This paper presents a powerful swarm intelligence meta-heuristic optimization algorithm called Dynamic Cat Swarm Optimization. The formulation is through modifying the existing Cat Swarm Optimization. The original Cat Swarm Optimization suffers from the shortcoming of 'premature convergence', which is the possibility of entrapment in local optima which usually happens due to the off-balance between exploration and exploitation phases. Therefore, the proposed algorithm suggests a new method to provide a proper balance between these phases by modifying the selection scheme and the seeking mode of the algorithm. To evaluate the performance of the proposed algorithm, 23 classical test functions, 10 modern test functions (CEC 2019) and a real world scenario are used. In addition, the Dimension-wise diversity metric is used to measure the percentage of the exploration and exploitation phases. The optimization results show the effectiveness of the proposed algorithm, which ranks first compared to several well-known algorithms available in the literature. Furthermore, statistical methods and graphs are also used to further confirm the outperformance of the algorithm. Finally, the conclusion as well as future directions to further improve the algorithm are discussed.
翻译:本文展示了一种强大的温和智能元湿度优化算法,称为动态猫毛绒优化。 配方是通过修改现有的猫毛绒优化法。 原猫毛毛优化法存在“ 早熟融合” 的缺陷, 即可能因勘探阶段和开发阶段之间的不平衡而在当地选取中诱捕。 因此, 提议的算法建议了一种新的方法, 通过修改选择方案和算法的寻求模式, 在这些阶段之间提供适当的平衡。 为了评估拟议的算法的性能, 使用了23个古典测试功能, 10个现代测试功能( CEC 2019) 和真实的世界情景。 此外, 使用维度多样性指标来衡量勘探和开发阶段的百分比。 优化结果显示了拟议算法的有效性, 与文献中现有的几个众所周知的算法相比, 它排名第一。 此外, 统计方法和图表还被用来进一步证实算法的外性。 最后, 讨论了进一步改进算法的结论和未来的方向。