4.6 Article

Experimental Validation of a Model-Free High-Order Sliding Mode Controller with Finite-Time Convergence for Trajectory Tracking of Autonomous Underwater Vehicles

期刊

SENSORS
卷 22, 期 2, 页码 -

出版社

MDPI
DOI: 10.3390/s22020488

关键词

AUV; SMC; finite-time; trajectory tracking

资金

  1. Tecnologico deMonterrey
  2. CONACyT

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This paper presents a model-free high-order sliding mode controller with finite-time convergence. The experimental results show that the proposed controller can drive the robot to the desired trajectories in a predefined time with reduced error and energy consumption compared to traditional PID controller and the same sliding mode controller with asymptotic convergence.
Several control strategies have been proposed for the trajectory tracking problem of Autonomous Underwater Vehicles (AUV). Most of them are model-based, hence, detailed knowledge of the parameters of the robot is needed. Few works consider a finite-time convergence in their controllers, which offers strong robustness and fast convergence compared with asymptotic or exponential solutions. Those finite-time controllers do not permit the users to predefine the convergence time, which can be useful for a more efficient use of the robot's energy. This paper presents the experimental validation of a model-free high-order Sliding Mode Controller (SMC) with finite-time convergence in a predefined time. The convergence time is introduced by the simple change of a time-base parameter. The aim is to validate the controller so it can be implemented for cooperative missions where the communication is limited or null. Results showed that the proposed controller can drive the robot to the desired depth and heading trajectories in the predefined time for all the cases, reducing the error by up to 75% and 41% when compared with a PID and the same SMC with asymptotic convergence. The energy consumption was reduced 35% and 50% when compared with those same controllers.

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