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A two-level sparse approximate inverse preconditioner for unsymmetric matrices

机译:非对称矩阵的两级稀疏近似逆预处理器

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摘要

Sparse approximate inverse (SPAI) preconditioners are effective in accelerating iterative solutions of a large class of unsymmetric linear systems and their inherent parallelism has been widely explored. The effectiveness of SPAI relies on the assumption of the unknown true inverse admitting a sparse approximation. Furthermore, for the usual right SPAI, one must restrict the number of non-zeros in each column to control the overall construction cost and this restriction can reduce the effectiveness of such preconditioners. To extend the applicability of SPAI, this paper proposes to use two-level preconditioning: possible dense columns of the true inverse, skipped by right SPAI (column-wise), will be better approximated by left SPAI (row-wise). Essentially, we approximate the true inverse by sparse matrices via a Gauss–Jordan like decomposition. Numerical experiments on a class of benchmark test matrices show that our new idea of two-level preconditioning can lead to a major enhancement to the standard SPAI method.
机译:稀疏近似逆(SPAI)前置条件可有效地加速一大类非对称线性系统的迭代解,并且已经广泛探索了其固有的并行性。 SPAI的有效性依赖于假定稀疏近似的未知真逆的假设。此外,对于通常的权利SPAI,必须限制每一列中的非零数以控制总体构造成本,并且这种限制会降低此类预处理器的有效性。为了扩展SPAI的适用性,本文提出使用两级预处理:可能的真实逆的密集列(由右SPAI(列方式)跳过)将更好地由左SPAI(行方式)近似。本质上,我们通过高斯-乔丹式分解通过稀疏矩阵来近似真逆。在一类基准测试矩阵上进行的数值实验表明,我们的两级预处理新思想可以大大增强标准SPAI方法。

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