Global adaptive tracking control of robot manipulators using neural networks with finite-time learning convergence

被引:0
作者
Chenguang Yang
Tao Teng
Bin Xu
Zhijun Li
Jing Na
Chun-Yi Su
机构
[1] South China University of Technology,Key Lab of Autonomous Systems and Networked Control, Ministry of Education
[2] Swansea University,Zienkiewicz Centre for Computational Engineering
[3] Northwestern Polytechnical University,School of Automation
[4] Kunming University of Science & Technology,Faculty of Mechanical & Electrical Engineering
来源
International Journal of Control, Automation and Systems | 2017年 / 15卷
关键词
Finite-time learning convergence; globally uniformly ultimate boundedness; neural networks; robot manipulators;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, the global adaptive neural control with finite-time (FT) convergence learning performance for a general class of nonlinear robot manipulators has been investigated. The scheme proposed in this paper offers a subtle blend of neural controller with robust controller, which palliates the limitation of neural approximation region to ensure globally uniformly ultimately bounded (GUUB) stability by integrating a switching mechanism. Morever, the proposed scheme guarantees the estimated neural weights converging to optimal values in finite time by embedding an adaptive learning algorithm driven by the estimated weights error. The optimal weights obtained through the learning process of the neural networks (NNs) will be reused next time for repeated tasks, and can thus reduce computational load, improve transient performance and enhance robustness. The simulation studies have been carried out to demonstrate the superior performance of the controller in comparison to the conventional methods.
引用
收藏
页码:1916 / 1924
页数:8
相关论文
共 109 条
  • [1] Cui R.(2016)Adaptive sliding-mode attitude control for autonomous underwater vehicles with input nonlinearities Ocean Engineering 123 45-54
  • [2] Zhang X.(2014)Neural network-based motion control of an underactuated wheeled inverted pendulum model. IEEE Transactions on Neural Networks & Learning Systems 25 2004-2016
  • [3] Cui D.(2017)Model predictive stabilization of constrained underactuated autonomous underwater vehicles with guaranteed feasibility and stability IEEE/ASME Transactions on Mechatronics 22 1185-1194
  • [4] Yang C.(2017)Receding horizon formation tracking control of constrained underactuated autonomous underwater vehicles IEEE Transactions on Industrial Electronics 64 5004-5013
  • [5] Li Z.(2016)Adaptive fuzzy control of nonlinear systems with unmodeled dynamics and input saturation using small-gain approach IEEE Transactions on Systems Man & Cybernetics Systems PP 1-11
  • [6] Cui R.(2014)Receding horizon stabilization and disturbance attenuation for neural networks with time-varying delay IEEE Transactions on Cybernetics 45 2680-2692
  • [7] Xu B.(2016)Adaptive neural network control of an uncertain robot with full-state constraints IEEE Transactions on Cybernetics 46 620-629
  • [8] Li H.(2016)Neural network control of a robotic manipulator with input deadzone and output constraint IEEE Transactions on Systems Man & Cybernetics Systems 46 759-770
  • [9] Yan W.(2017)Adaptive neural network control of a marine vessel with constraints using the asymmetric barrier lyapunov function IEEE Transactions on Cybernetics 47 1641-1651
  • [10] Li H.(2009)Adaptive neural network tracking control for manipulators with uncertain kinematics, dynamics and actuator model Automatica 45 2312-2318