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Learning sparse geologic dictionaries from low-rank representations of facies connectivity for flow model calibration

机译:从相连通性的低秩表示中学习稀疏的地质词典,以进行流模型校准

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摘要

[1] Sparse geologic dictionaries provide a novel approach for subsurface flow model representation and calibration. Learning sparse dictionaries from prior training data sets is an effective approach to describe complex geologic connectivity patterns in subsurface imaging applications. However, the computational cost of sparse learning algorithms becomes prohibitive for large models. Performing the sparse dictionary learning process on smaller image patches (segments) provides a simple approach to address this problem in image processing applications. However, in underdetermined subsurface flow model calibration inverse problems, reconstruction of a segmented image can introduce significant structural distortion and discontinuity at the boundaries of the segments. This paper proposes an alternative sparse learning approach where the sparse dictionaries are learned from low-rank representations of the large-scale training data set in spectral domains (e.g., frequency domain). The objective is to develop a computationally efficient dictionary learning approach that emphasizes large-scale spatial connectivity patterns. This is achieved by removing the strong spatial correlations in the training data, thereby eliminating a large number of insignificant components from the sparse learning computation. In addition to improving the computational complexity, sparse learning from low-rank training data sets suppresses the small-scale details from entering the reconstruction of large-scale connectivity patterns, thereby providing a regularization effect in solving the resulting ill-posed inverse problems. We apply the proposed approach to travel-time tomography inversion and nonlinear subsurface flow model calibration inverse problems to demonstrate its effectiveness and practicality.
机译:[1]稀疏地质词典为地下流模型表示和校准提供了一种新颖的方法。从先前的训练数据集中学习稀疏词典是描述地下成像应用中复杂地质连通性模式的有效方法。但是,对于大型模型,稀疏学习算法的计算成本变得过高。在较小的图像块(片段)上执行稀疏词典学习过程可提供一种简单的方法来解决图像处理应用程序中的此问题。但是,在欠定的地下流动模型校正反问题中,分段图像的重建会在分段的边界处引入明显的结构变形和不连续性。本文提出了另一种稀疏学习方法,其中从频谱域(例如频域)中的大规模训练数据集的低秩表示中学习稀疏词典。目的是开发一种计算有效的字典学习方法,该方法强调大规模的空间连接模式。这是通过消除训练数据中的强空间相关性来实现的,从而从稀疏学习计算中消除了大量无关紧要的成分。除了提高计算复杂度之外,从低秩训练数据集进行稀疏学习还可以抑制小规模细节进入大规模连接模式的重建过程,从而在解决由此产生的不适定逆问题方面提供了正则化效果。我们将所提出的方法应用于行程时间层析成像反演和非线性地下流动模型校准反问题,以证明其有效性和实用性。

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  • 来源
    《Water resources research》 |2013年第10期|7088-7101|共14页
  • 作者

    Entao Liu; Behnam Jafarpour;

  • 作者单位

    Viterbi School of Engineering, University of Southern California, Los Angeles, California, USA;

    Viterbi School of Engineering, University of Southern California, HED 313, Los Angeles, CA 90089, USA;

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  • 正文语种 eng
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