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A Simultaneous Solution for General Linear Equations with Subspace Decomposition

机译:具有子空间分解的一般线性方程组的同时解

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摘要

For solving linear systems of equations there are several known algorithms. For large linear systems with a sparse matrix iteration algorithms are recommended. But in the case of general n x m matrices the classic iterative algorithms are not applicable with a few exceptions. For example in some cases the Lanczos type algorithms are adequate.rnThe algorithm presented here based is on the minimization of residual solution with subspace decomposition. Therefore this algorithm seems to be applicable for the construction of parallel algorithms. In this paper we describe a sequential version of proposed algorithm first and give its theoretical analysis. The algorithm has some genetic characteristics.rnAfter this we will formulate a parallel version of algorithm with subspace decomposition in order to study the details of convergence and the speed up effect of the parallel algorithms. The numerical test results of these algorithms including the speed-up effects of the parallel execution will be shown. The comparison of the classical method and the new approach will also be presented considering the running speed and efficiency too. The computer tests have been carried out with parallel and cluster computing methods as well.
机译:为了求解方程的线性系统,有几种已知的算法。对于具有稀疏矩阵的大型线性系统,建议使用迭代算法。但是,在一般的n x m矩阵的情况下,经典的迭代算法不适用,但有少数例外。例如,在某些情况下,Lanczos型算法就足够了。在此提出的算法是基于子空间分解的残差解的最小化。因此,该算法似乎适用于并行算法的构造。在本文中,我们首先描述了该算法的顺序版本,并给出了理论分析。该算法具有一定的遗传特性。在此之后,我们将通过子空间分解来构造并行算法,以研究收敛的细节和并行算法的加速效果。将显示这些算法的数值测试结果,包括并行执行的加速效果。还将考虑运行速度和效率,对经典方法和新方法进行比较。计算机测试也已使用并行和群集计算方法进行。

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