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A truncated projected SVD method for linear discrete ill-posed problems
Authors:Serena Morigi  Lothar Reichel  Fiorella Sgallari
Institution:(1) Department of Mathematics, University of Bologna, Piazza Porta S. Donato 5, 40127 Bologna, Italy;(2) Department of Mathematical Sciences, Kent State University, Kent, OH 44242, USA;(3) CIRAM Department of Mathematics, University of Bologna, Via Saragozza 8, 40123 Bologna, Italy
Abstract:Truncated singular value decomposition is a popular solution method for linear discrete ill-posed problems. However, since the singular value decomposition of the matrix is independent of the right-hand side, there are linear discrete ill-posed problems for which this method fails to yield an accurate approximate solution. This paper describes a new approach to incorporating knowledge about properties of the desired solution into the solution process through an initial projection of the linear discrete ill-posed problem. The projected problem is solved by truncated singular value decomposition. Computed examples illustrate that suitably chosen projections can enhance the accuracy of the computed solution.
Keywords:ill-posed problem  inverse problem  decomposition  SVD  TSVD
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