Nonlinear model predictive control for hydrobatics: Experiments with an underactuated AUV

Author:

Bhat Sriharsha1ORCID,Panteli Chariklia1ORCID,Stenius Ivan1ORCID,Dimarogonas Dimos V.2ORCID

Affiliation:

1. School of Engineering Sciences KTH Royal Institute of Technology Stockholm Sweden

2. School of Electrical Engineering and Computer Science KTH Royal Institute of Technology Stockholm Sweden

Abstract

AbstractHydrobatic autonomous underwater vehicles (AUVs) can be efficient in range and speed, as well as agile in maneuvering. They can be beneficial in scenarios such as obstacle avoidance, inspections, docking, and under‐ice operations. However, such AUVs are underactuated systems—this means exploiting the system dynamics is key to achieving elegant hydrobatic maneuvers with minimum controls. This paper explores the use of model predictive control (MPC) techniques to control underactuated AUVs in hydrobatic maneuvers and presents new simulation and experimental results with the small and hydrobatic SAM AUV. Simulations are performed using nonlinear model predictive control (NMPC) on the full AUV system to provide optimal control policies for several hydrobatic maneuvers in Matlab/Simulink. For implementation on AUV hardware in robot operating system, a linear time varying MPC (LTV‐MPC) is derived from the nonlinear model to enable real‐time control. In simulations, NMPC and LTV‐MPC shows promising results to offer much more efficient control strategies than what can be obtained with PID and linear quadratic regulator based controllers in terms of rise‐time, overshoot, steady‐state error, and robustness. The LTV‐MPC shows satisfactory real‐time performance in experimental validation. The paper further also demonstrates experimentally that LTV‐MPC can be run real‐time on the AUV in performing hydrobatic maneouvers.

Publisher

Wiley

Subject

Computer Science Applications,Control and Systems Engineering

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