基于集成的数据同化中的参数协方差估计

J. Skauvold, J. Eidsvik
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引用次数: 0

摘要

集成卡尔曼滤波等基于集成的数据同化方法必须估计状态变量与观测变量之间的协方差以更新集成成员。在高维地统计估计设置中,系统状态由空间随机场组成,估计协方差矩阵中的虚假条目会降低后验集成的预测性能。我们建议通过指定状态协方差的参数形式,并将该模型拟合到预测集合来避免虚假相关。该想法在一个部分合成的北海测试案例中得到了验证,该测试案例涉及正演地层模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parametric Covariance Estimation in Ensemble-based Data Assimilation
Summary Ensemble-based data assimilation methods like the ensemble Kalman filter must estimate covariances between state variables and observed variables to update ensemble members. In high-dimensional, geostatistical estimation settings where the system state consists of spatial random fields, spurious entries in estimated covariance matrices can degrade the predictive performance of posterior ensembles. We propose to avoid spurious correlations by specifying a parametric form for the state covariance, and fitting this model to the forecast ensemble. The idea is demonstrated on a partially synthetic North Sea test case involving forward stratigraphic modeling.
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