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SCHWARZ METHODS - TO SYMMETRIZE OR NOT TO SYMMETRIZE

机译:SCHWARZ方法-对称或不对称

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A preconditioning theory is presented which establishes sufficient conditions for multiplicative and additive Schwarz algorithms to yield self-adjoint positive definite preconditioners. It allows for the analysis and use of nonvariational and nonconvergent linear methods as preconditioners for conjugate gradient methods, and it is applied to domain decomposition and multigrid. It is illustrated why symmetrizing may be a bad idea for linear methods. It is conjectured that enforcing minimal symmetry achieves the best results when combined with conjugate gradient acceleration. Also, it is shown that the absence of symmetry in the linear preconditioner is advantageous when the linear method is accelerated by using the Bi-CGstab method. Numerical examples are presented for two test problems which illustrate the theory and conjectures. [References: 29]
机译:提出了一种预处理理论,该理论为乘法和加法Schwarz算法建立了足够的条件,以产生自伴随正定预处理器。它允许分析和使用非变数和非收敛线性方法作为共轭梯度方法的前提,并将其应用于域分解和多重网格。说明了为什么对称对于线性方法可能不是一个好主意。据推测,与共轭梯度加速度结合使用时,强制实现最小对称性可获得最佳结果。此外,还表明,当通过使用Bi-CGstab方法加速线性方法时,线性预处理器中不存在对称性是有利的。给出了两个测试问题的数值例子,这些例子说明了理论和猜想。 [参考:29]

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