Parameter learning of multi‐input multi‐output Hammerstein system with measurement noises utilizing combined signals
Feng Li,
Xueqi Sun,
Qingfeng Cao
Abstract:SummaryIn this article, the parameter learning scheme for the multi‐input multi‐output (MIMO) Hammerstein nonlinear systems under measurement noises is studied, which is derived by exploiting the correlation analysis and data filtering technique. The coupled MIMO Hammerstein system presented involves a static nonlinear subsystem modeled by neural fuzzy model (NFM), and a dynamic linear subsystem established by autoregressive moving average with extra input (ARMAX) model. To learn the unknown parameter of the M… Show more
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