粒子群优化中的导师-学生模型

Yu Liu, Zheng Qin, Xingshi He
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引用次数: 47

摘要

粒子群优化(PSO)算法在一些著名的数值测试问题上表现出了良好的性能。本文提出了一种粒子群优化(SSM-PSO)的导师-学生模型,可以从两个方面进一步降低计算成本。一方面,该方法在位置更新方程中引入动量因子,使粒子在定义的搜索空间内不需要每次迭代都检查边界;另一方面,采用松弛-速度-更新策略,即在运行过程中尽可能少地更新粒子的速度,以减少速度评估的计算成本。与线性降权粒子群算法在三个基准函数上的比较表明,SSM-PSO算法不仅大大降低了速度更新的计算量,而且具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervisor-student model in particle swarm optimization
Particle swarm optimization (PSO) algorithms have exhibited good performance on well-known numerical test problems. In this paper, we propose a supervisor-student model in particle swarm optimization (SSM-PSO) that may further reduce computational cost in two aspects. On the one hand, it introduces a new parameter, called momentum factor, into the position update equation, which can restrict the particles inside the defined search space without checking the boundary at every iteration. On the other hand, relaxation-velocity-update strategy that is to update the velocities of the particles as few times as possible during the run, is employed to reduce the computational cost for evaluating the velocity. Comparisons with the linear decreasing weight PSO on three benchmark functions indicate that SSM-PSO not only greatly reduces the computational cost for updating the velocity, but also exhibit good performance.
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