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A New Operational Snow Retrieval Algorithm Applied to Historical AMSR-E Brightness Temperatures

机译:一种用于历史AMSR-E亮度温度的新的可操作雪反演算法

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Snow is a key element of the water and energy cycles and the knowledge of spatio-temporal distribution of snow depth and snow water equivalent (SWE) is fundamental for hydrological and climatological applications. SWE and snow depth estimates can be obtained from spaceborne microwave brightness temperatures at global scale and high temporal resolution (daily). In this regard, the data recorded by the Advanced Microwave Scanning Radiometer—Earth Orbiting System (EOS) (AMSR-E) onboard the National Aeronautics and Space Administration’s (NASA) AQUA spacecraft have been used to generate operational estimates of SWE and snow depth, complementing estimates generated with other microwave sensors flying on other platforms. In this study, we report the results concerning the development and assessment of a new operational algorithm applied to historical AMSR-E data. The new algorithm here proposed makes use of climatological data, electromagnetic modeling and artificial neural networks for estimating snow depth as well as a spatio-temporal dynamic density scheme to convert snow depth to SWE. The outputs of the new algorithm are compared with those of the current AMSR-E operational algorithm as well as in-situ measurements and other operational snow products, specifically the Canadian Meteorological Center (CMC) and GlobSnow datasets. Our results show that the AMSR-E algorithm here proposed generally performs better than the operational one and addresses some major issues identified in the spatial distribution of snow depth fields associated with the evolution of effective grain size.
机译:雪是水和能量循环的关键要素,而雪深和雪水当量(SWE)的时空分布知识是水文和气候学应用的基础。可以从全球尺度和高时间分辨率(每天)的星载微波亮度温度获得SWE和雪深估计。在这方面,美国国家航空航天局(NASA)AQUA航天器上的先进微波扫描辐射计-地球轨道系统(EOS)(AMSR-E)记录的数据已用于生成SWE和雪深的运行估算,对在其他平台上飞行的其他微波传感器生成的估算值进行补充。在这项研究中,我们报告了有关开发和评估应用于历史AMSR-E数据的新运算算法的结果。本文提出的新算法利用气候数据,电磁建模和人工神经网络来估计积雪深度,并采用时空动态密度方案将积雪深度转换为SWE。将该新算法的输出与当前AMSR-E运算算法以及现场测量和其他运算积雪产品(特别是加拿大气象中心(CMC)和GlobSnow数据集)的输出进行比较。我们的结果表明,这里提出的AMSR-E算法通常比可操作算法表现更好,并且解决了与有效粒度变化相关的雪深场空间分布中发现的一些主要问题。

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