Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystem

Abstract For a Hammerstein system subject to a stochastic input that is spectrally coloured, this study is first in the open literature (to the present authors' best knowledge) to estimate its linear dynamic subsystem. This estimation is achieved without any prior knowledge nor any prior/simult...

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Main Authors: Tsair‐Chuan Lin, Kainam Thomas Wong
Format: Article
Language:English
Published: Wiley 2021-07-01
Series:IET Signal Processing
Online Access:https://doi.org/10.1049/sil2.12029
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spelling doaj-5afc24f7ee6a48c289bd5ecc42821ce92021-08-02T08:30:43ZengWileyIET Signal Processing1751-96751751-96832021-07-0115529130010.1049/sil2.12029Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystemTsair‐Chuan Lin0Kainam Thomas Wong1Department of Statistics National Taipei UniversitySchool of General Engineering Beihang UniversityAbstract For a Hammerstein system subject to a stochastic input that is spectrally coloured, this study is first in the open literature (to the present authors' best knowledge) to estimate its linear dynamic subsystem. This estimation is achieved without any prior knowledge nor any prior/simultaneous estimation of the preceding non‐linear static subsystem. This proposed estimator can handle any temporally self‐correlated input despite its potentially unknown spectrum, unknown variance and unknown mean—unlike the common assumption that the input is white and zero‐mean. This proposed estimator needs observations only of the Hammerstein system's overall input and consequential output, but not any observation of any intrasubsystem signal. Furthermore, this proposed estimator can handle a linear subsystem whose input and/or output are each corrupted additively by stationary (and possibly coloured) noises of unknown probability distributions, of unknown non‐zero means and of unknown autocovariances. The proposed estimate is analytically proved herein as asymptotically unbiased and as pointwise consistent; and the estimate's finite‐sample convergence rate is also derived analytically.https://doi.org/10.1049/sil2.12029
collection DOAJ
language English
format Article
sources DOAJ
author Tsair‐Chuan Lin
Kainam Thomas Wong
spellingShingle Tsair‐Chuan Lin
Kainam Thomas Wong
Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystem
IET Signal Processing
author_facet Tsair‐Chuan Lin
Kainam Thomas Wong
author_sort Tsair‐Chuan Lin
title Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystem
title_short Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystem
title_full Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystem
title_fullStr Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystem
title_full_unstemmed Hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: Identification of the dynamic linear subsystem
title_sort hammerstein system with a stochastic input of arbitrary/unknown autocorrelation: identification of the dynamic linear subsystem
publisher Wiley
series IET Signal Processing
issn 1751-9675
1751-9683
publishDate 2021-07-01
description Abstract For a Hammerstein system subject to a stochastic input that is spectrally coloured, this study is first in the open literature (to the present authors' best knowledge) to estimate its linear dynamic subsystem. This estimation is achieved without any prior knowledge nor any prior/simultaneous estimation of the preceding non‐linear static subsystem. This proposed estimator can handle any temporally self‐correlated input despite its potentially unknown spectrum, unknown variance and unknown mean—unlike the common assumption that the input is white and zero‐mean. This proposed estimator needs observations only of the Hammerstein system's overall input and consequential output, but not any observation of any intrasubsystem signal. Furthermore, this proposed estimator can handle a linear subsystem whose input and/or output are each corrupted additively by stationary (and possibly coloured) noises of unknown probability distributions, of unknown non‐zero means and of unknown autocovariances. The proposed estimate is analytically proved herein as asymptotically unbiased and as pointwise consistent; and the estimate's finite‐sample convergence rate is also derived analytically.
url https://doi.org/10.1049/sil2.12029
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AT kainamthomaswong hammersteinsystemwithastochasticinputofarbitraryunknownautocorrelationidentificationofthedynamiclinearsubsystem
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