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Combining sensitivities and prior information for covariance localization in the ensemble Kalman filter for petroleum reservoir applications

机译:结合灵敏度和先验信息进行集成卡尔曼滤波器进行协方差局部化,用于石油储层应用

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Sampling errors can severely degrade the reliability of estimates of conditional means and uncertainty quantification obtained by the application of the ensemble Kalman filter (EnKF) for data assimilation. A standard recommendation for reducing the spurious correlations and loss of variance due to sampling errors is to use covariance localization. In distance-based localization, the prior (forecast) covariance matrix at each data assimilation step is replaced with the Schur product of a correlation matrix with compact support and the forecast covariance matrix. The most important decision to be made in this localization procedure is the choice of the critical length(s) used to generate this correlation matrix. Here, we give a simple argument that the appropriate choice of critical length(s) should be based both on the underlying principal correlation length(s) of the geological model and the range of the sensitivity matrices. Based on this result, we implement a procedure for covariance localization and demonstrate with a set of distinctive reservoir history-matching examples that this procedure yields improved results over the standard EnKF implementation and over covariance localization with other choices of critical length.
机译:采样误差会严重降低条件均值估计的可靠性和不确定性量化,不确定性量化是通过将集合卡尔曼滤波器(EnKF)用于数据同化而获得的。减少因采样误差引起的虚假相关和方差损失的标准建议是使用协方差本地化。在基于距离的定位中,将每个数据同化步骤中的先验(预测)协方差矩阵替换为具有紧凑支持的相关矩阵和预测协方差矩阵的Schur乘积。在此定位过程中要做出的最重要决定是选择用于生成此相关矩阵的临界长度。在这里,我们给出一个简单的论点,即应同时基于地质模型的基本主相关长度和敏感度矩阵的范围来适当选择临界长度。基于此结果,我们实现了协方差本地化的过程,并通过一组独特的储层历史匹配示例证明,与标准的EnKF实施以及与其他关键长度选择的协方差本地化相比,该过程可产生更好的结果。

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