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Modeling transient groundwater flow by coupling ensemble Kalman Ottering and upscaling

机译:结合集合卡尔曼水獭法和放大法模拟瞬态地下水流。

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摘要

The ensemble Kalman filter (EnKF) is coupled with upscaling to build an aquifer model at a coarser scale than the scale at which the conditioning data (conductivity and piezometric head) had been taken for the purpose of inverse modeling. Building an aquifer model at the support scale of observations is most often impractical since this would imply numerical models with many millions of cells. If, in addition, an uncertainty analysis is required involving some kind of Monte Carlo approach, the task becomes impossible. For this reason, a methodology has been developed that will use the conductivity data at the scale at which they were collected to build a model at a (much) coarser scale suitable for the inverse modeling of groundwater flow and mass transport. It proceeds as follows: (1) Generate an ensemble of realizations of conductivities conditioned to the conductivity data at the same scale at which conductivities were collected. (2) Upscale each realization onto a coarse discretization; on these coarse realizations, conductivities will become tensorial in nature with arbitrary orientations of their principal components. (3) Apply the EnKF to the ensemble of coarse conductivity upscaled realizations in order to condition the realizations to the measured piezometric head data. The proposed approach addresses the problem of how to deal with tensorial parameters, at a coarse scale, in ensemble Kalman filtering while maintaining the conditioning to the fine-scale hydraulic conductivity measurements. We demonstrate our approach in the framework of a synthetic worth-of-data exercise, in which the relevance of conditioning to conductivities, piezometric heads, or both is analyzed.
机译:集合卡尔曼滤波器(EnKF)与按比例放大相结合,以比为反建模目的而采用条件数据(电导率和测压头)的尺度更大的尺度建立含水层模型。在观测的支持范围内建立含水层模型通常是不切实际的,因为这将暗示具有数百万个单元的数值模型。此外,如果需要涉及某种蒙特卡洛方法的不确定性分析,则该任务将变得不可能。因此,已经开发出一种方法,该方法将使用收集电导率数据时使用的电导率数据,以一个(大得多的)较粗略的规模建立模型,适用于地下水流和物质输送的反演。其过程如下:(1)生成以电导率数据为条件的整体电导率实现,该电导率数据的收集尺度与电导率相同。 (2)将每个实现升级为粗离散化;在这些粗略的实现上,电导率本质上将随其主要成分的任意取向而变成张量。 (3)将EnKF应用于粗略电导率放大实现的集合,以便将实现调整为测得的测压头数据。所提出的方法解决了如何在集成卡尔曼滤波中以粗尺度处理张量参数的问题,同时保持对细尺度水力传导率测量的条件。我们在综合数据价值演习的框架中展示了我们的方法,其中分析了条件对电导率,测压头或两者的相关性。

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  • 来源
    《Water resources research》 |2012年第1期|p.W01537.1-W01537.19|共19页
  • 作者单位

    Group of Hydrogeology,Universitat Politecnica de Valencia, Camino de Vera, s, E-46022 Valencia, Spain,Agrosphere, IBG-3, Forschungszentrum Jiilich GmbH, D-52428 Jiilich, Germany;

    Group of Hydrogeology,Universitat Politecnica de Valencia, Camino de Vera, s, E-46022 Valencia, Spain,Agrosphere, IBG-3, Forschungszentrum Jiilich GmbH, D-52428 Jiilich, Germany;

    Agrosphere, IBG-3, Forschungszentrum Jiilich GmbH, D-52428 Jiilich, Germany;

    Group of Hydrogeology,Universitat Politecnica de Valencia, Camino de Vera, s, E-46022 Valencia, Spain;

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