4.6 Article

Recursive search-based identification algorithms for the exponential autoregressive time series model with coloured noise

期刊

IET CONTROL THEORY AND APPLICATIONS
卷 14, 期 2, 页码 262-270

出版社

INST ENGINEERING TECHNOLOGY-IET
DOI: 10.1049/iet-cta.2019.0429

关键词

gradient methods; recursive estimation; time series; parameter estimation; least squares approximations; stochastic processes; autoregressive moving average processes; MI-ESG algorithm; parameter estimation accuracy; appropriate innovation length; forgetting factor; unknown parameters; ExpARMA model; recursive search-based identification algorithms; exponential autoregressive time series model; coloured noise; recursive parameter estimation problems; nonlinear exponential autoregressive model; average noise; gradient search; extended stochastic gradient algorithm; optimal step-size; multiinnovation identification theory; multiinnovation ESG algorithm

资金

  1. National Natural Science Foundation of China [61873111]
  2. 111 Project [B12018]
  3. National First-Class Discipline Program of Light Industry Technology and Engineering [LITE2018-26]

向作者/读者索取更多资源

This study focuses on the recursive parameter estimation problems for the non-linear exponential autoregressive model with moving average noise (the ExpARMA model for short). By means of the gradient search, an extended stochastic gradient (ESG) algorithm is derived. Considering the difficulty of determining the step-size in the ESG algorithm, a numerical approach is proposed to obtain the optimal step-size. In order to improve the parameter estimation accuracy, the authors employ the multi-innovation identification theory to develop a multi-innovation ESG (MI-ESG) algorithm for the ExpARMA model. Introducing a forgetting factor into the MI-ESG algorithm, the parameter estimation accuracy can be further improved. With an appropriate innovation length and forgetting factor, the variant of the MI-ESG algorithm is effective to identify all the unknown parameters of the ExpARMA model. A simulation example is provided to test the proposed algorithms.

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