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Global fast terminal sliding mode control based on radial basis function neural network for course keeping of unmanned surface vehicle
Author(s) -
Lili Wan,
Yixin Su,
Huajun Zhang,
Yongchuan Tang,
Binghua Shi
Publication year - 2019
Publication title -
international journal of advanced robotic systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.394
H-Index - 46
eISSN - 1729-8814
pISSN - 1729-8806
DOI - 10.1177/1729881419829961
Subject(s) - control theory (sociology) , terminal sliding mode , radial basis function , computer science , artificial neural network , controller (irrigation) , sliding mode control , radial basis function network , lyapunov function , terminal (telecommunication) , nonlinear system , lyapunov stability , basis (linear algebra) , control (management) , artificial intelligence , mathematics , telecommunications , physics , quantum mechanics , agronomy , biology , geometry
A scheme to solve the course keeping problem of the unmanned surface vehicle with nonlinear and uncertain characteristics and unknown external disturbances is investigated in this article. The chattering existing in global fast terminal sliding mode controller in solving the course keeping problem of the unmanned surface vehicle with external disturbance is analyzed. To reduce the chattering and eliminate the influence of the unknown disturbance, an adaptive global fast terminal sliding mode controller based on radial basis function neural network is developed. The equivalent control that usually requires a precise model information of the system is computed using the radial basis function neural network. The weights of the neural network are online adjusted according to the adaptive law that is derived using Lyapunov method to ensure the stability of the closed-loop system. Using the online learning of the neural network, the nonlinear uncertainty of the system and the unknown disturbance of external environment are compensated, and the system chattering is reduced effectively as well. The simulation results demonstrate that the proposed controller can achieve a good performance regarding the fast response and smooth control.

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