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Domain Decomposition of Stochastic PDEs:A Novel Preconditioner and Its Parallel Performance

机译:PDEs的区域分解:一种新型预处理器及其并行性能

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摘要

A parallel iterative algorithm is described for efficient solution of the Schur complement (interface) problem arising in the domain decomposition of stochastic partial differential equations (SPDEs) recently introduced in[l,2]. The iterative solver avoids the explicit construction of both local and global Schur complement matrices. An analog of Neumann-Neumann domain decomposition preconditioner is introduced for SPDEs. For efficient memory usage and minimum floating point operation, the numerical implementation of the algorithm exploits the multilevel sparsity structure of the coefficient matrix of the stochastic system. The algorithm is implemented using PETSc parallel libraries. Parallel graph partitioning tool ParMETIS is used for optimal decomposition of the finite element mesh for load balancing and minimum interprocessor communication. For numerical demonstration, a two dimensional elliptic SPDE with non-Gaussian random coefficients is tackled. The strong and weak scalability of the algorithm is investigated using Linux cluster.
机译:描述了一种并行迭代算法,用于有效解决最近在[1,2]中引入的随机偏微分方程(SPDE)的域分解中出现的舒尔补码(接口)问题。迭代求解器避免了局部和全局Schur补矩阵的显式构造。引入了用于SPDE的Neumann-Neumann域分解预处理器的类似物。为了有效地使用内存并最小化浮点运算,该算法的数值实现采用了随机系统系数矩阵的多级稀疏结构。该算法使用PETSc并行库实现。并行图分区工具ParMETIS用于优化有限元网格的分解,以实现负载平衡和最少的处理器间通信。为了进行数值演示,解决了具有非高斯随机系数的二维椭圆SPDE。使用Linux集群研究了该算法的强和弱可伸缩性。

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