基于分层矩阵和随机抽样的不确定系统鲁棒并行预调节器

P. Ghysels, X. Li, C. Gorman, François-Henry Rouet
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引用次数: 32

摘要

提出了一种基于低秩矩阵压缩的近似稀疏分解的并行全代数预调节器的设计与实现。稀疏分解采用多额算法,填充发生在密集额矩阵中。这些正面矩阵被近似为分层半可分离矩阵,并使用随机抽样技术构建。对于许多离散的偏微分方程,所得到的预条件在flop和内存使用方面具有(接近)最优的复杂性。我们举例说明了这种新的预调节器对许多非结构化网格问题的鲁棒性和性能。初步结果表明,秩结构预条件可以作为代数多重网格和不完全逻辑单元的可行替代方案。我们的实现使用MPI和OpenMP,并支持实数和复杂算术以及32位和64位整数。我们提出了详细的性能分析。该代码以STRUMPACK库的形式发布,带有BSD许可证,并且提供了PETSc接口,可以方便地集成到现有的应用程序中。
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A Robust Parallel Preconditioner for Indefinite Systems Using Hierarchical Matrices and Randomized Sampling
We present the design and implementation of a parallel and fully algebraic preconditioner based on an approximate sparse factorization using low-rank matrix compression. The sparse factorization uses a multifrontal algorithm with fill-in occurring in dense frontal matrices. These frontal matrices are approximated as hierarchically semi-separable matrices, which are constructed using a randomized sampling technique. The resulting preconditioner has (close to) optimal complexity in terms of flops and memory usage for many discretized partial differential equations. We illustrate the robustness and performance of this new preconditioner for a number of unstructured grid problems. Initial results show that the rank-structured preconditioner could be a viable alternative to algebraic multigrid and incomplete LU, for instance. Our implementation uses MPI and OpenMP and supports real and complex arithmetic and 32 and 64 bit integers. We present a detailed performance analysis. The code is released as the STRUMPACK library with a BSD license, and a PETSc interface is available to allow for easy integration in existing applications.
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