next up previous
Next: About this document ...

Fei Xue
Preconditioned eigensolvers for large-scale nonlinear Hermitian eigenproblems

419 Maxim Doucet Hall
Department of Mathematics
University of Louisiana at Lafayette
P O Box 41010
Lafayette
LA 70504-1010
fxue@louisiana.edu
Eugene Vecharynski
Daniel Szyld

We study preconditioned eigensolvers for large-scale nonlinear Hermitian eigenproblems of the form $ T(\lambda)v=0$ that admit the min-max principle of eigenvalues. For the computation of a small number of extreme eigenvalues, we propose variants of preconditioned conjugate gradient (PCG) methods. These algorithms are natural extensions of PCG-like methods for linear Hermitian eigenproblems. To compute a large number of eigenvalues, we explore a new solver called the preconditioned locally minimal residual (PLMR) method. With stable preconditioners that enhance eigenvalues in desired parts of the spectrum, this algorithm only requires deflation of a small set of recently converged eigenvalues, and its arithmetic and CPU time cost increase linearly with the number of desired eigenvalues. Numerical experiments illustrate the efficiency of these algorithms.





Copper Mountain 2014-02-23