An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein Model

Chemical industrial processes involve numerous multivariable nonlinear systems. Nonlinear Muli-Input Muli-Output (MIMO) models seem more suitable to represent most systems and control problems in industrial processes. Furthermore, the outputs of the real systems might be corrupted with the colored n...

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Main Authors: Baochang Xu, Likun Yuan, Yaxin Wang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9293125/
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spelling doaj-0daf63ddce79496fb58b914bceafaabd2021-03-30T03:47:33ZengIEEEIEEE Access2169-35362020-01-01822470222471110.1109/ACCESS.2020.30442729293125An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein ModelBaochang Xu0Likun Yuan1https://orcid.org/0000-0001-8374-8951Yaxin Wang2https://orcid.org/0000-0002-7168-5399Department of Automation, China University of Petroleum, Beijing, ChinaDepartment of Automation, China University of Petroleum, Beijing, ChinaDepartment of Automation, China University of Petroleum, Beijing, ChinaChemical industrial processes involve numerous multivariable nonlinear systems. Nonlinear Muli-Input Muli-Output (MIMO) models seem more suitable to represent most systems and control problems in industrial processes. Furthermore, the outputs of the real systems might be corrupted with the colored noises, which do not satisfy the assumption of the white noises. In order to solve the impact of the colored noises, an Amplitude-Limiting Variational Bayesian (ALVB) method combined with multivariable nonlinear model (Hammerstein model) working in over-sampling closed-loop structure is proposed in this article. This method is the improvement of the Variational Bayesian (VB) method combining Hammerstein model and over-sampling closed-loop structure. Simulation experiments show that for the nonlinear model (Hammerstein model), the proposed algorithm not only overcomes the unidentifiable disadvantage of the traditional structure but also contributes to a higher identification accuracy. Furthermore, even under situation that the processes output noise is a colored noise, the proposed algorithm still maintains and converges to the achieved accuracy.https://ieeexplore.ieee.org/document/9293125/Over-sampling closed-loop structurehammerstein modelvariational Bayesian (VB) methodamplitude-limited variational Bayesian (ALVB) methodcolored noise
collection DOAJ
language English
format Article
sources DOAJ
author Baochang Xu
Likun Yuan
Yaxin Wang
spellingShingle Baochang Xu
Likun Yuan
Yaxin Wang
An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein Model
IEEE Access
Over-sampling closed-loop structure
hammerstein model
variational Bayesian (VB) method
amplitude-limited variational Bayesian (ALVB) method
colored noise
author_facet Baochang Xu
Likun Yuan
Yaxin Wang
author_sort Baochang Xu
title An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein Model
title_short An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein Model
title_full An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein Model
title_fullStr An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein Model
title_full_unstemmed An Over-Sampling Amplitude-Limited Variational Bayesian Method for the Identification of Hammerstein Model
title_sort over-sampling amplitude-limited variational bayesian method for the identification of hammerstein model
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description Chemical industrial processes involve numerous multivariable nonlinear systems. Nonlinear Muli-Input Muli-Output (MIMO) models seem more suitable to represent most systems and control problems in industrial processes. Furthermore, the outputs of the real systems might be corrupted with the colored noises, which do not satisfy the assumption of the white noises. In order to solve the impact of the colored noises, an Amplitude-Limiting Variational Bayesian (ALVB) method combined with multivariable nonlinear model (Hammerstein model) working in over-sampling closed-loop structure is proposed in this article. This method is the improvement of the Variational Bayesian (VB) method combining Hammerstein model and over-sampling closed-loop structure. Simulation experiments show that for the nonlinear model (Hammerstein model), the proposed algorithm not only overcomes the unidentifiable disadvantage of the traditional structure but also contributes to a higher identification accuracy. Furthermore, even under situation that the processes output noise is a colored noise, the proposed algorithm still maintains and converges to the achieved accuracy.
topic Over-sampling closed-loop structure
hammerstein model
variational Bayesian (VB) method
amplitude-limited variational Bayesian (ALVB) method
colored noise
url https://ieeexplore.ieee.org/document/9293125/
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AT baochangxu oversamplingamplitudelimitedvariationalbayesianmethodfortheidentificationofhammersteinmodel
AT likunyuan oversamplingamplitudelimitedvariationalbayesianmethodfortheidentificationofhammersteinmodel
AT yaxinwang oversamplingamplitudelimitedvariationalbayesianmethodfortheidentificationofhammersteinmodel
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