Multi-population methods with adaptive mutation for multi-modal optimization problems

Date

2013-04

Advisors

Journal Title

Journal ISSN

ISSN

2319-4081

Volume Title

Publisher

AIRCC Publishing

Type

Article

Peer reviewed

Yes

Abstract

This paper presents an efficient scheme to locate multiple peaks on multi-modal optimization problems by using genetic algorithms (GAs). The premature convergence problem shows due to the loss of diversity, the multi-population technique can be applied to maintain the diversity in the population and the convergence capacity of GAs. The proposed scheme is the combination of multi-population with adaptive mutation operator, which determines two different mutation probabilities for different sites of the solutions. The probabilities are updated by the fitness and distribution of solutions in the search space during the evolution process. The experimental results demonstrate the performance of the proposed algorithm based on a set of benchmark problems in comparison with relevant algorithms.

Description

open access journal

Keywords

Multi-population approaches, adaptive mutation operator, multi-modal function optimization, genetic algorithms

Citation

Korejo, I., Yang, S., Brohi, K., and Khuhro, Z.U.A. (2013) Multi-population methods with adaptive mutation for multi-modal optimization problems. International Journal on Soft Computing, Artificial Intelligence and Application, 2(2), pp.1-19.

Rights

Research Institute