Document Type
Conference Proceeding
Publication Date
10-5-2020
Abstract
In marine operations underwater manipulators play a primordial role. However, due to uncertainties in the dynamic model and disturbances caused by the environment, low-level control methods require great capabilities to adapt to change. Furthermore, under position and torque constraints the requirements for the control system are greatly increased. Reinforcement learning is a data driven control technique that can learn complex control policies without the need of a model. The learning capabilities of these type of agents allow for great adaptability to changes in the operative conditions. In this article we present a novel reinforcement learning low-level controller for the position control of an underwater manipulator under torque and position constraints. The reinforcement learning agent is based on an actor-critic architecture using sensor readings as state information. Simulation results using the Reach Alpha 5 underwater manipulator show the advantages of the proposed control strategy.
Publication Source (Journal or Book title)
2020 Global Oceans 2020: Singapore - U.S. Gulf Coast
Recommended Citation
Carlucho, I., De Paula, M., Barbalata, C., & Acosta, G. (2020). A reinforcement learning control approach for underwater manipulation under position and torque constraints. 2020 Global Oceans 2020: Singapore - U.S. Gulf Coast https://doi.org/10.1109/IEEECONF38699.2020.9389378