Jacobi–Davidson methods for polynomial two-parameter eigenvalue problems
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摘要
We propose Jacobi–Davidson type methods for polynomial two-parameter eigenvalue problems (PMEP). Such problems can be linearized as singular two-parameter eigenvalue problems, whose matrices are of dimension k(k+1)n/2, where k is the degree of the polynomial and n is the size of the matrix coefficients in the PMEP. When k2n is relatively small, the problem can be solved numerically by computing the common regular part of the related pair of singular pencils. For large k2n, computing all solutions is not feasible and iterative methods are required.When k is large, we propose to linearize the problem first and then apply Jacobi–Davidson to the obtained singular two-parameter eigenvalue problem. The resulting method may for instance be used for computing zeros of a system of scalar bivariate polynomials close to a given target. On the other hand, when k is small, we can apply a Jacobi–Davidson type approach directly to the original matrices. The original matrices are projected onto a low-dimensional subspace, and the projected polynomial two-parameter eigenvalue problems are solved by a linearization.
论文关键词:Polynomial two-parameter eigenvalue problem (PMEP),Jacobi–Davidson,Singular generalized eigenvalue problem,Bivariate polynomial equations,Determinantal representation,Delay differential equations (DDEs)
论文评审过程:Received 22 August 2014, Available online 23 April 2015, Version of Record 15 May 2015.
论文官网地址:https://doi.org/10.1016/j.cam.2015.04.019