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The Local Ensemble Transform Kalman Filter with the Weather Research and Forecasting Model: Experiments with Real Observations

机译:具有天气研究和预报模型的局部集成变换卡尔曼滤波器:真实观测的实验

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The local ensemble transform Kalman filter (LETKF) is implemented with the Weather Research and Forecasting (WRF) model, and real observations are assimilated to assess the newly-developed WRF-LETKF system. The WRF model is a widely-used mesoscale numerical weather prediction model, and the LETKF is an ensemble Kalman filter (EnKF) algorithm particularly efficient in parallel computer architecture. This study aims to provide the basis of future research on mesoscale data assimilation using the WRF-LETKF system, an additional testbed to the existing EnKF systems with the WRF model used in the previous studies. The particular LETKF system adopted in this study is based on the system initially developed in 2004 and has been continuously improved through theoretical studies and wide applications to many kinds of dynamical models including realistic geophysical models. Most recent and important improvements include an adaptive covariance inflation scheme which considers the spatial and temporal inhomogeneity of inflation parameters. Experiments show that the LETKF successfully assimilates real observations and that adaptive inflation is advantageous. Additional experiments with various ensemble sizes show that using more ensemble members improves the analyses consistently.
机译:利用天气研究和预报(WRF)模型实现了局部集合变换卡尔曼滤波器(LETKF),并吸收了实际观测资料以评估新开发的WRF-LETKF系统。 WRF模型是一种广泛使用的中尺度数值天气预报模型,而LETKF是一种集成卡尔曼滤波器(EnKF)算法,在并行计算机体系结构中特别有效。这项研究旨在为使用WRF-LETKF系统进行中尺度数据同化的未来研究提供基础,这是对先前研究中使用的WRF模型对现有EnKF系统的额外测试。本研究中采用的特殊LETKF系统基于2004年最初开发的系统,并通过理论研究和对包括实际地球物理模型在内的多种动力学模型的广泛应用而不断得到改进。最新的重要改进包括一种自适应协方差膨胀方案,该方案考虑了膨胀参数在空间和时间上的不均匀性。实验表明,LETKF成功地吸收了真实的观测结果,而自适应通货膨胀是有利的。其他各种合奏大小的实验表明,使用更多的合奏成员可以持续改进分析。

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