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Regularized HSS iteration methods for stabilized saddle-point problems

机译:正规化的HSS迭代方法,用于稳定的鞍点问题

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摘要

We extend the regularized Hermitian and skew-Hermitian splitting (RHSS) iteration methods for standard saddle-point problems to stabilized saddle-point problems and establish the corresponding unconditional convergence theory for the resulting methods. Besides being used as stationary iterative solvers, this class of RHSS methods can also be used as preconditioners for Krylov subspace methods. It is shown that the eigenvalues of the corresponding preconditioned matrix are clustered at a small number of points in the interval when the iteration parameter is close to and, furthermore, they can be clustered near and when the regularization matrix is appropriately chosen. Numerical results on stabilized saddle-point problems arising from finite element discretizations of an optimal boundary control problem and of a Cahn-Hilliard image inpainting problem, as well as from the Gauss-Newton linearization of a nonlinear image restoration problem, show that the RHSS iteration method significantly outperforms the Hermitian and skew-Hermitian splitting iteration method in iteration counts and computing times when they are used either as linear iterative solvers or as matrix splitting preconditioners for Krylov subspace methods, and optimal convergence behavior can be achieved when using inexact variants of the proposed RHSS preconditioners.
机译:我们将正则化的隐士和歪斜封闭件分裂(RHS)迭代方法延长,以进行标准鞍点问题,以稳定鞍点问题,并为所得方法建立相应的无条件收敛理论。除了被用作固定迭代求解器,这类RHS方法也可用作Krylov子空间方法的预处理器。结果表明,当迭代参数接近并且此外,当迭代参数接近时,相应的预处理矩阵的特征值被聚集在少量的时间间隔内,并且它们可以在近乎选择正则化矩阵时聚类。来自最佳边界控制问题的有限元离散化和CAHN-HILLIARD图像染色问题的有限元离散化产生的稳定鞍点问题的数值结果,以及非线性图像恢复问题的高斯 - 牛顿线性化,表明RHSS迭代方法显着优于迭代仪和偏光偏见的分割迭代方法,在迭代计数和计算时间中,它们使用作为线性迭代求解器或作为Krylov子空间方法的矩阵分割预处理器,并且在使用不精确的变体时可以实现最佳收敛行为提出的RHSS预处理者。

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