Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTR

In this paper; a new robust adaptive neural network controller (RANNC) is presented for a class of non-affine nonlinear systems in the presence of unknown nonlinearities and disturbances. Firstly, the existence of an ideal implicit feedback linearisation control (IFLC) is established based on implic...

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Main Authors: J. Wang, S. S. Ge, T. H. Lee
Format: Article
Language:English
Published: SAGE Publishing 2002-02-01
Series:Measurement + Control
Online Access:https://doi.org/10.1177/002029400203500104
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spelling doaj-510a13d5faa34bd8bcc3d3f3b41668d12020-11-25T03:39:23ZengSAGE PublishingMeasurement + Control0020-29402002-02-013510.1177/002029400203500104Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTRJ. WangS. S. GeT. H. LeeIn this paper; a new robust adaptive neural network controller (RANNC) is presented for a class of non-affine nonlinear systems in the presence of unknown nonlinearities and disturbances. Firstly, the existence of an ideal implicit feedback linearisation control (IFLC) is established based on implicit function theory. Using Taylor series expansion, it is shown that the control of non-affine nonlinear systems is equivalent to the control ofaffine nonlinear systems in the neighbourhood of the operating trajectory under mild conditions. Then, a robust adaptive neural network control scheme is presented for the transformed nonlinear systems by using neural networks as universal approximators for the unknown system nonlinearities. The proposed RANNC can guarantee that all the signals in the closed-loop system are bounded and the tracking error asymptotically converges to zero. Simulation studies on the control of a continuously stirred tank reactor (CSTR) system are used to show the effectiveness of the scheme.https://doi.org/10.1177/002029400203500104
collection DOAJ
language English
format Article
sources DOAJ
author J. Wang
S. S. Ge
T. H. Lee
spellingShingle J. Wang
S. S. Ge
T. H. Lee
Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTR
Measurement + Control
author_facet J. Wang
S. S. Ge
T. H. Lee
author_sort J. Wang
title Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTR
title_short Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTR
title_full Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTR
title_fullStr Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTR
title_full_unstemmed Adaptive Neural Network Controller for Non-Affine Nonlinear Systems and its Application to CSTR
title_sort adaptive neural network controller for non-affine nonlinear systems and its application to cstr
publisher SAGE Publishing
series Measurement + Control
issn 0020-2940
publishDate 2002-02-01
description In this paper; a new robust adaptive neural network controller (RANNC) is presented for a class of non-affine nonlinear systems in the presence of unknown nonlinearities and disturbances. Firstly, the existence of an ideal implicit feedback linearisation control (IFLC) is established based on implicit function theory. Using Taylor series expansion, it is shown that the control of non-affine nonlinear systems is equivalent to the control ofaffine nonlinear systems in the neighbourhood of the operating trajectory under mild conditions. Then, a robust adaptive neural network control scheme is presented for the transformed nonlinear systems by using neural networks as universal approximators for the unknown system nonlinearities. The proposed RANNC can guarantee that all the signals in the closed-loop system are bounded and the tracking error asymptotically converges to zero. Simulation studies on the control of a continuously stirred tank reactor (CSTR) system are used to show the effectiveness of the scheme.
url https://doi.org/10.1177/002029400203500104
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