Improving Cuckoo Search Algorithm With Mittag-Leffler Distribution

Jiamin Wei, Yangquan Chen, Yongguang Yu, Yuquan Chen
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引用次数: 2

Abstract

Cuckoo search (CS), as one of the recent nature-inspired metaheuristic algorithms, has proved to be an efficient approach due to the combination of Lévy flights, local search capabilities and guaranteed global convergence. CS uses Lévy flights in global random walk to explore the search space. The Lévy step is taken from the Lévy distribution which is a heavy-tailed probability distribution. In this case, a fraction of large steps are generated, which plays an important role in enhancing search capability of CS. Besides, although many foragers and wandering animals have been shown to follow a Lévy distribution of steps, investigation into the impact of other different heavy-tailed probability distributions on CS is still insufficient up to now. Based on the above considerations, we are motivated to apply the well-known Mittag-Leffler distribution to the standard CS algorithm, and proposed an improved cuckoo search algorithm (CSML) in this paper, where a more efficient search is supposed to take place in the search space thanks to the long jumps. In order to verify the performance of CSML, experiments are carried out on a test suite of 20 benchmark functions. In terms of the observations and results analysis, CSML can be regarded as a new potentially promising algorithm for solving optimization problems.
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基于Mittag-Leffler分布的布谷鸟搜索算法改进
布谷鸟搜索(Cuckoo search, CS)作为一种受自然启发的元启发式算法,由于结合了lsamvy飞行、局部搜索能力和保证全局收敛性,被证明是一种有效的方法。CS使用全局随机游动中的lsamvy飞行来探索搜索空间。lsamvy步骤取自lsamvy分布,它是一个重尾概率分布。在这种情况下,生成了一小部分大步长,这对增强CS的搜索能力起着重要的作用。此外,尽管许多觅食者和流浪动物已被证明遵循lsamvy分布的步骤,但到目前为止,对其他不同的重尾概率分布对CS的影响的研究仍然不足。基于以上考虑,我们将著名的mittagg - leffler分布应用到标准的CS算法中,并在本文中提出了一种改进的布谷鸟搜索算法(CSML),该算法通过长跳跃在搜索空间中进行更有效的搜索。为了验证CSML的性能,在一个包含20个基准函数的测试套件上进行了实验。从观测结果和结果分析来看,CSML是一种很有潜力的求解优化问题的新算法。
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