4.6 Article

Gradient-based iterative parameter estimation for bilinear-in-parameter systems using the model decomposition technique

Journal

IET CONTROL THEORY AND APPLICATIONS
Volume 12, Issue 17, Pages 2380-2389

Publisher

INST ENGINEERING TECHNOLOGY-IET
DOI: 10.1049/iet-cta.2018.5254

Keywords

parameter estimation; gradient methods; nonlinear control systems; bilinear systems; stochastic gradient algorithms; iterative algorithm; bilinear-in-parameter system; model decomposition technique; parameter estimation issues; block-oriented nonlinear system; bilinear-in-parameter model; nonlinear block; noise model; gradient-based iterative parameter estimation

Funding

  1. National Natural Science Foundation of China [61472195]
  2. Taishan Scholar Project Fund of Shandong Province of China [ts20130939]
  3. 111 Project [B12018]
  4. National First-Class Discipline Program of Light Industry Technology and Engineering [LITE2018-26]

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The parameter estimation issues of a block-oriented non-linear system that is bilinear in the parameters are studied, i.e. the bilinear-in-parameter system. Using the model decomposition technique, the bilinear-in-parameter model is decomposed into two fictitious submodels: one containing the unknown parameters in the non-linear block and the other containing the unknown parameters in the linear dynamic one and the noise model. Then a gradient-based iterative algorithm is proposed to estimate all the unknown parameters by formulating and minimising two criterion functions. The stochastic gradient algorithms are provided for comparison. The simulation results indicate that the proposed iterative algorithm can give higher parameter estimation accuracy than the stochastic gradient algorithms.

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