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Accelerated Hermitian and skew-Hermitian splitting iteration methods for saddle-point problems

机译:鞍点问题的加速埃尔米特和斜埃尔米特分裂迭代方法

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摘要

We establish a class of accelerated Hermitian and skew-Hermitian splitting (AHSS) iteration methods for large sparse saddle-point problems by making use of the Hermitian and skew-Hermitian splitting (HSS) iteration technique. These methods involve two iteration parameters whose special choices can recover the known preconditioned HSS iteration methods, as well as yield new ones. Theoretical analyses show that the new methods converge unconditionally to the unique solution of the saddle-point problem. Moreover, the optimal choices of the iteration parameters involved and the corresponding asymptotic convergence rates of the new methods are computed exactly. In addition, theoretical properties of the preconditioned Krylov subspace methods such as GMRES are investigated in detail when the AHSS iterations are employed as their preconditioners. Numerical experiments confirm the correctness of the theory and the effectiveness of the methods.
机译:通过利用Hermitian和Skew-Hermitian分裂(HSS)迭代技术,针对大型稀疏鞍点问题建立了一类加速的Hermitian和skew-Hermitian分裂(AHSS)迭代方法。这些方法涉及两个迭代参数,它们的特殊选择可以恢复已知的预处理HSS迭代方法,并产生新的方法。理论分析表明,新方法无条件地收敛到鞍点问题的唯一解。此外,精确计算了所涉及的迭代参数的最佳选择以及新方法的相应渐近收敛速度。此外,当将AHSS迭代用作其预处理器时,还将详细研究诸如GMRES之类的预处理Krylov子空间方法的理论特性。数值实验证实了该理论的正确性和方法的有效性。

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  • 来源
    《IMA Journal of Numerical Analysis》 |2007年第1期|1-23|共23页
  • 作者单位

    State Key Laboratory of Scientific/Engineering Computing Institute of Computational Mathematics and Scientific/Engineering Computing Academy of Mathematics and Systems Science Chinese Academy of Sciences PO Box 2719 Beijing 100080 People's Republic of China;

    Scientific Computing and Computational Mathematics Program Department of Computer Science Stanford University Stanford CA 94305-9025 USA;

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