响地球的辐射平衡和水循环。因此,对云属性的详细监测 - 例如云分数,云顶温度,云粒径和云水路 - 了解云在天气和气候系统中的作用非常重要。与无源传感器的遥感是全球观察云参数的必要均值,但仍然是挑战性的。为了了解云遥感的不确定性特征,12型云检测和使用Seviro观察的云顶部属性检索与Calipso和CPR测量进行验证。我们的研究结果表明,薄云层,破碎的云场和气溶胶情况的单个算法的云检测结果不同。多层情况和薄云层的云顶部高度检索不确定。

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