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Improved Composite Nonlinear Feedback Control for Robot Manipulators 被引量:2
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作者 GONG chenglong JIANG Yuan LU Ke 《Journal of Donghua University(English Edition)》 EI CAS 2018年第6期464-468,共5页
External disturbances or inaccurate mathematical model built will inevitably impose a disadvantageous effect on the robot system,which generates positioning errors,vibrations,as well as weakening control performances ... External disturbances or inaccurate mathematical model built will inevitably impose a disadvantageous effect on the robot system,which generates positioning errors,vibrations,as well as weakening control performances of the system. The strategy of combining adaptive radial basis function( RBF) neural network control and composite nonlinear feedback( CNF) control is studied,and a robot CNF controller based on RBF neural network compensation is proposed. The core is to use RBF neural network control to approach the uncertainty of the system online,as the compensation term of the CNF controller,and make full use of the advantages of the two control methods to reduce the influence of uncertain factors on the performance of the system. The convergence of closed-loop system is proved. Simulation results demonstrate the effectiveness of this strategy. 展开更多
关键词 robot uncertainty COMPOSITE nonlinear FEEDBACK (CNF) adaptive RBF NEURAL network system CONVERGENCE trajecfory tracking
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