基于多智能体遗传算法的全局数值优化

Zhong Wei-cai, Liu Jing, Xu Mingzhi, Jiao Licheng
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引用次数: 8

摘要

提出了一种新的算法——多智能体遗传算法。它通过agent-agent交互实现复杂的全局数值优化。所有的智能体都固定在一个格子上,它们会与邻居竞争或合作来增加自己的能量。另一方面,agent也可以通过知识来增加自己的能量。在实验中,使用4个多模态基准函数来探索问题维数问题对MAGA性能的影响。在20/spl sim/ 10000维的函数上的结果表明,MAGA在求解高维函数时获得了良好的性能。即使当维度高达10,000时,MAGA仍然可以以非常低的计算成本找到高质量的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Global numerical optimization using multi-agent genetic algorithm
A new algorithm, Multi-Agent Genetic Algorithm (MAGA), is proposed. It realizes the complex global numerical optimization via agent-agent interactions. All agents are fixed on a lattice, and they will compete or cooperate with their neighbors to increase their own energy. On the other hand, agents can also increase their energy with knowledge. In experiments, 4 multimodal benchmark functions are used to explore the effect of problem of problem dimension on the performance of MAGA. The results on functions with 20/spl sim/10,000 dimensions show that MAGA obtains good performance in solving high dimensional functions. Even when dimension is as high as 10,000, MAGA can still find high quality solutions with very low computational cost.
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