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首页> 外文期刊>Stochastic environmental research and risk assessment >Assimilating transient groundwater flow data via a localized ensemble Kalman filter to calibrate a heterogeneous conductivity field
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Assimilating transient groundwater flow data via a localized ensemble Kalman filter to calibrate a heterogeneous conductivity field

机译:通过局部集合卡尔曼滤波器吸收瞬时地下水流量数据,以校准非均质电导率场

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摘要

A localized ensemble Kalman filter (EnKF) method is developed to assimilate transient flow data to calibrate a heterogeneous conductivity field. To update conductivity value at a point in a study domain, instead of assimilating all the measurements in the study domain, only limited measurement data in an area around the point are used for the conductivity updating in the localized EnKF method. The localized EnKF is proposed to solve the problems of the filter divergence usually existing in a data assimilation method without localization. The developed method is applied, in a synthetical two dimensional case, to calibrate a heterogeneous conductivity field by assimilating transient hydraulic head data. The simulations by the data assimilation with and without localized EnKF are compared. The study results indicate that the hydraulic conductivity field can be updated efficiently by the localized EnKF, while it cannot be by the EnKF. The covariance inflation and localization are found to solve the problem of the filter divergence efficiently. In comparison with the EnKF method without localization, the localized EnKF method needs smaller ensemble size to achieve stabilized results. The simulation results by the localized EnKF method are much more sensitive to conductivity correlation length than to the localization radius. The developed localized EnKF method provides an approach to improve EnKF method in conductivity calibration.
机译:开发了局部集成卡尔曼滤波器(EnKF)方法来吸收瞬态流量数据以校准非均质电导率场。为了更新研究域中某个点的电导率值,而不是吸收研究域中的所有测量值,而是仅使用该点周围区域中的有限测量数据来进行局部EnKF方法中的电导率更新。提出了局部化的EnKF来解决在没有局部化的数据同化方法中通常存在的滤波器发散问题。在合成的二维情况下,将开发的方法应用于通过吸收瞬态液压头数据来校准非均质电导率场的方法。比较了在有和没有本地化EnKF的情况下数据同化的模拟结果。研究结果表明,局部EnKF可以有效地更新水力传导率场,而EnKF则不能。发现协方差膨胀和局部化可有效解决滤波器发散的问题。与没有本地化的EnKF方法相比,本地化的EnKF方法需要较小的整体大小以实现稳定的结果。局部EnKF方法的模拟结果对电导率相关长度的敏感性比对局部半径的敏感性大得多。开发的局部EnKF方法提供了一种在电导率校准中改进EnKF方法的方法。

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  • 作者单位

    Collage of Water Resources and Environmental Sciences,China University of Geosciences, Beijing 100083, China,Department of Earth, Ocean & Atmospheric Sciences,108 Carraway Building, Florida State University, Tallahassee,FL 32306, USA,State Key Laboratory of Water Resources and Hydropower Engineering Science, Wuhan University, Wuhan 430072, China;

    Collage of Water Resources and Environmental Sciences,China University of Geosciences, Beijing 100083, China,Department of Earth, Ocean & Atmospheric Sciences,108 Carraway Building, Florida State University, Tallahassee,FL 32306, USA;

    State Key Laboratory of Water Resources and Hydropower Engineering Science, Wuhan University, Wuhan 430072, China;

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  • 原文格式 PDF
  • 正文语种 eng
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  • 关键词

    data assimilation; filter divergence; localized NnKF; covariance inflation; transient groundwater flow; hydraulic conductivity;

    机译:数据同化过滤器散度;本地化的NnKF;协方差膨胀地下水瞬态流量导水率;

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