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Extended Stochastic Gradient Identification Method for Hammerstein Model Based on Approximate Least Absolute Deviation

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  • Bao-chang Xu
  • Zhong-hua Lin
  • Ying-Dan Zhang
  • Yu-yue Xiao

Abstract

In order to identify the parameters of nonlinear Hammerstein model which are contaminated by colored noise and peak noise, the least absolute deviation (LAD) is selected as the objective function to solve the problem of large residual square when the identification data is disturbed by the impulse noise which obeys symmetrical alpha stable ( ) distribution. However, LAD cannot meet the need of differentiability required by most algorithms. To improve robustness and to solve the nondifferentiable problem, an approximate least absolute deviation (ALAD) objective function is established by introducing a deterministic function to replace absolute value under certain situations. The proposed method is derived from ALAD criterion and extended stochastic gradient method. Due to the differentiability of the objective function, we can get a recursive identification algorithm which is simple and easy to calculate compared with LAD. The convergence of the proposed identification method is also proved by Lyapunov stability theory, and the simulation experiments show that the proposed method has higher accuracy and stronger robustness than the least square (LS) method in the identification of Hammerstein model with colored noise and impulse noise. The impact of impulse noise can be restrained effectively.

Suggested Citation

  • Bao-chang Xu & Zhong-hua Lin & Ying-Dan Zhang & Yu-yue Xiao, 2016. "Extended Stochastic Gradient Identification Method for Hammerstein Model Based on Approximate Least Absolute Deviation," Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-10, June.
  • Handle: RePEc:hin:jnlmpe:9548428
    DOI: 10.1155/2016/9548428
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