首页> 外文会议>Multi-disciplinary international workshop on artificial intelligence >A Spy Search Mechanism (SSM) for Memetic Algorithm (MA) in Dynamic Environments
【24h】

A Spy Search Mechanism (SSM) for Memetic Algorithm (MA) in Dynamic Environments

机译:动态环境中模因算法(MA)的间谍搜索机制(SSM)

获取原文

摘要

Searching within the sample space for optimal solutions is an important part in solving optimization problems. The motivation of this work is that today's problem environments have increasingly become dynamic with non-stationary optima and in order to improve optima search, memetic algorithm has become a preferred search method because it combines global and local search methods to obtain good solutions. The challenge is that existing search methods perform the search during the iterations without being guided by solid information about the nature of the search environment which affects the quality of a search outcome. In this paper, a spy search mechanism is proposed for memetic algorithm in dynamic environments. The method uses a spy individual to scope out the search environment and collect information for guiding the search. The method combines hyper-mutation, random immigrants, hill climbing local search, crowding and fitness, and steepest mutation with greedy crossover hill climbing to enhance the efficiency of the search. The proposed method is tested on dynamic problems and comparisons with other methods indicate a better performance by the proposed method.
机译:在样本空间内搜索最佳解决方案是解决优化问题的重要组成部分。这项工作的动机是,当今的问题环境随着非平稳最优而变得越来越动态,并且为了改善最优搜索,模因算法已成为一种首选的搜索方法,因为它结合了全局和局部搜索方法以获得良好的解决方案。挑战在于,现有的搜索方法在迭代过程中执行搜索,而不会受到有关搜索环境性质的可靠信息的指导,这些信息会影响搜索结果的质量。针对动态环境下的模因算法,提出了一种间谍搜索机制。该方法使用间谍个人来确定搜索环境的范围,并收集信息以指导搜索。该方法将超变异,随机移民,爬山局部搜索,拥挤和适合度以及最陡峭的变异与贪婪的交叉爬山相结合,以提高搜索效率。对提出的方法进行了动力学问题的测试,与其他方法的比较表明该方法具有更好的性能。

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