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首页> 外文期刊>Communications Letters, IEEE >Disjoint-Set Data Structure-Aided Structured Gaussian Elimination for Solving Sparse Linear Systems
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Disjoint-Set Data Structure-Aided Structured Gaussian Elimination for Solving Sparse Linear Systems

机译:用于解决稀疏线性系统的脱位集数据结构辅助结构高斯消除

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摘要

Structured Gaussian elimination (SGE) is a class of methods for efficiently solving sparse linear systems. The key idea is to first triangulate the original linear systems. The maximum component (MC)-based strategies are widely used to implement the triangulation process. The most straightforward way to find the MC is through exhaustive search. Instead, in this letter, we propose to use a disjoint-set data structure (DSDS) to efficiently maintain the components. The extra storage and time complexity introduced by the DSDS are respectively linear to the number of unknowns and constraints involved in a linear system. Simulation results show that using the DSDS can be several times faster than doing the exhaustive search to find the components.
机译:结构高斯消除(SGE)是一类有效解决稀疏线性系统的方法。关键的想法是首先将原始的线性系统三角化。基于最大组件(MC)的策略被广泛用于实现三角测量过程。找到MC的最直接的方式是通过详尽的搜索。相反,在这封信中,我们建议使用Disboint-Set数据结构(DSD)来有效地维护组件。 DSD介绍的额外存储和时间复杂性分别是线性系统中所涉及的未知数和约束的数量。仿真结果表明,使用DSD可能比做穷举搜索快几倍,以找到组件。

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