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首页> 外文期刊>Journal of hydrometeorology >A Prototype WRF-Based Ensemble Data Assimilation System for Dynamically Downscaling Satellite Precipitation Observations
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A Prototype WRF-Based Ensemble Data Assimilation System for Dynamically Downscaling Satellite Precipitation Observations

机译:基于WRF的原型集合数据同化系统,用于动态缩小卫星降水观测值

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In the near future, the Global Precipitation Measurement (GPM) mission will provide precipitation observations with unprecedented accuracy and spatial/temporal coverage of the globe. For hydrological applications, the satellite observations need to be downscaled to the required finer-resolution precipitation fields. This paper explores a dynamic downscaling method using ensemble data assimilation techniques and cloud-resolving models. A prototype ensemble data assimilation system using the Weather Research and Forecasting Model (WRF) has been developed. A high-resolution regional WRF with multiple nesting grids is used to provide the first-guess and ensemble forecasts. An ensemble assimilation algorithm based on the maximum likelihood ensemble filter (MLEF) is used to perform the analysis. The forward observation operators from NOAA-NCEP's gridpoint statistical interpolation (GSI) are incorporated for using NOAA-NCEP operational datastream, including conventional data and clear-sky satellite observations. Precipitation observation operators are developed with a combination of the cloud-resolving physics from NASA Goddard cumulus ensemble (GCE) model and the radiance transfer schemes from NASA Satellite Data Simulation Unit (SDSU). The prototype of the system is used as a test bed to optimally combine observations and model information to produce a dynamically downscaled precipitation analysis. A case study on Tropical Storm Erin (2007) is presented to investigate the ability of the prototype of the WRF Ensemble Data Assimilation System (WRF-EDAS) to ingest information from in situ and satellite observations including precipitation-affected radiance. The results show that the analyses and forecasts produced by the WRF-EDAS system are comparable to or better than those obtained with the WRF-GSI analysis scheme using the same set of observations. An experiment was also performed to examine how the analyses and short-term forecasts of microphysical variables and dynamical fields are influenced by the assimilation of precipitation-affected radiances. The results highlight critical issues to be addressed in the next stage of development such as model-predicted hydrometeor control variables and associated background error covariance, bias estimation, and correction in radiance space, as well as the observation error statistics. While further work is needed to optimize the performance of WRF-EDAS, this study establishes the viability of developing a cloud-scale ensemble data assimilation system that has the potential to provide a useful vehicle for downscaling satellite precipitation information to finer scales suitable for hydrological applications.
机译:在不久的将来,全球降水测量(GPM)任务将为降水观测提供前所未有的准确性和对全球的时空覆盖。对于水文应用,需要将卫星观测缩小到所需的更高分辨率的降水场。本文探索了使用集成数据同化技术和云解析模型的动态降尺度方法。已经开发出使用天气研究和预报模型(WRF)的原型集合数据同化系统。具有多个嵌套网格的高分辨率区域WRF用于提供第一猜测和整体预报。基于最大似然集合滤波器(MLEF)的集合同化算法用于执行分析。来自NOAA-NCEP的格点统计插值(GSI)的前向观测算子被合并使用NOAA-NCEP操作数据流,包括常规数据和晴空卫星观测。降水观测算子是结合NASA戈达德积云系(GCE)模型的云解析物理原理和NASA卫星数据模拟单元(SDSU)的辐射传输方案开发而成的。该系统的原型被用作测试床,以最佳地结合观测和模型信息以生成动态缩减的降水量分析。本文以热带风暴艾琳(2007)为例,研究了WRF集合数据同化系统(WRF-EDAS)原型从现场和卫星观测(包括受降水影响的辐射度)​​中获取信息的能力。结果表明,由WRF-EDAS系统产生的分析和预测与使用相同观测值的WRF-GSI分析方案所获得的分析和预测相当或更好。还进行了一项实验,以检验受降水影响的辐射的同化如何影响微物理变量和动力场的分析和短期预测。结果突出了在下一步开发中要解决的关键问题,例如模型预测的水汽控制变量和相关的背景误差协方差,偏差估计,辐射空间中的校正以及观测误差统计。尽管需要进一步的工作来优化WRF-EDAS的性能,但这项研究建立了开发云级集合数据同化系统的可行性,该系统有可能为将卫星降水信息缩减到适合水文应用的更小规模提供有用的工具。 。

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