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Design and Implementation of a Sliding Mode Controller Using a Gaussian Radial Basis Function Neural Network Estimator for a Synchronous Reluctance Motor Speed Drive

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This article presents a sliding mode control using a Gaussian radial basis function neural network speed control design for robust stabilization and disturbance rejection of the synchronous reluctance motor. In the conventional sliding mode control design, it is assumed that the upper boundary of parameter variations and external disturbances is known and the sign function is used. This causes high-frequency chattering and high gain. A new sliding mode controller using a Gaussian radial basis function neural network estimator is proposed for the synchronous reluctance motor. The proposed method utilizes the Lyapunov function candidate to guarantee convergence and to track the speed command of the synchronous reluctance motor asymptotically. The estimator of parameter variations and external disturbances is designed to estimate the lump unknown uncertainty value in real time. Experiments were conducted to validate the proposed method.

Keywords: Gaussian radial basis function neural network; Lyapunov function; sliding mode control; synchronous reluctance motor

Document Type: Research Article

Affiliations: 1: Department of Optoelectronic Engineering, Far East University, Tainan, Taiwan, R.O.C.,Graduate School of Engineering Science and Technology, National Yunlin University of Science & Technology, Douliu, Yunlin, Taiwan, R.O.C. 2: Automotive Research and Testing Center, Electronic Vehicle and System Verification Group R & D Division, Changhua, Taiwan, R.O.C. 3: Department of Electrical Engineering, National Yunlin University of Science & Technology, Douliu, Yunlin, Taiwan, R.O.C.

Publication date: 01 April 2011

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