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Application of hierarchical matrices for computing the Karhunen-Loève expansion

机译:层次矩阵在计算Karhunen-Loève展开中的应用

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摘要

Realistic mathematical models of physical processes contain uncertainties. These models are often described by stochastic differential equations (SDE) or stochastic partial differential equations (SPDE) with multiplicative noise. The uncertainties in the right-hand side or the coefficients are represented as random fields. To solve a given SPDE numerically one has to discretise the deterministic operator as well as the stochastic fields. The total dimension of the SPDE is the product of the dimensions of the deterministic part and the stochastic part. To approximate random fields with as few random variables as possible, but still retaining the essential information, the Karhunen-Loève expansion (KLE) becomes important. The KLE of a random field requires the solution of a large eigen value problem. Usually it is solved by a Krylov subspace method with a sparse matrix approximation. We demonstrate the use of sparse hierarchical matrix techniques for this. A log-linear computational cost of the matrix-vector product and a log-linear storage requirement yield an efficient and fast discretisation of the random fields presented. [PUBLICATION ABSTRACT]
机译:物理过程的现实数学模型包含不确定性。这些模型通常用具有乘性噪声的随机微分方程(SDE)或随机偏微分方程(SPDE)来描述。右侧的不确定性或系数表示为随机字段。为了用数值方法求解给定的SPDE,必须离散确定性算子和随机场。 SPDE的总尺寸是确定性部件和随机性部件的尺寸的乘积。为了用尽可能少的随机变量来近似随机字段,但仍保留基本信息,Karhunen-Loève展开(KLE)变得很重要。随机场的KLE要求解决大特征值问题。通常,它是通过具有稀疏矩阵近似的Krylov子空间方法求解的。我们演示了为此使用稀疏层次矩阵技术。矩阵向量乘积的对数线性计算成本和对数线性存储需求产生了所呈现随机字段的高效且快速离散化。 [出版物摘要]

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