Common model analysis and improvement of particle swarm optimizer
- 期刊名字:控制理论与应用(英文版)
- 文件大小:
- 论文作者:Feng PAN,Jie CHEN,Minggang GAN
- 作者单位:School of Information Science Technology
- 更新时间:2022-10-14
- 下载次数:次
Particle swarm optimizer (PSO), a new evolutionary computation algorithm, exhibits good performance for optimization problems, although PSO can not guarantee convergence of a global minimum, even a local minimum.However, there are some adjustable parameters and restrictive conditions which can affect performance of the algorithm.In this paper, the algorithm are analyzed as a time-varying dynamic system, and the sufficient conditions for asymptotic stability of acceleration factors, increment of acceleration factors and inertia weight are deduced. The value of the inertia weight is enhanced to (-1, 1). Based on the deduced principle of acceleration factors, a new adaptive PSO algorithmharmonious PSO (HPSO) is proposed. Furthermore it is proved that HPSO is a global search algorithm. In the experiments,HPSO are used to the model identification of a linear motor driving servo system. An Akaike information criteria based fitness function is designed and the algorithms can not only estimate the parameters, but also determine the order of the model simultaneously. The results demonstrate the effectiveness of HPSO.
-
C4烯烃制丙烯催化剂 2022-10-14
-
煤基聚乙醇酸技术进展 2022-10-14
-
生物质能的应用工程 2022-10-14
-
我国甲醇工业现状 2022-10-14
-
JB/T 11699-2013 高处作业吊篮安装、拆卸、使用技术规程 2022-10-14
-
石油化工设备腐蚀与防护参考书十本免费下载,绝版珍藏 2022-10-14
-
四喷嘴水煤浆气化炉工业应用情况简介 2022-10-14
-
Lurgi和ICI低压甲醇合成工艺比较 2022-10-14
-
甲醇制芳烃研究进展 2022-10-14
-
精甲醇及MTO级甲醇精馏工艺技术进展 2022-10-14
