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Comparison Of Deterministic Ensemble Kalman Filters For Assimilating Hydrogeological Data

机译:确定性集合卡尔曼滤波器同化水文地质数据的比较

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摘要

Groundwater models are critical decision support tools for water resources management and environmental remediation. However, limitations in site characterization data and conceptual models can adversely affect the reliability of groundwater models. Therefore, there is a strong need for continuous model uncertainty reduction. Ensemble filters have recently emerged as promising high-dimensional data assimilation techniques. Two general categories of ensemble filters exist in the literature: perturbation-based and deterministic. Deterministic ensemble filters have been extensively studied for their better performance and robustness in assimilating oceanographic and atmospheric data. In hydrogeology, while a number of previous studies demonstrated the usefulness of the perturbation-based ensemble Kalman filter (EnKF) for joint parameter and state estimation, there have been few systematic studies investigating the performance of deterministic ensemble filters. This paper presents a comparative study of four commonly used deterministic ensemble filters for sequentially estimating the hydraulic conductivity parameter in low- and moderately high-dimensional groundwater models. The performance of the filters is assessed on the basis of twin experiments in which the true hydraulic conductivity field is assumed known. The test results indicate that the deterministic ensemble Kalman filter (DEnKF) is the most robust filter and achieves the best performance at relatively small ensemble sizes. Deterministic ensemble filters often make use of covariance inflation and localization to stabilize filter performance. Sensitivity studies demonstrate the effects of covariance inflation, localization, observation density, and conditioning on filter performance.
机译:地下水模型是水资源管理和环境修复的关键决策支持工具。但是,场地特征数据和概念模型的局限性可能会对地下水模型的可靠性产生不利影响。因此,强烈需要连续减少模型不确定性。集成滤波器最近作为有前途的高维数据同化技术而出现。文献中存在集成滤波器的两个一般类别:基于扰动和确定性。确定性集合滤波器已被广泛研究,因为它们在吸收海洋和大气数据方面具有更好的性能和鲁棒性。在水文地质学中,尽管许多先前的研究证明了基于扰动的集合卡尔曼滤波器(EnKF)对于联合参数和状态估计的有用性,但很少有系统的研究来研究确定性集合滤波器的性能。本文介绍了四种常用的确定性集合过滤器的比较研究,这些过滤器用于依次估算低维和中高维地下水模型中的水力传导率参数。过滤器的性能是根据双实验评估的,其中假设真实的水力传导率场是已知的。测试结果表明,确定性集合卡尔曼滤波器(DEnKF)是最鲁棒的滤波器,并且在相对较小的集合尺寸下可获得最佳性能。确定性集成滤波器通常利用协方差膨胀和局部化来稳定滤波器性能。敏感性研究表明协方差膨胀,局部化,观察密度和条件对滤波器性能的影响。

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