A regularised fast recursive algorithm for fraction model identification of nonlinear dynamic systems
Li Zhang,
Kang Li,
Dajun Du,
Yihuan Li and
Minrui Fei
International Journal of Systems Science, 2023, vol. 54, issue 7, 1616-1638
Abstract:
The fraction model has been widely used to represent a range of engineering systems. To accurately identify the fraction model is however challenging, and this paper presents a regularised fast recursive algorithm (RFRA) to identify both the true fraction model structure and the associated unknown model parameters. This is achieved first by transforming the fraction form to a linear combination of nonlinear model terms. Then the terms in the denominator are used to form a regularisation term in the cost function to offset the bias induced by the linear transformation. According to the structural risk minimisation principle based on the new cost function, the model terms are selected based on their contributions to the cost function and the coefficients are then identified recursively without explicitly solving the inverse matrix. The proposed method is proved to have low computational complexity. Simulation results confirm the efficacy of the method in fast identification of the true fraction models for the targeted nonlinear systems.
Date: 2023
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Persistent link: https://EconPapers.repec.org/RePEc:taf:tsysxx:v:54:y:2023:i:7:p:1616-1638
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DOI: 10.1080/00207721.2023.2188983
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