Title of article :
Regularized symmetric positive definite matrix factorizations for linear systems arising from RBF interpolation and differentiation
Author/Authors :
Sarra، نويسنده , , Scott A.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
11
From page :
76
To page :
86
Abstract :
Scattered data interpolation using Radial Basis Functions involves solving an ill-conditioned symmetric positive definite (SPD) linear system (with appropriate selection of basis function) when the direct method is used to evaluate the problem. The standard algorithm for solving a SPD system is a Cholesky factorization. Severely ill-conditioned theoretically SPD matrices may not be numerically SPD (NSPD) in which case a Cholesky factorization fails. An alternative symmetric matrix factorization, the square root free Cholesky factorization, has the same flop count as a Cholesky factorization and is successful even when a matrix ceases to be NSPD. A regularization method can be used to prevent the failure of the Cholesky factorization and to improve the accuracy of both SPD matrix factorizations when the matrices are severely ill-conditioned. The specification of the regularization parameter is discussed as well as convergence/stopping criteria for the algorithm. The formation of differentiation matrices with the regularized SPD factorizations is demonstrated to improve eigenvalue stability properties of RBF methods for hyperbolic PDEs.
Keywords :
Scattered data interpolation , radial basis functions , Regularization Techniques , Eigenvalue stability , Numerical PDEs
Journal title :
Engineering Analysis with Boundary Elements
Serial Year :
2014
Journal title :
Engineering Analysis with Boundary Elements
Record number :
1446886
Link To Document :
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