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首页> 外文期刊>Proceedings of the Royal Society. Mathematical, physical and engineering sciences >Successive eigenvalue relaxation: a new method for the generalized eigenvalue problem and convergence estimates
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Successive eigenvalue relaxation: a new method for the generalized eigenvalue problem and convergence estimates

机译:连续特征值松弛:广义特征值问题和收敛估计的新方法

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We present a new subspace iteration method for the efficient computation of several smallest eigenvalues of the generalized eigenvalue problem Au = lambda Bu for symmetric positive definite operators A and B. We call this method successive eigenvalue relaxation, or the SER method (homoechon of the classical successive over-relaxation, or son method for linear systems). In particular, there are two significant features of SER which render it computationally attractive: (i) it can effectively deal with preconditioned large-scale eigenvalue problems, and (ii) its practical implementation does not require any information about the preconditioner used: it can routinely accommodate sophisticated preconditioners designed to meet more exacting requirements (e.g. three-dimensional elasticity problems with small thickness parameters). We endow SER with theoretical convergence estimates allowing for multiple and clusters of eigenvalues and illustrate their usefulness in a numerical example for a discretized, partial differential equation exhibiting clusters of eigenvalues. [References: 24]
机译:我们提出了一种新的子空间迭代方法,用于有效地计算对称正定算子A和B的广义特征值问题Au = lambda Bu的几个最小特征值。我们将此方法称为连续特征值松弛或SER方法(经典连续过度松弛,或线性系统的子方法)。特别是SER有两个重要特征,使它在计算上具有吸引力:(i)它可以有效地处理预处理的大规模特征值问题,(ii)其实际实现不需要任何有关所使用的预处理器的信息:它可以通常会使用复杂的预处理器,以满足更严格的要求(例如,厚度参数较小的三维弹性问题)。我们为SER提供理论上的收敛估计,允许特征值的多个和聚类,并在一个数值示例中用于显示特征值聚类的离散偏微分方程的数值示例中说明了它们的有用性。 [参考:24]

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