International Academic Office, Kurdistan Institution for Strategic Studies and Scientific Research, Sulaymaniyah 46001, Iraq.
Computer Science and Engineering, University of Kurdistan Hewler, Erbil 44001, Iraq.
Comput Intell Neurosci. 2020 Jan 22;2020:4854895. doi: 10.1155/2020/4854895. eCollection 2020.
This paper presents an in-depth survey and performance evaluation of cat swarm optimization (CSO) algorithm. CSO is a robust and powerful metaheuristic swarm-based optimization approach that has received very positive feedback since its emergence. It has been tackling many optimization problems, and many variants of it have been introduced. However, the literature lacks a detailed survey or a performance evaluation in this regard. Therefore, this paper is an attempt to review all these works, including its developments and applications, and group them accordingly. In addition, CSO is tested on 23 classical benchmark functions and 10 modern benchmark functions (CEC 2019). The results are then compared against three novel and powerful optimization algorithms, namely, dragonfly algorithm (DA), butterfly optimization algorithm (BOA), and fitness dependent optimizer (FDO). These algorithms are then ranked according to Friedman test, and the results show that CSO ranks first on the whole. Finally, statistical approaches are employed to further confirm the outperformance of CSO algorithm.
本文对猫群优化(CSO)算法进行了深入的调查和性能评估。CSO 是一种强大的基于群体的元启发式优化方法,自出现以来得到了非常积极的反馈。它已经解决了许多优化问题,并且已经引入了许多变体。然而,文献中缺乏这方面的详细调查或性能评估。因此,本文试图对所有这些工作进行回顾,包括其发展和应用,并进行相应的分组。此外,CSO 在 23 个经典基准函数和 10 个现代基准函数(CEC 2019)上进行了测试。然后将结果与三种新颖而强大的优化算法进行比较,即蜻蜓算法(DA)、蝴蝶优化算法(BOA)和适应度相关优化器(FDO)。然后根据 Friedman 测试对这些算法进行排名,结果表明 CSO 在整体上排名第一。最后,采用统计方法进一步证实了 CSO 算法的优异性能。