arXiv Analytics

Sign in

arXiv:2405.07139 [math.NA]AbstractReferencesReviewsResources

Reduced Krylov Basis Methods for Parametric Partial Differential Equations

Yuwen Li, Ludmil T. Zikatanov, Cheng Zuo

Published 2024-05-12Version 1

This work is on a user-friendly reduced basis method for solving a family of parametric PDEs by preconditioned Krylov subspace methods including the conjugate gradient method, generalized minimum residual method, and bi-conjugate gradient method. The proposed methods use a preconditioned Krylov subspace method for a high-fidelity discretization of one parameter instance to generate orthogonal basis vectors of the reduced basis subspace. Then large-scale discrete parameter-dependent problems are approximately solved in the low-dimensional Krylov subspace. As shown in the theory and experiments, only a small number of Krylov subspace iterations are needed to simultaneously generate approximate solutions of a family of high-fidelity and large-scale systems in the reduced basis subspace. This reduces the computational cost dramatically because (1) to construct the reduced basis vectors, we only solve one large-scale problem in the high-fidelity level; and (2) the family of large-scale problems restricted to the reduced basis subspace have much smaller sizes.

Related articles: Most relevant | Search more
arXiv:1911.08954 [math.NA] (Published 2019-11-20)
Basic Ideas and Tools for Projection-Based Model Reduction of Parametric Partial Differential Equations
arXiv:2207.06145 [math.NA] (Published 2022-07-13)
On the matching of eigensolutions to parametric partial differential equations
arXiv:2305.14703 [math.NA] (Published 2023-05-24)
Generative diffusion learning for parametric partial differential equations