首页> 外文期刊>Quarterly Journal of the Royal Meteorological Society >Ensemble singular vectors as additive inflation in the Local Ensemble Transform Kalman Filter (LETKF) framework with a global NWP model
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Ensemble singular vectors as additive inflation in the Local Ensemble Transform Kalman Filter (LETKF) framework with a global NWP model

机译:集合奇异矢量作为当地集合中的添加剂通货膨胀与全球NWP模型转换卡尔曼滤波器(Letkf)框架

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摘要

We test an ensemble data assimilation system using the four-dimensional Local Ensemble Transform Kalman Filter (4D-LETKF) for a global numerical weather prediction (NWP) model with unstructured grids on the cubed-sphere. It is challenging to selectively represent structures of dynamically growing errors in background states under system uncertainties such as sampling and model errors. We compute Ensemble Singular Vectors (ESVs) in an attempt to capture fast-growing errors on the subspace spanned by ensemble perturbations, and use them as additive inflation to enlarge the covariance in the area where errors are flow-dependently growing. The performance of the 4D-LETKF system with ESVs is evaluated in real data assimilation, as well as Observing System Simulation Experiments (OSSEs). We find that leading ESVs help to capture fast-growing errors effectively, especially when model errors are present, and that the use of ESVs as additive inflation significantly improves the performance of the 4D-LETKF.
机译:我们使用四维本地集合转换卡尔曼滤波器(4D-Letkf)来测试集合数据同化系统,用于在立方体上的非结构化网格上的全局数值象预测(NWP)模型。在系统不确定性等系统不确定性下,选择性地代表背景状态的动态增长误差的结构是挑战性的。我们计算集合奇异向量(ESV),试图捕获由集合扰动跨越的子空间捕获快速增长的错误,并使用它们作为添加剂通胀来扩大误差依赖性地生长的区域中的协方差。在实际数据同化中评估4D-LetkF系统的性能,以及观察系统仿真实验(OSSES)。我们发现领先的ESVS有效地帮助捕获快速增长的错误,特别是当存在模型错误时,ESV作为添加剂通货膨胀显着提高了4D-Letkf的性能。

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