Fuzzy adaptive Charged System Search for global optimization

Loading...
Thumbnail Image

Downloads

0

Date issued

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Location

Signature

Abstract

This study proposes a new fuzzy adaptive Charged System Search (CSS) for global optimization. The suggested algorithm includes a parameter tuning process based on fuzzy logic with the aim of improving its performance. In this regard, four linguistic variables are defined which configures a fuzzy system for parameter identification of the standard CSS algorithm. This process provides a focus for the algorithm on higher levels of global searching in the initial iterations while the local search is considered in the last iterations. Twenty mathematical benchmark functions, the Competitions on Evolutionary Computation (CEC) regarding CEC 2020 benchmark, three well-known constrained, and two engineering problems are utilized to validate the new algorithm. Moreover, the performance of the new algorithm is compared and contrasted with other metaheuristic algorithms. The obtained results reveal the superiority of the proposed approach in dealing with different unconstraint, constrained, and engineering design problems.

Description

Subject(s)

optimization, metaheuristic, Charged System Search, fuzzy adaptive, global optimization

Citation

Applied Soft Computing. 2021, vol. 109, art. no. 107518.