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A Parameter Estimation Method for Nonlinear Systems Based on Improved Boundary Chicken Swarm Optimization

Author

Listed:
  • Shaolong Chen
  • Renyu Yang
  • Renhuan Yang
  • Liu Yang
  • Xiuzeng Yang
  • Chuangbiao Xu
  • Baoguo Xu
  • Huatao Zhang
  • Yaosheng Lu
  • Weiping Liu

Abstract

Parameter estimation is an important problem in nonlinear system modeling and control. Through constructing an appropriate fitness function, parameter estimation of system could be converted to a multidimensional parameter optimization problem. As a novel swarm intelligence algorithm, chicken swarm optimization (CSO) has attracted much attention owing to its good global convergence and robustness. In this paper, a method based on improved boundary chicken swarm optimization (IBCSO) is proposed for parameter estimation of nonlinear systems, demonstrated and tested by Lorenz system and a coupling motor system. Furthermore, we have analyzed the influence of time series on the estimation accuracy. Computer simulation results show it is feasible and with desirable performance for parameter estimation of nonlinear systems.

Suggested Citation

  • Shaolong Chen & Renyu Yang & Renhuan Yang & Liu Yang & Xiuzeng Yang & Chuangbiao Xu & Baoguo Xu & Huatao Zhang & Yaosheng Lu & Weiping Liu, 2016. "A Parameter Estimation Method for Nonlinear Systems Based on Improved Boundary Chicken Swarm Optimization," Discrete Dynamics in Nature and Society, John Wiley & Sons, vol. 2016(1).
  • Handle: RePEc:wly:jnddns:v:2016:y:2016:i:1:n:3795961
    DOI: 10.1155/2016/3795961
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    References listed on IDEAS

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