Adaptive neural network control for visual docking of an autonomous underwater vehicle using command filtered backstepping

Yuanxu Zhang, Jian Gao, Yimin Chen, Chenyi Bian, Fubin Zhang, Qingwei Liang

Research output: Contribution to journalArticlepeer-review

22 Scopus citations

Abstract

This article proposes an unscented Kalman filter-based visual docking controller for underactuated underwater vehicles using a position-based visual servoing (PBVS) approach. The relative pose of an underwater vehicle with respect to a moving docking station is estimated by an unscented Kalman filter with the visual measurements of multiple point features installed on the station. Based on the estimated pose, the Euler angles commands are designed via an integral cross-tracking docking method to drive the underwater vehicle to move along the desired docking path. Then, an adaptive neural network (NN) controller is designed to track the desired yaw and pitch angles using command filtered backstepping, in which a single-hidden-layer (SHL) neural network is employed to compensate for dynamic uncertainties and external disturbances. A barrier Lyapunov function is defined to improve the stability of tracking errors under attitude constraints to ensure the features are in the field of view, and hyperbolic tangent functions are utilized to deal with input saturation. Simulation studies and pool experiments are provided to demonstrate the performances of the proposed visual docking controller.

Original languageEnglish
Pages (from-to)4716-4738
Number of pages23
JournalInternational Journal of Robust and Nonlinear Control
Volume32
Issue number8
DOIs
StatePublished - 25 May 2022

Keywords

  • adaptive neural network control
  • position-based visual servoing
  • underwater vehicles
  • unscented Kalman filtering
  • visual docking control

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