Parameter co-evolution mechanism of particle swarm optimisation algorithm

被引:0
作者
Zhao M. [1 ]
Song X. [1 ]
Gao Y. [2 ]
机构
[1] Information and Control Engineering Faculty, Shenyang Jianzhu University, Shenyang, Liaoning Province
[2] Information Technology Department, Shenyang Gas Co. Ltd., Shenyang, Liaoning Province
关键词
Acceleration factor; Adjustment mechanism; Benchmark functions; Inertia weight; Numerical optimisation; Parameter co-evolution; Particle swarm optimisation; Population evolution; PSO; Stochastic evolution speed;
D O I
10.1504/IJSPM.2020.107327
中图分类号
学科分类号
摘要
The running parameters are the important factors that influence the performance of PSO, and the optimisation of the selection and the adjustment strategy on them is one of the hot research directions. Based on the related research, this paper designs a co-evolution mechanism for the parameters of PSO including both the inertia weight and the acceleration factors, which defines stochastic evolution speed to reflect the current state of population evolution during the iterative process, and uses it as the feedback to set the inertia weight and the two acceleration factors. PSO with the parameter co-evolution mechanism can realise cooperative evolution of the running parameters with the population by dynamically adjusting parameter values according to population evolution state. Compared with five widely recognised parameter selection or adjustment strategies, on 20 numerical optimisation benchmark functions of different categories, the effectiveness and the efficiency of the proposed mechanism are verified. © 2020 Inderscience Enterprises Ltd.
引用
收藏
页码:255 / 267
页数:12
相关论文
共 50 条
[41]   Mine car suspension parameter optimisation based on improved particle swarm optimisation and approximation model [J].
Zhang J. ;
Li X. ;
Liu D. .
International Journal of Vehicle Design, 2019, 80 (01) :23-40
[42]   A memetic particle swarm optimisation algorithm for dynamic multi-modal optimisation problems [J].
Wang, Hongfeng ;
Yang, Shengxiang ;
Ip, W. H. ;
Wang, Dingwei .
INTERNATIONAL JOURNAL OF SYSTEMS SCIENCE, 2012, 43 (07) :1268-1283
[43]   Reliability optimisation method for intelligent manufacturing systems based on particle swarm optimisation algorithm [J].
Ren, Li ;
Li, Juchen .
INTERNATIONAL JOURNAL OF MODELLING IDENTIFICATION AND CONTROL, 2024, 45 (04) :200-210
[44]   Particle swarm optimisation with adaptive selection of inertia weight strategy [J].
Purnomo, Hindriyanto Dwi ;
Wee, Hui-Ming .
INTERNATIONAL JOURNAL OF COMPUTATIONAL SCIENCE AND ENGINEERING, 2016, 13 (01) :38-47
[45]   A many-objective particle swarm optimisation algorithm based on convergence assistant strategy [J].
Yang, Wusi ;
Chen, Li ;
Li, Yanyan ;
Abid, Fazeel .
INTERNATIONAL JOURNAL OF BIO-INSPIRED COMPUTATION, 2022, 20 (02) :104-118
[46]   A discrete particle swarm optimisation algorithm to operate distributed energy generation networks efficiently [J].
Cortes, Pablo ;
Munuzuri, Jesus ;
Onieva, Luis ;
Guadix, Jose .
INTERNATIONAL JOURNAL OF BIO-INSPIRED COMPUTATION, 2018, 12 (04) :226-235
[47]   An adaptive clustering algorithm based on improved particle swarm optimisation in wireless sensor networks [J].
Li, Deng-Ao ;
Hao, Hailong ;
Ji, Guolong ;
Zhao, Jumin .
International Journal of High Performance Computing and Networking, 2015, 8 (04) :370-380
[48]   A particle swarm optimisation algorithm for cloud-oriented workflow scheduling based on reliability [J].
Jian, Chengfeng ;
Tao, Meng ;
Wang, Yekun .
INTERNATIONAL JOURNAL OF COMPUTER APPLICATIONS IN TECHNOLOGY, 2014, 50 (3-4) :220-225
[49]   A novel particle swarm algorithm for solving parameter identification problems on graphics hardware [J].
Wang, Jing ;
Wu, Zhijian ;
Wang, Hui .
INTERNATIONAL JOURNAL OF COMPUTATIONAL SCIENCE AND ENGINEERING, 2011, 6 (1-2) :43-51
[50]   A novel particle swarm optimisation with mutation breeding [J].
Liu, Zhe ;
Han, Fei ;
Ling, Qing-Hua .
CONNECTION SCIENCE, 2020, 32 (04) :333-361