Title
A biologically inspired approach to tracking control of underactuated surface vessels subject to unknown dynamics.
Abstract
The tracking control problem of underactuated surface vessels is studied.A biologically inspired approach is proposed using backstepping, neurodynamics model and NN.The control algorithm is efficient as no time derivatives of virtual controls are needed.The NN learning algorithm derived from Lyapunov theory is computationally efficient.The control performance is shown to be faster and better than other approaches. In this paper, a novel biologically inspired approach is proposed for the tracking control of an underactuated surface vessel subject to unknown dynamics. The tracking control algorithm is first derived from the error dynamics analysis of the vessel using backstepping. Then, three shunting neural dynamics derived from biological membrane equation are employed to avoid the inherent complexity of numerical derivatives of virtual control signals in the backstepping design. A single-layer neural network (NN) is finally used to approximate the unknown dynamics including uncertain model parameters and hydrodynamics coefficients. Unlike some existing tracking methods for surface vessel whose control algorithms suffer from requiring high computational effort, the proposed tracking control algorithm is computationally efficient as no derivative calculations on virtual controls are required. In addition, it is capable of tracking any smooth trajectories without any prior knowledge of the dynamics parameters. The effectiveness and efficiency of the proposed control approach are demonstrated by simulation and comparison studies.
Year
DOI
Venue
2015
10.1016/j.eswa.2014.09.042
Expert Syst. Appl.
Keywords
Field
DocType
neural network,robotics
Control algorithm,Lyapunov function,Backstepping,Virtual control,Unmanned surface vehicle,Computer science,Control theory,Artificial intelligence,Underactuation,Artificial neural network,Robotics
Journal
Volume
Issue
ISSN
42
4
0957-4174
Citations 
PageRank 
References 
4
0.48
16
Authors
4
Name
Order
Citations
PageRank
Chang-Zhong Pan1252.24
Xuzhi Lai28114.48
Simon X. Yang31029124.34
Min Wu43582272.55