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Weight interpolation for efficient data assimilation with the Local Ensemble Transform Kalman Filter

机译:权重插值可通过局部集成变换卡尔曼滤波器有效地吸收数据

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摘要

We have investigated a method to substantially reduce the analysis computations within the Local Ensemble Transform Kalman Filter (LETKF) framework. Instead of computing the LETKF analysis at every model grid point, we compute the analysis on a coarser grid and interpolate onto a high-resolution grid by interpolating the analysis weights of the ensemble forecast members derived from the LETKF. Because the weights vary on larger scales than the analysis increments, there is little degradation in the quality of the weight-interpolated analyses compared to the analyses derived with the high-resolution grid. The weight-interpolated analyses are more accurate than the ones derived by interpolating the analysis increments. Additional benefit from the weight-interpolation method includes improving the analysis accuracy in the data-void regions, where the standard LEKTF with the high-resolution grid gives no analysis corrections due to a lack of available observations.
机译:我们研究了一种在本地整体变换卡尔曼滤波器(LETKF)框架内大幅减少分析计算量的方法。代替在每个模型网格点上计算LETKF分析,我们通过对从LETKF得出的集合预测成员的分析权重进行插值,在较粗的网格上计算分析并插值到高分辨率网格上。由于权重在比分析增量更大的尺度上变化,因此与使用高分辨率网格得出的分析相比,权重插值分析的质量几乎没有下降。权重插值分析比通过插值分析增量得出的分析更准确。权重插值方法的其他好处包括提高了数据无效区域的分析精度,在该区域中,由于缺乏可用的观测值,带有高分辨率网格的标准LEKTF无法进行分析校正。

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