Nonparametric models for Hammerstein-Wiener and Wiener-Hammerstein system identification

IFAC-PapersOnLine(2020)

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摘要
Abstract We propose a framework for modeling structured nonlinear systems using nonpara-metric Gaussian processes. In particular, we introduce a two-layer stochastic model of latent interconnected Gaussian processes suitable for modeling Hammerstein-Wiener and Wiener-Hammerstein cascades. The posterior distribution of the latent processes is intractable because of the nonlinear interactions in the model; hence, we propose a Markov Chain Monte Carlo method consisting of a Gibbs sampler where each step is implemented using elliptical-slice sampling. We present the results on two example nonlinear systems showing that they can effectively be modeled and identified using the proposed nonparametric modeling approach.
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关键词
Nonlinear system identification,Bayesian methods,Nonparametric methods
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