A modified particle swarm optimization via particle visual modeling analysis
文件大小:
788k
资源说明:A particle is treated as a whole individual in all researches on particle swarm optimization
(PSO) currently, these are not concerned with the information of every particle's
dimensional vector. A visual modeling method describing particle's dimensional vector
behavior is presented in this paper. Based on the analysis of visual modeling, the
reason for premature convergence and diversity loss in PSO is explained, and a new
modified algorithm is proposed to ensure the rational flight of every particle's dimensional
component. Meanwhile, two parameters of particle-distribution-degree and particle-
dimension-distance are introduced into the proposed algorithm in order to avoid
premature convergence. Simulation results of the new PSO algorithm show that it has a
better ability of finding the global optimum, and still keeps a rapid convergence as with
the standard PSO.
本源码包内暂不包含可直接显示的源代码文件,请下载源码包。