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Motivations and realizations of Krylov subspace methods for large sparse linear systems

机译:大型稀疏线性系统的Krylov子空间方法的动机和实现

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We briefly introduce typical and important direct and iterative methods for solving systems of linear equations, concretely describe their fundamental characteristics in viewpoints of both theory and applications, and clearly clarify the substantial differences among these methods. In particular, the motivations of searching the solution of a linear system in a Krylov subspace are described and the algorithmic realizations of the generalized minimal residual (GMRES) method are shown, and several classes of state-of-the-art algebraic pre-conditioners are briefly reviewed. All this is useful for correctly, deeply and completely understanding the application scopes, theoretical properties and numerical behaviors of these methods, and is also helpful in designing new methods for solving systems of linear equations. (C) 2015 Elsevier B.V. All rights reserved.
机译:我们简要介绍了求解线性方程组的典型且重要的直接和迭代方法,从理论和应用的角度具体描述了它们的基本特征,并清楚地阐明了这些方法之间的实质差异。特别是,描述了在Krylov子空间中搜索线性系统解的动机,并展示了通用最小残差(GMRES)方法的算法实现,并提供了几类最新的代数预处理器简要回顾一下。所有这些都有助于正确,深入和完整地了解这些方法的应用范围,理论性质和数值行为,也有助于设计用于求解线性方程组的新方法。 (C)2015 Elsevier B.V.保留所有权利。

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