Liviu Octavian Mafteiu-Scai, Calin Alexandru Cornigeanu
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引用次数: 2
Abstract
This paper proposes two parallel hybrid heuristics aiming for the reduction of the average bandwidth of sparse matrices, process used in systems of equations preconditioning. Based on a direct processing of the matrix, the first method combines a heuristic inspired from the laws of physics, with a greedy selection of rows/columns to be interchanged. The second one improves the previous heuristic through the use of an exact formula for determining the most favorable interchanges. Experimental results obtained on an IBM Blue Gene /P supercomputer illustrate the fact that the proposed parallel heuristics lead to better results, with respect to time efficiency, speedup, efficiency and solution.
本文提出了两种并行混合启发式算法,以减少方程预处理系统中稀疏矩阵的平均带宽。基于对矩阵的直接处理,第一种方法结合了受物理定律启发的启发式方法,以及要交换的行/列的贪婪选择。第二种方法通过使用精确的公式来确定最有利的交换,从而改进了前面的启发式方法。在IBM Blue Gene /P超级计算机上的实验结果表明,所提出的并行启发式算法在时间效率、加速、效率和求解方面都有较好的效果。