Neural network adaptive position tracking control of underactuated autonomous surface vehicle

被引:0
作者
Chengju Zhang
Cong Wang
Yingjie Wei
Jinqiang Wang
机构
[1] Harbin Institute of Technology,School of Astronautics
来源
Journal of Mechanical Science and Technology | 2020年 / 34卷
关键词
Autonomous surface vehicles; Position tracking control; Dynamic surface control; Neural network; State predictor;
D O I
暂无
中图分类号
学科分类号
摘要
The present study investigates the position tracking control of the underactuated autonomous surface vehicle, which is subjected to parameters uncertainties and external disturbances. In this regard, the backstepping method, neural network, dynamic surface control and the sliding mode method are employed to design an adaptive robust controller. Moreover, a Lyapunov synthesis is utilized to verify the stability of the closed-loop control system. Following innovations are highlighted in this study: (i) The derivatives of the virtual control signals are obtained through the dynamic surface control, which overcomes the computational complexities of the conventional backstepping method. (ii) The designed controller can be easily applied in practical applications with no requirement to employ the neural network and state predictors to obtain model parameters. (iii) The prediction errors are combined with position tracking errors to construct the neural network updating laws, which improves the adaptation and the tracking performance. The simulation results demonstrate the effectiveness of the proposed position tracking controller.
引用
收藏
页码:855 / 865
页数:10
相关论文
共 112 条
  • [1] Fredriksen E(2006)Global k-exponential waypoint maneuvering of ships: Theory and experiments Automatica 42 677-687
  • [2] Petterson K Y(2013)Robust adaptive position mooring control for marine vessels IEEE Transactions on Control Systems Technology 21 395-409
  • [3] Chen M(2016)Hierarchical model predictive image-based visual servoing of underwater vehicles with adaptive neural network dynamic control IEEE Transactions on Cybernetics 46 2323-2334
  • [4] Ge S S(2010)Path following of underactuated marine surface vessels using line-of-sight based model predictive control Ocean Engineering 37 289-295
  • [5] How B V E(2016)Observer-based neural adaptive formation control of autonomous surface vessels with limited torque Robotics and Autonomous Systems 78 83-96
  • [6] Choo Y S(2014)Adaptive neural network control of a fully actuated marine surface vessel with multiple output constraints IEEE Transactions on Control Systems Technology 22 1536-1543
  • [7] Gao J(2011)Output feedback tracking of ships IEEE Transactions on Control Systems Technology 19 442-448
  • [8] Proctor A A(2012)GPU based generation of state transition models using simulations for unmanned surface vehicle trajectory planning Robotics and Autonomous Systems 60 1457-1471
  • [9] Shi Y(2014)Trajectory tracking of underactuated surface vessels: A linear algebra approach IEEE Transactions on Control Systems Technology 22 1103-1111
  • [10] Bradley C(2016)Path following of marine surface vehicles with dynamical uncertainty and timevarying ocean disturbances Neurocomputing 173 799-808