NANAJun 14, 2024

Localized subspace iteration methods for elliptic multiscale problems

arXiv:2406.097891 citationsh-index: 4
AI Analysis

This work provides a new framework for multiscale methods that improves treatment of long-channel problems, which is a known bottleneck in existing methods.

The paper proposes localized subspace iteration methods for constructing generalized finite element basis functions for elliptic multiscale problems, demonstrating effectiveness through numerical examples and showing significant superiority in treating long-channel cases over other multiscale methods.

This paper proposes localized subspace iteration (LSI) methods to construct generalized finite element basis functions for elliptic problems with multiscale coefficients. The key components of the proposed method consist of the localization of the original differential operator and the subspace iteration of the corresponding local spectral problems, where the localization is conducted by enforcing the local homogeneous Dirichlet condition and the partition of the unity functions. From a novel perspective, some multiscale methods can be regarded as one iteration step under approximating the eigenspace of the corresponding local spectral problems. Vice versa, new multiscale methods can be designed through subspaces of spectral problem algorithms. Then, we propose the efficient localized standard subspace iteration (LSSI) method and the localized Krylov subspace iteration (LKSI) method based on the standard subspace and Krylov subspace, respectively. Convergence analysis is carried out for the proposed method. Various numerical examples demonstrate the effectiveness of our methods. In addition, the proposed methods show significant superiority in treating long-channel cases over other well-known multiscale methods.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes