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On iterative techniques for computing flow in large two-dimensional discrete fracture networks

机译:大型二维离散裂缝网络中流量计算的迭代技术

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摘要

Computation of flow in discrete fracture networks often involves solving for hydraulic head values at all intersection points of a large number of stochastically generated fractures inside a bounded domain. For large systems, this approach leads to the generation of problems involving highly sparse matrices which must be solved iteratively. Distributions of fracture lengths spanning over several orders of magnitude, and the randomness of fracture orientations and locations, lead to coefficient matrices that are devoid of any regular structure in the sparsity pattern. In addition to the rapid increase in computational effort with increase in the size of the fracture network, the spread in the distribution of fracture parameters, such as length and transmissivity, dramatically influences the convergence behavior of the system of linear equations. An overview of the discrete fracture network (DFN) methodology for computation of flow is presented along with a comparative study of various Krylov subspace iterative methods for the resulting class of sparse matrices. The rate of convergence of the iterative techniques is found to exhibit a systematic pattern with respect to changes in statistical parameters of the stochastically generated fracture networks. Salient features of the observed trends in the convergence pattern are discussed and guidelines for design of DFN algorithms are provided.
机译:离散裂缝网络中的流量计算通常涉及求解有界域内大量随机生成的裂缝的所有交点处的水压头值。对于大型系统,这种方法会导致产生涉及高度稀疏矩阵的问题,这些问题必须迭代解决。裂缝长度的分布跨越几个数量级,裂缝方向和位置的随机性导致系数矩阵缺少稀疏模式中的任何规则结构。除了随着裂缝网络规模的增加,计算工作量迅速增加外,裂缝参数分布(如长度和透射率)的分布范围也大大影响了线性方程组的收敛性。本文介绍了用于计算流量的离散裂缝网络(DFN)方法的概述,以及对所得稀疏矩阵类别的各种Krylov子空间迭代方法的比较研究。发现迭代技术的收敛速率相对于随机生成的裂缝网络的统计参数的变化表现出系统的模式。讨论了收敛模式中观察到的趋势的显着特征,并提供了DFN算法设计指南。

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