Particle Swarm Optimization with Double Learning Patterns.

Journal: Computational intelligence and neuroscience
Published Date:

Abstract

Particle Swarm Optimization (PSO) is an effective tool in solving optimization problems. However, PSO usually suffers from the premature convergence due to the quick losing of the swarm diversity. In this paper, we first analyze the motion behavior of the swarm based on the probability characteristic of learning parameters. Then a PSO with double learning patterns (PSO-DLP) is developed, which employs the master swarm and the slave swarm with different learning patterns to achieve a trade-off between the convergence speed and the swarm diversity. The particles in the master swarm and the slave swarm are encouraged to explore search for keeping the swarm diversity and to learn from the global best particle for refining a promising solution, respectively. When the evolutionary states of two swarms interact, an interaction mechanism is enabled. This mechanism can help the slave swarm in jumping out of the local optima and improve the convergence precision of the master swarm. The proposed PSO-DLP is evaluated on 20 benchmark functions, including rotated multimodal and complex shifted problems. The simulation results and statistical analysis show that PSO-DLP obtains a promising performance and outperforms eight PSO variants.

Authors

  • Yuanxia Shen
    School of Computer Science and Technology, Anhui University of Technology, Maanshan 243002, China.
  • Linna Wei
    School of Computer Science and Technology, Anhui University of Technology, Maanshan 243002, China.
  • Chuanhua Zeng
    School of Computer Science and Technology, Anhui University of Technology, Maanshan 243002, China.
  • Jian Chen
    School of Pharmacy, Shanghai Jiaotong University, Shanghai, China.