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Synthesis of the sliding-mode neural network controller for unknown nonlinear discrete-time systems
Authors:Yong Fang  Tommy W S Chow
Affiliation:1. School of Computing , Curtin University of Technology , Perth, Australia , Western Australia, 6845;2. School of Electrical and Information Engineering , The University of Sydney , New South Wales, Australia , 2006;3. Department of Electrical and Electronic Engineering , Melbourne University , Australia , Victoria, 3052
Abstract:This paper develops a sliding-mode neural network controller for a class of unknown nonlinear discrete-time systems using a recurrent neural network (RNN). The control scheme is based on a linearized expression of the nonlinear system using a linear neural network (LNN). The control law is proposed according to the discrete L yapunov theory. With a modified real-time recurrent learning algorithm, the RNN as an estimator is used to estimate the unknown part in the control law in on-line fashion. The stability of the control system is guaranteed owing to the on-line learning ability of the RNN algorithm. The proposed control scheme is applied to numerical problems and simulation results that it is very effective.
Keywords:nonsingular fast terminal sliding mode control  composite adaptive law  electromechanical actuator  finite-time convergence
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