Zeng Nianyin, Wang Zidong, Liu Weibo, Zhang Hong, Hone Kate, Liu Xiaohui
IEEE Trans Cybern. 2022 Sep;52(9):9290-9301. doi: 10.1109/TCYB.2020.3029748. Epub 2022 Aug 18.
In this article, a dynamic-neighborhood-based switching PSO (DNSPSO) algorithm is proposed, where a new velocity updating mechanism is designed to adjust the personal best position and the global best position according to a distance-based dynamic neighborhood to make full use of the population evolution information among the entire swarm. In addition, a novel switching learning strategy is introduced to adaptively select the acceleration coefficients and update the velocity model according to the searching state at each iteration, thereby contributing to a thorough search of the problem space. Furthermore, the differential evolution algorithm is successfully hybridized with the particle swarm optimization (PSO) algorithm to alleviate premature convergence. A series of commonly used benchmark functions (including unimodal, multimodal, and rotated multimodal cases) is utilized to comprehensively evaluate the performance of the DNSPSO algorithm. The experimental results demonstrate that the developed DNSPSO algorithm outperforms a number of existing PSO algorithms in terms of the solution accuracy and convergence performance, especially for complicated multimodal optimization problems.
本文提出了一种基于动态邻域的切换粒子群优化(DNSPSO)算法,设计了一种新的速度更新机制,根据基于距离的动态邻域来调整个体最优位置和全局最优位置,以充分利用整个群体中的种群进化信息。此外,引入了一种新颖的切换学习策略,根据每次迭代时的搜索状态自适应选择加速系数并更新速度模型,从而有助于对问题空间进行全面搜索。此外,成功地将差分进化算法与粒子群优化(PSO)算法进行了混合,以缓解早熟收敛问题。利用一系列常用的基准函数(包括单峰、多峰和旋转多峰情况)全面评估了DNSPSO算法的性能。实验结果表明,所开发的DNSPSO算法在求解精度和收敛性能方面优于许多现有的PSO算法,特别是对于复杂的多峰优化问题。