首页> 外文会议> >Evolving dynamic change and exchange of genotype encoding in genetic algorithms for difficult optimization problems
【24h】

Evolving dynamic change and exchange of genotype encoding in genetic algorithms for difficult optimization problems

机译:遗传算法中不断发展的动态变化和基因型编码的交换,解决困难的优化问题

获取原文

摘要

The application of genetic algorithms (GAs) to many optimization problems in organizations often results in good performance and high quality solutions. For successful and efficient use of GAs, it is not enough to simply apply simple GAs (SGAs). In addition, it is necessary to find a proper representation for the problem and to develop appropriate search operators that fit well to the properties of the genotype encoding. The representation must at least be able to encode all possible solutions of an optimization problem, and genetic operators such as crossover and mutation should be applicable to it. In this paper, serial alternation strategies between two codings are formulated in the framework of dynamic change of genotype encoding in GAs for function optimization. Likewise, a new variant of GAs for difficult optimization problems denoted Split-and-Merge GA (SM-GA) is developed using a parallel implementation of an SGA and evolving a dynamic exchange of individual representation in the context of Dual Coding concept. Numerical experiments show that the evolved SM-GA significantly outperforms an SGA with static single coding.
机译:遗传算法(GA)在组织中的许多优化问题上的应用通常会带来良好的性能和高质量的解决方案。为了成功且有效地使用GA,仅应用简单的GA(SGA)是不够的。此外,有必要找到问题的适当表示形式,并开发出适合于基因型编码属性的适当搜索运算符。该表示法必须至少能够编码优化问题的所有可能解,并且遗传算子(例如交叉和突变)应适用于此。本文在遗传算法中基因型编码动态变化的框架内,提出了两种编码之间的序列交替策略,以实现功能优化。同样,使用SGA的并行实现并在对偶编码概念的背景下发展了动态的个体表示交换,开发了一种新的GAs变体,用于解决困难的优化问题,称为拆分合并GA(SM-GA)。数值实验表明,经过改进的SM-GA在静态单一编码方面明显优于SGA。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号