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Study on the Robot Robust Adaptive Control Based on Neural Networks
作者姓名:温淑焕  王洪瑞  吴丽艳
作者单位:Wen Shuhuan,Wang Hongrui & Wu Liyan Department of Electronic Engineering,Yanshan University,Qinhuangdao 066004,P. R. China
摘    要:Force control based on neural networks is presented. Under the framework of hybrid control, an RBF neural network is used to compensate for all the uncertainties from robot dynamics and unknown environment first. The technique will improve the adaptability to environment stiffness when the end-effector is in contact with the environment, and does not require any a priori knowledge on the upper bound of syste uncertainties. Moreover, it need not compute the inverse of inertia matrix. Learning algorithms for neural networks to minimize the force error directly are designed. Simulation results have shown a better force/position tracking when neural network is used.


Study on the Robot Robust Adaptive Control Based on Neural Networks
Wen Shuhuan,Wang Hongrui & Wu Liyan.Study on the Robot Robust Adaptive Control Based on Neural Networks[J].Journal of Systems Engineering and Electronics,2003,14(4).
Authors:Wen Shuhuan  Wang Hongrui & Wu Liyan
Affiliation:Department of Electronic Engineering, Yanshan University, Qinhuangdao 066004, P. R. China
Abstract:Force control based on neural networks is presented. Under the framework of hybrid control, an RBF neural network is used to compensate for all the uncertainties from robot dynamics and unknown environment first. The technique will improve the adaptability to environment stiffness when the end-effector is in contact with the environment, and does not require any a priori knowledge on the upper bound of syste uncertainties. Moreover, it need not compute the inverse of inertia matrix. Learning algorithms for neural networks to minimize the force error directly are designed. Simulation results have shown a better force/position tracking when neural network is used.
Keywords:robotics  force/position control  neural network  hybrid control  
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