SOR-Like Methods with Optimization Model for Augmented Linear Systems

Authors

  • Rui-Ping Wen, Su-Dan Li & Guo-Yan Meng

DOI:

https://doi.org/10.4208/eajam.010916.261116a

Keywords:

SOR-like method, optimization, augmented linear systems, convergence.

Abstract

There has been a lot of study on the SOR-like methods for solving the augmented system of linear equations since the outstanding work of Golub, Wu and Yuan (BIT 41(2001)71-85) was presented fifteen years ago. Based on the SOR-like methods, we establish a class of accelerated SOR-like methods for large sparse augmented linear systems by making use of optimization technique, which will find the optimal relaxation parameter ω by optimization models. We demonstrate the convergence theory of the new methods under suitable restrictions. The numerical examples show these methods are effective.

Published

2018-03-19

Issue

Section

Articles