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Nonlinear adaptive control using neural networks and its application to CSTR systems
Authors:S. S. Ge   C. C. Hang  T. Zhang
Affiliation:Department of Electrical Engineering, National University of Singapore, Singapore 119260
Abstract:In this paper, adaptive tracking control is considered for a class of general nonlinear systems using multilayer neural networks (MNNs). Firstly, the existence of an ideal implicit feedback linearization control (IFLC) is established based on implicit function theory. Then, MNNs are introduced to reconstruct this ideal IFLC to approximately realize feedback linearization. The proposed adaptive controller ensures that the system output tracks a given bounded reference signal and the tracking error converges to an -neighborhood of zero with being a small design parameter, while stability of the closed-loop system is guaranteed. The effectiveness of the proposed controller is illustrated through an application to composition control in a continuously stirred tank reactor (CSTR) system.
Keywords:Nonlinear control systems   Adaptive control systems   Multilayer neural networks   Feedback control   Linearization   Control system analysis   Control system synthesis   Error analysis   Parameter estimation   System stability   Closed loop control systems   Chemical reactors   Implicit feedback linearization control (IFLC)   Continuously stirred tank reactor (CSTR) systems
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