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Chaotic catfish particle swarm optimization for solving global numerical optimization problems

机译:混沌cat鱼粒子群算法求解全局数值优化问题

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摘要

Chaotic catfish particle swarm optimization (C-CatfishPSO) is a novel optimization algorithm proposed in this paper. C-CatfishPSO introduces chaotic maps into catfish particle swarm optimization (CatfishPSO), which increase the search capability of CatfishPSO via the chaos approach. Simple CatfishPSO relies on the incorporation of catfish particles into particle swarm optimization (PSO). The introduced catfish particles improve the performance of PSO considerably. Unlike other ordinary particles, the catfish particles initialize a new search from extreme points of the search space when the gbest fitness value (global optimum at each iteration) has not changed for a certain number of consecutive iterations. This results in further opportunities of finding better solutions for the swarm by guiding the entire swarm to promising new regions of the search space and accelerating the search. The introduced chaotic maps strengthen the solution quality of PSO and CatfishPSO significantly. The resulting improved PSO and CatfishPSO are called chaotic PSO (C-PSO) and chaotic CatfishPSO (C-CatfishPSO), respectively. PSO, C-PSO, CatfishPSO, C-CatfishPSO, as well as other advanced PSO procedures from the literature were extensively compared on several benchmark test functions. Statistical analysis of the experimental results indicate that the performance of C-CatfishPSO is better than the performance of PSO, C-PSO, CatfishPSO and that C-CatfishPSO is also superior to advanced PSO methods from the literature.
机译:混沌cat鱼粒子群优化算法(C-CatfishPSO)是本文提出的一种新颖的优化算法。 C-CatfishPSO将混沌图引入cat鱼粒子群优化(CatfishPSO)中,从而通过混沌方法提高了CatfishPSO的搜索能力。简单的CatfishPSO依赖于将fish鱼颗粒纳入粒子群优化(PSO)。引入的cat鱼颗粒可显着提高PSO的性能。与其他普通粒子不同,the鱼粒子在一定数量的连续迭代中未改变gbest适应度值(每次迭代的全局最优值)时,从搜索空间的极点开始了新的搜索。通过引导整个群体进入有希望的搜索空间新区域并加速搜索,这将为寻找更好的解决方案提供更多的机会。引入的混沌图显着增强了PSO和CatfishPSO的解决方案质量。得到的改进的PSO和CatfishPSO分别称为混沌PSO(C-PSO)和混沌CatfishPSO(C-CatfishPSO)。 PSO,C-PSO,CatfishPSO,C-CatfishPSO以及文献中的其他高级PSO程序在几种基准测试功能上进行了广泛比较。实验结果的统计分析表明,C-CatfishPSO的性能优于PSO,C-PSO,CatfishPSO的性能,并且C-CatfishPSO的性能也优于文献中的高级PSO方法。

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