Highly efficient maximum-likelihood identification methods for bilinear systems with colored noises
Meihang Li,
Ximei Liu,
Yamin Fan
et al.
Abstract:This paper mainly discussed the highly efficient iterative identification methods for bilinear systems with autoregressive moving average noise. Firstly, the input-output representation of the bilinear systems is derived through eliminating the unknown state variables in the model. Then based on the maximum-likelihood principle, a maximum-likelihood gradient-based iterative (ML-GI) algorithm is proposed to identify the parameters of the bilinear systems with colored noises. For improving the computational effi… Show more
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