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A pattern-matching method for flow model calibration under training image constraint

机译:训练图像约束下流模型标定的模式匹配方法

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Modern geostatistical modeling techniques are developed to simulate complex geologic connectivity patterns (e.g., curvilinear fluvial systems) at the grid-level using a training image (TI) that encodes multiple-point statistical (MPS) information. A challenging aspect of using MPS methods is conditioning the resulting models on nonlinear flow data. We develop a pattern-matching method for calibration of MPS-based facies models subject to the TI constraint. Since the exact statistical information in the TI can only be expressed empirically, flow data conditioning and pattern matching are carried out in two iterative steps, using an alternating-direction algorithm. Flow data integration is formulated through a regularized least-squares by taking advantage of learned k-SVD sparse parametrization and l(1)-norm sparsity-promoting regularization methods. The TI constraint is enforced through a MPS-based pattern-matching algorithm that uses the identified model calibration solution to generate a corresponding facies model that is consistent with the TI. The pattern-matching algorithm uses a local search template to scan the TI to find facies patterns with smallest distances from the corresponding local patterns in the parameterized approximate solution. The identified patterns for each location in the model are stored and used to estimate local conditional probabilities for assigning the facies types to each grid cell. The resulting solution is passed to the flow data conditioning step as a regularization term to perform the next iteration. The process is repeated until the MPS facies model provides an acceptable match to the data. Numerical experiments are presented to evaluate the performance of the pattern-matching method for calibration of complex facies models.
机译:开发了现代地统计建模技术,以使用对多点统计(MPS)信息进行编码的训练图像(TI)在网格级别模拟复杂的地质连通性模式(例如曲线河流系统)。使用MPS方法的一个具有挑战性的方面是在非线性流量数据上调节结果模型。我们开发了一种模式匹配方法,用于校准受TI约束的基于MPS的相模型。由于TI中的确切统计信息只能通过经验表示,因此使用交替方向算法,在两个迭代步骤中执行流数据调节和模式匹配。利用学习的k-SVD稀疏参数化和l(1)-norm稀疏度促进正则化方法,通过正则化最小二乘法来制定流数据集成。 TI约束通过基于MPS的模式匹配算法强制执行,该算法使用已识别的模型校准解决方案来生成与TI一致的相应相模型。模式匹配算法使用局部搜索模板扫描TI,以在参数化的近似解中找到距相应局部模式距离最小的相模式。存储模型中每个位置的已识别模式,并将其用于估计将相类型分配给每个网格单元的局部条件概率。所得解决方案作为正则项传递到流数据调节步骤,以执行下一次迭代。重复该过程,直到MPS相模型为数据提供可接受的匹配为止。提出了数值实验,以评估用于复杂相模型校准的模式匹配方法的性能。

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