首页> 外文会议>International workshop on hybrid metaheuristics >Game of Patterns and Genetic Algorithms Under a Comparative Study
【24h】

Game of Patterns and Genetic Algorithms Under a Comparative Study

机译:比较研究模式与遗传算法博弈

获取原文

摘要

In this article we present a comparison of the performance between a metaheuristic optimization method, Game of Patterns (GofP), so-called by the author, and the well-known genetic algorithms (GAs), through two implementations, namely: the GA of Scilab (SGA); and the GA of the R Project for Statistical Computing (RGA). For this purpose, we have selected a set of multimodal objective functions in the n-dimensional Euclidean space R~n with a unique global minimum. For comparing both metaheuristic optimization approaches, a performance indicator of quality, denoted Q(p, n, s), was defined, which allows us to measure the quality of the obtained global optimal solution for each pth problem, in the n-dimensional space, when it is solved by each metaheuristic optimization method s ? (GofP, SGA, RGA}. The indicator Q(p,n,s) then depends on: the number of evaluations of the pth optimization problem in the Euclidean space R~n, which has required the s metaheuristic optimization method for identifying the global minimum; and the distance between the location of its respective unique global minimum and the location of the minimum that has been identified by the s metaheuristic optimization method. The paper also offers a brief explanation of the GofP method, which has been developed for solving unconstrained mixed integer problems in the n x m-dimensional Euclidean space R~n x Z~m.
机译:在本文中,我们通过两种实现方式比较了元启发式优化方法,作者所谓的模式博弈(GofP)和著名的遗传算法(GA)之间的性能比较: Scilab(SGA);以及统计计算R项目(RGA)的GA。为此,我们在n维欧式空间R〜n中选择了一组具有唯一全局最小值的多峰目标函数。为了比较这两种元启发式优化方法,定义了质量的性能指标,表示为Q(p,n,s),这使我们能够在n维空间中测量针对每个pth问题获得的全局最优解的质量,什么时候用每种元启发式优化方法s来解决? (GofP,SGA,RGA}。指标Q(p,n,s)取决于:欧几里得空间R〜n中第p个最优化问题的求值次数,这需要使用s元启发式最优化方法来识别。全局最小值;以及其各自唯一全局最小值的位置与通过s元启发式优化方法确定的最小值位置之间的距离;本文还简要介绍了GofP方法,该方法用于求解nx m维欧氏空间R〜nx Z〜m中的无约束混合整数问题。

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