A Comparison Study of Self-Adaptation in Evolution Strategies and Real-Coded Genetic Algorithms
- 1 June 2001
- journal article
- research article
- Published by MIT Press in Evolutionary Computation
- Vol. 9 (2) , 223-241
- https://doi.org/10.1162/106365601750190415
Abstract
This paper discusses the self-adaptive mechanisms of evolution strategies (ES) and real-coded genetic algorithms (RCGA) for optimization in continuous search spaces. For multi-membered evolution strategies, a self-adaptive mechanism of mutation parameters has been proposed by Schwefel. It introduces parameters such as standard deviations of the normal distribution for mutation into the genetic code and lets them evolve by selection as well as the decision variables. In the RCGA, Crossover or recombination is used mainly for search. It utilizes information on several individuals to generate novel search points, and therefore, it can generate offspring adaptively according to the distribution of parents without any adaptive parameters. The present paper discusses characteristics of these two self-adaptive mechanisms through numerical experiments. The self-adaptive characteristics such as translation, enlargement, focusing, and directing of the distribution of children generated by the ES and the RCGA are examined through experiments.Keywords
This publication has 5 references indexed in Scilit:
- Evolutionary computation: comments on the history and current stateIEEE Transactions on Evolutionary Computation, 1997
- A Derandomized Approach to Self-Adaptation of Evolution StrategiesEvolutionary Computation, 1994
- Theoretical analysis of evolutionary algorithms with an infinite population size in continuous space. Part II: Analysis of the diversification role of crossoverIEEE Transactions on Neural Networks, 1994
- Theoretical analysis of evolutionary algorithms with an infinite population size in continuous space. Part I: Basic properties of selection and mutationIEEE Transactions on Neural Networks, 1994
- Genetic Algorithms for Real Parameter OptimizationPublished by Elsevier ,1991