A reinforcement learning control approach for underwater manipulation under position and torque constraints

被引:5
作者
Carlucho, Ignacio [1 ]
De Paula, Mariano [2 ]
Barbalata, Corina [1 ]
Acosta, Gerardo G. [2 ]
机构
[1] Louisiana State Univ, Dept Mech Engn, Baton Rouge, LA 70803 USA
[2] Ctr CIFICEN UNICEN CICpBA CONICET, INTELYMEC Grp, Ctr Invest Fis & Ingn, RA-7400 Olavarria, Argentina
来源
GLOBAL OCEANS 2020: SINGAPORE - U.S. GULF COAST | 2020年
关键词
Underwater manipulation; Reinforcement learning; Neural networks; Intelligent control; Deep Deterministic Policy Gradient; LEVEL CONTROL; FORCE;
D O I
10.1109/IEEECONF38699.2020.9389378
中图分类号
U6 [水路运输]; P75 [海洋工程];
学科分类号
0814 ; 081505 ; 0824 ; 082401 ;
摘要
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.
引用
收藏
页数:7
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