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Inhomogeneous Background Error Modeling for WRF-Var Using the NMC Method

机译:使用NMC方法对WRF-Var进行非均匀背景误差建模

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Background error modeling plays a key role in a variational data assimilation system. The National Meteorological Center (NMC) method has been widely used in variational data assimilation systems to generate a forecast error ensemble from which the climatological background error covariance can be modeled. In this paper, the characteristics of the background error modeling via the NMC method are investigated for the variational data assimilation system of the Weather Research and Forecasting (WRF-Var) Model. The background error statistics are extracted from short-term 3-km-resolution forecasts in June, July, and August 2012 over a limited-area domain. It is found 1) that background error variances vary from month to month and also have a feature of diurnal variations in the low-level atmosphere and 2) that u- and v-wind variances are underestimated and their autocorrelation length scales are overestimated when the default control variable option in WRF-Var is used. A new approach of control variable transform (CVT) is proposed to model the background error statistics based on the NMC method. The new approach is capable of extracting inhomogeneous and anisotropic climatological information from the forecast error ensemble obtained via the NMC method. Single observation assimilation experiments show that the proposed method not only has the merit of incorporating geographically dependent covariance information, but also is able to produce a multivariate analysis. The results from the data assimilaton and forecast study of a real convective case show that the use of the new CVT improves synoptic weather system and precipitation forecasts for up to 12h
机译:背景误差建模在变异数据同化系统中起着关键作用。美国国家气象中心(NMC)方法已广泛用于变化数据同化系统中,以生成可用于模拟气候背景误差协方差的预测误差集合。本文针对气象研究与预报(WRF-Var)模型的变分数据同化系统,研究了通过NMC方法进行背景误差建模的特性。背景误差统计数据是从2012年6月,7月和2012年8月在有限区域范围内的3 km分辨率短期预测中提取的。发现1)背景误差方差逐月变化,并且在低空大气中还具有昼夜变化的特征; 2)当风向标和方向方差被低估时,其自相关长度尺度被高估。使用WRF-Var中的默认控制变量选项。提出了一种新的控制变量变换(CVT)方法,以基于N​​MC方法的背景误差统计模型。新方法能够从通过NMC方法获得的预测误差集合中提取不均匀的各向异性气候信息。单观测同化实验表明,该方法不仅具有结合地理相关协方差信息的优点,而且能够进行多变量分析。来自对流案例的数据同化和预测研究的结果表明,使用新的CVT可以改善天气天气系统和长达12小时的降水预报

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