A particle swarm optimization algorithm with empirical balance strategy

Q1 Mathematics
Yonghong Zhang, Xiangyu Kong
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引用次数: 8

Abstract

As an important research direction of swarm intelligence algorithm, particle swarm optimization (PSO) has become a popular evolutionary method and received extensive attention in the past decades. Despite many PSO variants have been proposed, how to maintain a good balance between the exploration and exploitation abilities, and how to jump out of the local optimal position are still challenges. In this article, based on empirical balance strategy, a new particle swarm optimization (EBPSO) algorithm is presented. Firstly, based on an adaptive adjustment mechanism, the algorithm can choose a better strategy from two search equations, which can maintain the balance between the exploration and exploitation abilities. Secondly, to utilize the information of individual historical optimal solution and the optimal solution of the current population, a weight for adjusting their influence is introduced into the search equation. Thirdly, by introducing the diversity of population, a moving equation for dynamically adjusting the search ability of the algorithm is proposed. Finally, to avoid falling into local optimum and to search the potential location, a dynamic random search mechanism is proposed, which is designed by using the information of the current optimal solution. Compared with some state-of-the-art algorithms, the experimental results show that EBPSO has excellent solution quality and convergence characteristic on almost all test problems.

一种具有经验平衡策略的粒子群优化算法
粒子群优化算法作为群体智能算法的一个重要研究方向,在过去的几十年里已经成为一种流行的进化方法并受到广泛关注。尽管已经提出了许多PSO变体,但如何在勘探和开发能力之间保持良好的平衡,以及如何跳出局部最优位置仍然是挑战。本文基于经验平衡策略,提出了一种新的粒子群优化算法。首先,基于自适应调整机制,该算法可以从两个搜索方程中选择更好的策略,从而保持探索和开发能力之间的平衡。其次,为了利用个体历史最优解和当前种群最优解的信息,在搜索方程中引入了调整其影响的权重。再次,通过引入种群的多样性,提出了一个动态调整算法搜索能力的运动方程。最后,为了避免陷入局部最优并搜索潜在位置,提出了一种动态随机搜索机制,该机制是利用当前最优解的信息设计的。与一些最先进的算法相比,实验结果表明,EBPSO在几乎所有的测试问题上都具有良好的求解质量和收敛性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chaos, Solitons and Fractals: X
Chaos, Solitons and Fractals: X Mathematics-Mathematics (all)
CiteScore
5.00
自引率
0.00%
发文量
15
审稿时长
20 weeks
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