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基于云依赖背景场误差协方差的雷达资料同化及对降雨预报影响研究
引用本文:陈娴雅,陈耀登,孟德明.基于云依赖背景场误差协方差的雷达资料同化及对降雨预报影响研究[J].气象学报,2022,80(2):243-256.
作者姓名:陈娴雅  陈耀登  孟德明
作者单位:1.南京信息工程大学气象灾害教育部重点实验室/气候与环境变化国际合作联合实验室/气象灾害预报预警与评估协同创新中心,南京,210044
基金项目:国家自然科学基金面上项目(42075148);;国家重点研发计划重点专项项目(2017YFC1502102);
摘    要:传统变分同化方法中使用各向同性和均质的背景场误差协方差,忽略了背景场误差协方差的天气系统依赖性,而在变分框架下引入集合流依赖的背景场误差协方差还需要额外的集合预报.为在变分同化中引入更合理的背景场误差协方差,通过引入云指数构建"云依赖"背景场误差协方差,提出了一种云依赖背景场误差协方差的同化方案,并应用于雷达等多源观测...

关 键 词:雷达资料同化  变分同化  背景场误差协方差  云依赖
收稿时间:2021-08-18
修稿时间:2021-11-29

Assimilation of radar data based on cloud-dependent background error covariance and its impact on rainfall forecasting
Institution:1.Key Laboratory of Meteorological Disaster,Ministry of Education/International Joint Laboratory on Climate and Environment Change/Collaborative Innovation Center on Forecast and Evaluation of Meteorological Disasters,Nanjing University of Information Science & Technology,Nanjing 210044,China2.Key Laboratory of Mesoscale Severe Weather/Ministry of Education,School of Atmospheric Sciences,Nanjing University, Nanjing 210023,China
Abstract:The traditional variational assimilation method uses isotropic and homogeneous background error covariance, which ignores the weather system dependence of the background error covariance, and the introduction of ensemble flow-dependent background error covariance in the variational framework requires additional ensemble forecasts. In order to introduce more reasonable background error covariance in the variational assimilation, a "cloud-dependent" background error covariance is constructed by introducing cloud indices, and a cloud-dependent background error covariance assimilation scheme is proposed and applied to the assimilation of radar and other multi-source observations. Based on the cloud-dependent background error covariance data assimilation scheme, a series of single observation tests and batch cyclic assimilation forecasts during the rainy season as well as detailed diagnostic analysis of rainfall cases are carried out. From the single observation tests, it is found that the cloud-dependent background error covariance can dynamically adjust the background error at each grid point in real time, resulting in significant anisotropy and dependence of the analysis increments on cloud and rain characteristics; the batch cyclic assimilation and forecasting experiments show that the radar assimilation with cloud-dependent background error covariance can steadily improve the precipitation forecasting capability, and the improvement is especially obvious for the large magnitude precipitation scores; The diagnosis of strong convective storms further shows that the application of cloud-dependent background error covariance improves the prediction of dynamical, thermal, water vapor and hydrometeor fields. The assimilation scheme based on cloud-dependent background error covariance can introduce background error covariance information that is more consistent with real-time weather characteristics in the framework of variational assimilation, which provides a basis for better assimilation of high-resolution radar data and effectively improves rainfall forecasting. 
Keywords:
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