Journal of shanghai Jiaotong University (Science) ›› 2013, Vol. 18 ›› Issue (2): 140-146.doi: 10.1007/s12204-013-1376-3

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Optimization for PID Controller of Cryogenic Ground Support Equipment Based on Cooperative Random Learning Particle Swarm Optimization

Optimization for PID Controller of Cryogenic Ground Support Equipment Based on Cooperative Random Learning Particle Swarm Optimization

LI Xiang-bao* (李祥宝), JI Rui (季睿), YANG Yu-pu (杨煜普)   

  1. (Department of Automation, Shanghai Jiaotong University, Shanghai 200240, China)
  2. (Department of Automation, Shanghai Jiaotong University, Shanghai 200240, China)
  • Online:2013-04-30 Published:2013-05-10
  • Contact: LI Xiang-bao (李祥宝) E-mail:xiangbao.li@gmail.com

Abstract: Cryogenic ground support equipment (CGSE) is an important part of a famous particle physics experiment — AMS-02. In this paper a design method which optimizes PID parameters of CGSE control system via the particle swarm optimization (PSO) algorithm is presented. Firstly, an improved version of the original PSO, cooperative random learning particle swarm optimization (CRPSO), is put forward to enhance the performance of the conventional PSO. Secondly, the way of finding PID coefficient will be studied by using this algorithm. Finally, the experimental results and practical works demonstrate that the CRPSO-PID controller achieves a good performance.

Key words: particle swarm optimization (PSO)| PID controller| cryogenic ground support equipment (CGSE)|cooperative random learning particle swarm optimization (CRPSO)

摘要: Cryogenic ground support equipment (CGSE) is an important part of a famous particle physics experiment — AMS-02. In this paper a design method which optimizes PID parameters of CGSE control system via the particle swarm optimization (PSO) algorithm is presented. Firstly, an improved version of the original PSO, cooperative random learning particle swarm optimization (CRPSO), is put forward to enhance the performance of the conventional PSO. Secondly, the way of finding PID coefficient will be studied by using this algorithm. Finally, the experimental results and practical works demonstrate that the CRPSO-PID controller achieves a good performance.

关键词: particle swarm optimization (PSO)| PID controller| cryogenic ground support equipment (CGSE)|cooperative random learning particle swarm optimization (CRPSO)

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