Authors
Weifeng Gao, Genghui Li, Qingfu Zhang, Yuting Luo, Zhenkun Wang
Publication date
2021/9
Journal
IEEE Transactions on Systems Man Cybernetics-Systems
Volume
51
Issue
9
Pages
5652-5663
Publisher
IEEE
Description
A two-phase evolutionary algorithm is developed to find multiple solutions of a nonlinear equations system. It transforms a nonlinear equations system into a multimodal optimization problem. In phase one of the proposed algorithm, a strategy combines a multiobjective optimization technique and a niching technique to maintain the population diversity. Phase two consists of a detection method and a local search method for encouraging the convergence. The detection method finds several promising subregions and the local search method locates the corresponding optimal solutions in each promising subregion. The experiments on a set of 30 nonlinear equation systems demonstrate that the proposed algorithm is better than other state-of-the-art algorithms.
Total citations
202020212022202320243118117
Scholar articles
W Gao, G Li, Q Zhang, Y Luo, Z Wang - IEEE Transactions on Systems, Man, and Cybernetics …, 2019