Cross validation of GOES-R and NOAA multi-radar multi-sensor (MRMS) QPE over the continental United States

作者: Haonan Chen , V. Chandrasekar , Yang Liu , Luyao Sun , Jieying He

DOI: 10.1109/IGARSS39084.2020.9323767

关键词:

摘要: Precipitation is a critical element in global atmospheric circulation and ecosystem. However, it challenging to monitor the or even continental scale precipitation features using ground-based rain gauges due spatial coverage limitations. The Geostationary Operational Environmental Satellite-R (GOES-R) series provide new opportunities for continuous observation of at large scales. This paper presents detailed cross-comparison quantitative estimates (QPE) between GOES-R (GOES-16) ground radar-based rainfall product derived from National Ocean Atmospheric Administration's (NOAA) multi-radar multi-sensor (MRMS) system over United States (CONUS). detectability investigated MRMS products as references. In addition, uncertainties associated with are quantified different regions CONUS.

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