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Chaotic elephant herding optimization algorithm

机译:混沌象群优化算法

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摘要

Swarm intelligence algorithms represent stochastic optimization algorithms that proved to be powerful for finding suboptimal solutions for hard optimization problems. Elephant herding optimization algorithm is a rather new and promising representative of that class of optimization algorithms that has already been used in numerous applications. In recent years, chaotic maps were incorporated into the swarm intelligence algorithms in order to improve the search quality. In this paper we introduced two different chaotic maps into the original elephant herding optimization algorithm. The proposed methods were tested on 15 benchmark functions from CEC 2013. Obtained results were compared to the regular elephant herding optimization algorithm as well to the particle swarm optimization. Test results proved that the proposed chaotic elephant herding optimization algorithm has better performance and obtained better results.
机译:群智能算法代表了随机优化算法,事实证明,该算法对于查找硬优化问题的次优解决方案非常有效。象群优化算法是该类优化算法的一个相当新的有希望的代表,该类优化算法已经在众多应用中使用。近年来,为了提高搜索质量,将混沌地图纳入了群体智能算法。在本文中,我们将两种不同的混沌图引入了原始的象群优化算法。在CEC 2013的15个基准功能上测试了所提出的方法。将获得的结果与常规的象群优化算法以及粒子群优化算法进行了比较。实验结果表明,该算法具有较好的性能,并取得了较好的效果。

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