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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Dynamic group-based differential evolution using a self-adaptive strategy for global optimization problems
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Dynamic group-based differential evolution using a self-adaptive strategy for global optimization problems

机译:基于全局最优问题的自适应策略的基于动态组的差分进化

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摘要

This paper describes a dynamic group-based differential evolution (GDE) algorithm for global optimization problems. The GDE algorithm provides a generalized evolution process based on two mutation operations to enhance search capability. Initially, all individuals in the population are grouped into a superior group and an inferior group based on their fitness values. The two groups perform different mutation operations. The local mutation model is applied to individuals with better fitness values, i.e., in the superior group, to search for better solutions near the current best position. The global mutation model is applied to the inferior group, which is composed of individuals with lower fitness values, to search for potential solutions. Subsequently, the GDE algorithm employs crossover and selection operations to produce offspring for the next generation. In this paper, an adaptive tuning strategy based on the well-known 1/5th rule is used to dynamically reassign the group size. It is thus helpful to trade off between the exploration ability and the exploitation ability. To validate the performance of the GDE algorithm, 13 numerical benchmark functions are tested. The simulation results indicate that the approach is effective and efficient.
机译:本文介绍了一种用于全局优化问题的基于动态组的差分进化(GDE)算法。 GDE算法提供了基于两个变异操作的通用进化过程,以增强搜索能力。最初,人口中的所有个体都根据其适应度值分为上等组和下等组。两组执行不同的突变操作。将局部突变模型应用于具有更好适应度值的个人(即上级群体),以在当前最佳位置附近寻找更好的解决方案。将全局变异模型应用于由较低适应度值的个体组成的下等群体,以寻找潜在的解决方案。随后,GDE算法采用交叉和选择操作来产生下一代的后代。在本文中,基于众所周知的1/5规则的自适应调整策略用于动态重新分配组大小。因此,在勘探能力和开采能力之间进行权衡是有帮助的。为了验证GDE算法的性能,测试了13个数字基准函数。仿真结果表明该方法是有效的。

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