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Neural-network-based adaptive robust precision motion control of linear motors with asymptotic tracking performance
Authors:Ding  Runze  Ding  Chenyang  Xu  Yunlang  Yang  Xiaofeng
Institution:1.Shanghai Engineering Research Center of Ultra-Precision Motion Control and Measurement, Academy for Engineering and Technology, Fudan University, Shanghai, 200433, China
;2.State Key Laboratory of ASIC and System, School of Microelectronic, Fudan University, Shanghai, 200433, China
;
Abstract:

High precision motion control of permanent magnet linear motors (PMLMs) is limited by undesired nonlinear dynamics, parameter variations, and unstructured uncertainties. To tackle these problems, this paper presents a neural-network-based adaptive robust precision motion control scheme for PMLMs. The presented controller contains a robust feedback controller and an adaptive compensator. The robust controller is designed based on the robust integral of the sign of the error method, and the adaptive compensator consists of a neural network component and a parametric component. Moreover, a composite learning law is designed for the parameter adaption in the compensator to further enhance the control performance. Rigorous stability analysis is provided by using the Lyapunov theory, and asymptotic tracking is theoretically achieved. The effectiveness of the proposed method is verified by comparative simulations and experiments on a PMLM-driven motion stage.

Keywords:
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