1. A Hybrid Dynamic Probability Mutation Particle Swarm Optimization for Engineering Structure Design
- Author
-
Qiuyu Li and Zhiteng Ma
- Subjects
0209 industrial biotechnology ,Mathematical optimization ,Optimization problem ,Article Subject ,Computer Networks and Communications ,business.industry ,Computer science ,Computer Science::Neural and Evolutionary Computation ,Crossover ,MathematicsofComputing_NUMERICALANALYSIS ,Particle swarm optimization ,TK5101-6720 ,02 engineering and technology ,Computer Science Applications ,Engineering optimization ,020901 industrial engineering & automation ,Local optimum ,Telecommunication ,0202 electrical engineering, electronic engineering, information engineering ,020201 artificial intelligence & image processing ,Local search (optimization) ,business ,Metaheuristic ,Premature convergence - Abstract
Particle swarm optimization (PSO) is a common metaheuristic algorithm. However, when dealing with practical engineering structure optimization problems, it is prone to premature convergence during the search process and falls into a local optimum. To strengthen its performance, combining several ideas of the differential evolution algorithm (DE), a dynamic probability mutation particle swarm optimization with chaotic inertia weight (CWDEPSO) is proposed. The main improvements are achieved by improving the parameters and algorithm mechanism in this paper. The former proposes a novel inverse tangent chaotic inertia weight and sine learning factors. Besides, the scaling factor and crossover probability are improved by random distributions, respectively. The latter introduces a monitoring mechanism. By monitoring the convergence of PSO, a developed mutation operator with a more reliable local search capability is adopted and increases population diversity to help PSO escape from the local optimum effectively. To evaluate the effectiveness of the CWDEPSO algorithm, 24 benchmark functions and two groups of engineering optimization experiments are used for numerical and engineering optimization, respectively. The results indicate CWDEPSO offers better convergence accuracy and speed compared with some well-known metaheuristic algorithms.
- Published
- 2021
- Full Text
- View/download PDF