Precipitation estimation by infrared brightness temperature measurement of FengYun-4A imager

Gen Wang, Song Ye, Song Yuan, Yun Jiang
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Abstract

In this paper, based on the infrared channel brightness temperature from the advanced geosynchronous radiation imager (AGRI) of FengYun-4A satellite, the research on quantitative estimation of precipitation is carried out. The algorithm of precipitation estimation can be divided into three steps. Firstly, the dictionary of brightness temperature of FY-4A/AGRI infrared channel brightness temperature and the integrated multi-satellite retrievals for GPM (IMERG) precipitation is constructed as the historical training sample library. Secondly, the precipitation FOVs are identified. As prior information, the IMERG and ice cloud products are coupled to classification models of the K-nearest neighbor (KNN) and random forest to determine whether there is precipitation at the FOV to be estimated. Finally, the precipitation estimation is performed. Inverse problem regularization method and random forest regression model are used for precipitation estimation, respectively. On this basis, the preliminary experiments for precipitation estimation of and “Ampil (2018)” are carried out. The results show that the precipitation estimation accuracy with ice cloud products as prior information through the inverse problem regularization is better than that with the IMERG products as priori information, while the conclusion is the opposite for the random forest method. The accuracy of precipitation estimation based on the random forest method is better than that of the inverse problem regularization, especially in the “extreme” precipitation center.
风云- 4a红外亮度测温降水估算
本文基于风云- 4a卫星先进地球同步辐射成像仪(AGRI)红外通道亮度温度,开展了降水定量估算研究。降水估计算法可分为三个步骤。首先,构建FY-4A/AGRI红外通道亮温字典和多星综合反演的GPM (IMERG)降水作为历史训练样本库;其次,识别降水视场;作为先验信息,IMERG和冰云产品与k近邻(KNN)和随机森林的分类模型耦合,以确定待估计视场是否有降水。最后,进行降水估计。分别采用反问题正则化方法和随机森林回归模型进行降水估计。在此基础上,开展了“Ampil(2018)”和“Ampil(2018)”降水估算的初步实验。结果表明,通过反问题正则化,以冰云产品为先验信息的降水估计精度优于以IMERG产品为先验信息的降水估计精度,而随机森林方法则相反。基于随机森林方法的降水估计精度优于反问题正则化方法,特别是在“极端”降水中心。
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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