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首页> 外文期刊>Journal of earth system science >Development of extended WRF variational data assimilation system (WRFDA) for WRF non-hydrostatic mesoscale model
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Development of extended WRF variational data assimilation system (WRFDA) for WRF non-hydrostatic mesoscale model

机译:为WRF非静水中尺度模型开发扩展的WRF变异数据同化系统(WRFDA)

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The paper intends to present the development of the extended weather research forecasting data assimilation (WRFDA) system in the framework of the non-hydrostatic mesoscale model core of weather research forecasting system (WRF-NMM), as an imperative aspect of numerical modeling studies. Though originally the WRFDA provides improved initial conditions for advanced research WRF, wehave successfully developed a unified WRFDA utility that can be used by the WRF-NMM core, as well. After critical evaluation, it has been strategized to develop a code to merge WRFDA framework and WRF-NMM output. In this paper, we have provided a few selected implementations and initial results through single observation test, and background error statistics like eigenvalues, eigenvector and length scale among others, which showcase the successful development of extended WRFDA code for WRFNMM model. Furthermore, the extended WRFDA system is applied for the forecast of three severe cyclonic storms: Nargis (27 Aprila??3 May 2008), Aila (23a??26 May 2009) and Jal (4a??8 November 2010)formed over the Bay of Bengal. Model results are compared and contrasted within the analysis fields and later on with high-resolution model forecasts. The mean initial position error is reduced by 33% with WRFDA as compared to GFS analysis. The vector displacement errors in track forecast are reduced by 33, 31, 30 and 20% to 24, 48, 72 and 96 hr forecasts respectively, in data assimilation experiments as compared to control run. The model diagnostics indicates successful implementation of WRFDA within the WRF-NMM system.
机译:本文打算在气象研究预报系统(WRF-NMM)的非静力学中尺度模型核心的框架内,提出扩展气象研究预报数据同化(WRFDA)系统的开发,这是数值建模研究的必要方面。尽管最初WRFDA为WRF的高级研究提供了改善的初始条件,但我们已经成功开发了可用于WRF-NMM核心的统一WRFDA实用程序。经过严格的评估后,已制定出将WRFDA框架和WRF-NMM输出合并的代码的策略。在本文中,我们通过单次观察测试提供了一些选定的实现和初始结果,以及背景误差统计信息(例如特征值,特征向量和长度标度),这些都展示了针对WRFNMM模型的扩展WRFDA代码的成功开发。此外,扩展的WRFDA系统用于预测三场严重的气旋风暴:纳吉斯(2008年4月27日至5月3日),艾拉(2009年5月23日至26日)和贾尔(2010年11月8日至4日)。孟加拉湾。在分析领域内对模型结果进行比较和对比,之后再进行高分辨率模型预测。与GFS分析相比,WRFDA使平均初始位置误差降低了33%。与对照运行相比,在数据同化实验中,航迹预测中的向量位移误差分别减少了33%,31%,30%和20%,分别降至24、48、72和96小时。模型诊断表明WRF-NMM系统中WRFDA的成功实施。

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