LEFTMOST EIGENVALUE OF REAL AND COMPLEX SPARSE MATRICES ON PARALLEL COMPUTER USING APPROXIMATE INVERSE PRECONDITIONING

G. Pini
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引用次数: 1

Abstract

An efficient parallel approach for the computation of the eigenvalue of smallest absolute magnitude of sparse real and complex matrices is provided. The proposed strategy tries to improve the efficiency of the reverse power method. At each inverse power iteration the linear system is solved either by the conjugate gradient scheme (symmetric case) or by the Bi-CGSTAB method (symmetric case). Both solvers are preconditioned employing the approximate inverse factorization and thus are easily parallelized. The satisfactory speed-ups obtained on the CRAY T3E supercomputer show the high degree of parallelization reached by the proposed algorithm.
利用近似逆预处理在并行计算机上求实和复稀疏矩阵的最左特征值
给出了一种计算稀疏实矩阵和复矩阵最小绝对值特征值的有效并行方法。提出的策略试图提高反向功率法的效率。在每次逆幂次迭代中,线性系统要么用共轭梯度格式(对称情况)求解,要么用Bi-CGSTAB方法(对称情况)求解。这两种解都采用近似逆分解进行了预处理,因此很容易并行化。在CRAY T3E超级计算机上获得了令人满意的加速,表明该算法达到了很高的并行化程度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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