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首页> 外文期刊>Journal of Computational and Applied Mathematics >Preconditioned GMRES methods with incomplete Givens orthogonalization method for large sparse least-squares problems
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Preconditioned GMRES methods with incomplete Givens orthogonalization method for large sparse least-squares problems

机译:带有稀疏最小二乘问题的不完全Givens正交化方法的预处理GMRES方法

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摘要

We propose to precondition the GMRES method by using the incomplete Givens orthogonalization (IGO) method for the solution of large sparse linear least-squares problems. Theoretical analysis shows that the preconditioner satisfies the sufficient condition that can guarantee that the preconditioned GMRES method will never break down and always give the least-squares solution of the original problem. Numerical experiments further confirm that the new preconditioner is efficient. We also find that the IGO preconditioned BA-GMRES method is superior to the corresponding CGLS method for ill-conditioned and singular least-squares problems.
机译:我们建议使用不完整的Givens正交化(IGO)方法对GMRES方法进行预处理,以解决大型稀疏线性最小二乘问题。理论分析表明,预处理器满足充分的条件,可以保证预处理的GMRES方法永远不会崩溃,并且总是给出原始问题的最小二乘解。数值实验进一步证实了新型预处理器是有效的。我们还发现,对于病态和奇异最小二乘问题,IGO预处理的BA-GMRES方法优于相应的CGLS方法。

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