混沌蚁狮优化算法

D. Davendra, M. Bialic-Davendra, Magdalena Metlicka
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引用次数: 1

摘要

蚁狮优化算法(ALO)是一种相对较新的元启发式算法,它是根据捕食蚁狮的概念设计的。基本概念围绕着狩猎猎物,如蚂蚁的随机行走,建立陷阱,陷阱中蚂蚁的陷阱,捕捉猎物,重建陷阱。该算法注重算法的随机性,采用混沌映射的嵌入作为伪随机数的生成。该方法的独特之处在于评估了采用最小调谐参数的ALO的行为,并观察了混沌系统在大多数自调谐算法中的有效性。在标准基准的单峰和多峰问题上进行了实验,并将实验结果与规范版本的ALO和其他已发表的算法进行了比较。结果表明,混沌蚁狮优化算法(CALO)的性能明显优于混沌蚁狮优化算法(ALO)和大多数比较算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chaotic Ant Lion Optimization Algorithm
The Ant Lion Optimization (ALO) algorithm is a relative recent metaheuristic, designed on the concept of predator ant lions. The basic concepts revolve around hunting prey such as the random walk of ants, building traps, entrapment of ants in traps, catching preys, and re-building traps. The proposed algorithm focus on the stochasticity of the algorithm, with the embedding of chaos maps as pseudo-random number generation. The uniqueness of this approach is to evaluate the behavior of ALO, which employs minimal tuning parameters, and to observe the effectiveness of chaotic systems in mostly self-tuning algorithms. The experimentations was conducted on standard benchmark unimodal and multimodal problems and the results compared with the canonical version of ALO and other published algorithms. Based on the results comparisons, the Chaotic Ant Lion Optimization (CALO) performed significantly better than ALO and most compared algorithms.
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