首页> 外文期刊>SIAM Journal on Scientific Computing >PARALLEL DOMAIN DECOMPOSITION STRATEGIES FOR STOCHASTIC ELLIPTIC EQUATIONS. PART A: LOCAL KARHUNEN-LOEVE REPRESENTATIONS
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PARALLEL DOMAIN DECOMPOSITION STRATEGIES FOR STOCHASTIC ELLIPTIC EQUATIONS. PART A: LOCAL KARHUNEN-LOEVE REPRESENTATIONS

机译:随机椭圆方程的平行域分解策略。 A部分:本地Karhunen-Loeve表示

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摘要

This work presents a method to efficiently determine the dominant Karhunen-Loeve (KL) modes of a random process with known covariance function. The truncated KL expansion is one of the most common techniques for the approximation of random processes, primarily because it is an optimal representation, in the mean squared error sense, with respect to the number of random variables in the representation. However, finding the KL expansion involves solving integral problems, which tends to be computationally demanding. This work addresses this issue by means of a work-subdivision strategy based on a domain decomposition approach, enabling the efficient computation of a possibly large number of dominant KL modes. Specifically, the computational domain is partitioned into smaller nonoverlapping subdomains, over which independent local KL decompositions are performed to generate local bases which are subsequently used to discretize the global modes over the entire domain. The latter are determined by means of a Galerkin projection. The procedure leads to the resolution of a reduced Galerkin problem, whose size is not related to the dimension of the underlying discretization space but is actually determined by the desired accuracy and the number of subdomains. It can also be easily implemented in parallel. Extensive numerical tests are used to validate the methodology and assess its serial and parallel performance. The resulting expansion is exploited in Part B to accelerate the solution of the stochastic partial differential equations using a Monte Carlo approach.
机译:该工作介绍了一种有效地确定具有已知协方差函数的随机过程的主导卡鲁琴廊(KL)模式的方法。截断的KL扩展是随机过程近似的最常见技术之一,主要是因为它是在表示表示中的随机变量的数量的平均平方误差误区中的最佳表示。然而,寻找KL扩展涉及解决积分问题,这往往是计算要求的。这项工作通过基于域分解方法的工作细分策略来解决这个问题,从而实现了可能大量的主导KL模式的有效计算。具体地,计算域被划分为较小的非向子域,以便执行独立的本地KL分解以生成随后用于在整个域上分散全局模式的本地基础。后者通过Galerkin投影确定。该过程导致分辨率降低的Galerkin问题,其大小与基础离散空间的尺寸无关,但实际上由所需的准确性和子域的数量决定。它也可以平行地轻松实现。广泛的数值测试用于验证方法,并评估其串行和并行性能。在B部分中利用所得到的膨胀,以使用蒙特卡罗方法加速随机偏微分方程的溶液。

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