Lanczos-Based Exponential Filtering for Discrete Ill-Posed Problems

被引:0
|
作者
D. Calvetti
L. Reichel
机构
[1] Case Western Reserve University,Department of Mathematics
[2] Kent State University,Department of Mathematics and Computer Science
来源
Numerical Algorithms | 2002年 / 29卷
关键词
iterative method; regularization; exponential filter function;
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摘要
We describe regularizing iterative methods for the solution of large ill-conditioned linear systems of equations that arise from the discretization of linear ill-posed problems. The regularization is specified by a filter function of Gaussian type. A parameter μ determines the amount of regularization applied. The iterative methods are based on a truncated Lanczos decomposition and the filter function is approximated by a linear combination of Lanczos polynomials. A suitable value of the regularization parameter is determined by an L-curve criterion. Computed examples that illustrate the performance of the methods are presented.
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页码:45 / 65
页数:20
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