Impact of Adaptively Thinned GOES-16 Cloud Water Path in an Ensemble Data Assimilation System

S. Mallick
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引用次数: 1

Abstract

Assimilation of cloud properties in the convective scale ensemble data assimilation system is one of the prime topics of research in recent years. Satellites can retrieve cloud properties that are important sources of information of the cloud and atmospheric state. The Advance Baseline Imager (ABI) aboard the GOES-16 geostationary satellite brings an opportunity for retrieving high spatiotemporal resolution cloud properties, including cloud water path over continental United States. This study investigates the potential impacts of assimilating adaptively thinned GOES-16 cloud water path (CWP) observations that are assimilated by the ensemble-based Warn-on-Forecast System and the impact on subsequent weather forecasts. In this study, for CWP assimilation, multiple algorithms have been developed and tested using the adaptive-based thinning method. Three severe weather events are considered that occurred on 19 July 2019, 7 May and 21 June 2020. The superobbing procedure used for CWP data smoothed from 5 to 15 km or more depending on thinning algorithm. The overall performance of adaptively thinned CWP assimilation in the Warn-on-Forecast system is assessed using an object-based verification method. On average, more than 60% of the data was reduced and therefore not used in the assimilation system. Results suggest that assimilating less than 40% of CWP superobbing data into the Warn-on-Forecast system is of similar forecast quality to those obtained from assimilating all available CWP observations. The results of this study can be used on the benefits of cloud assimilation to improve numerical simulation.
自适应减薄GOES-16云水路径对集成数据同化系统的影响
对流尺度集合资料同化系统中云性质的同化是近年来研究的热点之一。卫星可以检索云的特性,这些特性是云和大气状态信息的重要来源。GOES-16地球同步卫星上的高级基线成像仪(ABI)为检索高时空分辨率的云特性提供了机会,包括美国大陆上空的云水路径。本研究探讨了同化自适应变薄的GOES-16云水路径(CWP)观测数据的潜在影响,这些观测数据被基于集合的预报预警系统同化,并对随后的天气预报产生影响。在本研究中,针对CWP同化,开发了多种算法,并使用基于自适应的细化方法进行了测试。2019年7月19日、2020年5月7日和6月21日发生了三次恶劣天气事件。根据细化算法,用于CWP数据的超级提取程序从5到15公里或更多平滑。采用基于目标的验证方法对预报预警系统中自适应减薄CWP同化的总体性能进行了评估。平均而言,超过60%的数据被减少,因此没有在同化系统中使用。结果表明,将不到40%的CWP超观测数据同化到预报预警系统中,其预报质量与同化所有可用的CWP观测数据获得的预报质量相似。本研究的结果可以用来说明云同化的好处,以改进数值模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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