Effects of diversity control in single-objective and multi-objective genetic algorithms |
| |
Authors: | Nachol Chaiyaratana Theera Piroonratana Nuntapon Sangkawelert |
| |
Affiliation: | (1) Research and Development Center for Intelligent Systems, King Mongkut’s Institute of Technology North Bangkok, 1518 Piboolsongkram Road, Bangsue, Bangkok, 10800, Thailand;(2) Department of Production Engineering, King Mongkut’s Institute of Technology North Bangkok, 1518 Piboolsongkram Road, Bangsue, Bangkok, 10800, Thailand |
| |
Abstract: | This paper covers an investigation on the effects of diversity control in the search performances of single-objective and multi-objective genetic algorithms. The diversity control is achieved by means of eliminating duplicated individuals in the population and dictating the survival of non-elite individuals via either a deterministic or a stochastic selection scheme. In the case of single-objective genetic algorithm, onemax and royal road R 1 functions are used during benchmarking. In contrast, various multi-objective benchmark problems with specific characteristics are utilised in the case of multi-objective genetic algorithm. The results indicate that the use of diversity control with a correct parameter setting helps to prevent premature convergence in single-objective optimisation. Furthermore, the use of diversity control also promotes the emergence of multi-objective solutions that are close to the true Pareto optimal solutions while maintaining a uniform solution distribution along the Pareto front. |
| |
Keywords: | Benchmarking Diversity control Multi-objective genetic algorithm Single-objective genetic algorithm |
本文献已被 SpringerLink 等数据库收录! |
|