Journal of Marine Science and Engineering (Oct 2024)

Optimized Trajectory Tracking for ROVs Using DNN + ENMPC Strategy

  • Guanghao Yang,
  • Weidong Liu,
  • Le Li,
  • Jingming Xu,
  • Liwei Guo,
  • Kang Zhang

DOI
https://doi.org/10.3390/jmse12101827
Journal volume & issue
Vol. 12, no. 10
p. 1827

Abstract

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This study introduces an innovative double closed-loop 3D trajectory tracking approach, integrating deep neural networks (DNN) with event-triggered nonlinear model predictive control (ENMPC), specifically designed for remotely operated vehicles (ROVs) under external disturbance conditions. In contrast to single-loop model predictive control, the proposed double closed-loop control system operates in two distinct phases: (1) The outer loop controller uses a DNN controller to replace the LMPC controller, overcoming the uncertainties in the kinematic model while reducing the computational burden. (2) The inner loop velocity controller is designed using a nonlinear model predictive control (NMPC) algorithm with its closed-loop stability proven. A DNN + ENMPC 3D trajectory tracking method is proposed, integrating a velocity threshold-triggered mechanism into the inner-loop NMPC controller to reduce computational iterations while sacrificing only a small amount of tracking control performance. Finally, simulation results indicate that compared with the ENMPC algorithm, NMPC + ENMPC can better track the desired trajectory, reduce thruster oscillations, and further minimize the computational load.

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