首页> 外文期刊>Asia-Pacific journal of atmospheric sciences >Real Data Assimilation Using the Local Ensemble Transform Kalman Filter (LETKF) System for a Global Non-hydrostatic NWP model on the Cubed-sphere
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Real Data Assimilation Using the Local Ensemble Transform Kalman Filter (LETKF) System for a Global Non-hydrostatic NWP model on the Cubed-sphere

机译:使用局部集成变换卡尔曼滤波器(LETKF)系统对立方球面上的全局非静水NWP模型进行实时数据同化

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摘要

An ensemble data assimilation system using the 4-dimensional Local Ensemble Transform Kalman Filter is implemented to a global non-hydrostatic Numerical Weather Prediction model on the cubed-sphere. The ensemble data assimilation system is coupled to the Korea Institute of Atmospheric Prediction Systems Package for Observation Processing, for real observation data from diverse resources, including satellites. For computational efficiency in a parallel computing environment, we employ some advanced software engineering techniques in the handling of a large number of files. The ensemble data assimilation system is tested in a semi-operational mode, and its performance is verified using the Integrated Forecast System analysis from the European Centre for Medium-Range Weather Forecasts. It is found that the system can be stabilized effectively by additive inflation to account for sampling errors, especially when radiance satellite data are additionally used.
机译:将使用4维局部集成变换卡尔曼滤波器的集成数据同化系统实现到立方体球面上的全局非静水数值天气预报模型。集合数据同化系统与韩国大气预测系统研究所的观测处理软件包结合使用,可获取来自包括卫星在内的多种资源的真实观测数据。为了在并行计算环境中提高计算效率,我们在处理大量文件时采用了一些先进的软件工程技术。集成数据同化系统在半操作模式下进行了测试,并使用了欧洲中距离天气预报中心的综合预报系统分析来验证其性能。发现该系统可以通过累加膨胀来有效地稳定以解决采样误差,尤其是在另外使用辐射卫星数据的情况下。

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