An efficient positive‐definite block‐preconditioned finite volume solver for two‐sided fractional diffusion equations on composite mesh
Abstract
It is known that the solutions to space‐fractional diffusion equations exhibit singularities near the boundary. Therefore, numerical methods discretized on the composite mesh, in which the mesh size is refined near the boundary, provide more precise approximations to the solutions. However, the coefficient matrices of the corresponding linear systems usually lose the diagonal dominance and are ill‐conditioned, which in turn affect the convergence behavior of the iteration methods.In this work we study a finite volume method for two‐sided fractional diffusion equations, in which a locally refined composite mesh is applied to capture the boundary singularities of the solutions. The diagonal blocks of the resulting three‐by‐three block linear system are proved to be positive‐definite, based on which we propose an efficient block Gauss–Seidel method by decomposing the whole system into three subsystems with those diagonal blocks as the coefficient matrices. To further accelerate the convergence speed of the iteration, we use T. Chan's circulant preconditioner31 as the corresponding preconditioners and analyze the preconditioned matrices' spectra. Numerical experiments are presented to demonstrate the effectiveness and the efficiency of the proposed method and its strong potential in dealing with ill‐conditioned problems. While we have not proved the convergence of the method in theory, the numerical experiments show that the proposed method is convergent.
Document Details
- Document Type
- Pub Defense Publication
- Publication Date
- Mar 19, 2021
- Source ID
- 10.1002/nla.2372
Entities
People
- Hong Wang
- Jinhong Jia
- Pingfei Dai
- Qingbiao Wu
- Xiangcheng Zheng
Organizations
- Army Research Office
- China Scholarship Council
- Hangzhou Normal University
- National Natural Science Foundation of China
- National Science Foundation
- Natural Science Foundation of Shandong Province
- Peking University
- Shandong Normal University
- University of South Carolina
- Zhejiang University