首页> 外文期刊>日本建築学会构造系論文集 >A METHOD FOR DETERMINING EIGENSOLUTIONS OF LARGE, SPARSE, SYMMETRIC MATRICES BY THE PRECONDITIONED CONJUGATE GRADIENT METHOD IN THE GENERALIZED EIGENVALUE PROBLEM
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A METHOD FOR DETERMINING EIGENSOLUTIONS OF LARGE, SPARSE, SYMMETRIC MATRICES BY THE PRECONDITIONED CONJUGATE GRADIENT METHOD IN THE GENERALIZED EIGENVALUE PROBLEM

机译:广义特征值问题中的先决条件共轭梯度法确定大型稀疏对称矩阵的特征值的方法

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This paper presents a conjugate gradient method for the eigensolutions of large, sparse and symmetric matrices using Sylvester's law of inertia and the quadratic form. Since the proposed method is a PCG-based method, it is particularly effective when a sequence of either the smallest or largest eigensolutions of a large and sparse matrix are required. Moreover, the proposed method does not find unnecessary solutions, and it thus minimizes the required computational memory capacity. The proposed method is a method requiring only a relatively small computational time. The accuracy and stability of this method are confirmed by considering several numerical examples. The numerical results are of high accuracy even for the systems with multiple eigenvalues.
机译:本文提出了一种使用西尔维斯特惯性定律和二次形式的大,稀疏和对称矩阵本征解的共轭梯度法。由于建议的方法是基于PCG的方法,因此在需要大型稀疏矩阵的最小或最大本征解序列时,此方法特别有效。而且,所提出的方法没有找到不必要的解决方案,因此使所需的计算存储容量最小化。所提出的方法是仅需要相对较小的计算时间的方法。通过考虑几个数值示例,可以确认该方法的准确性和稳定性。即使对于具有多个特征值的系统,数值结果也具有很高的精度。

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