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Reinforcement Learning of Depth Stabilization with a Micro Diving Agent

Gerrit Brinkmann, Wallace Moreira Bessa, Daniel A Duecker, Edwin Kreuzer, Eugen Solowjow

Year
2018
Citations
4

Abstract

Reinforcement learning (RL) allows robots to solve control tasks through interaction with their environment. In this paper we study a model-based value-function RL approach, which is suitable for computationally limited robots and light embedded systems. We develop a diving agent, which uses the RL algorithm for underwater depth stabilization. Simulations and experiments with the micro diving agent demonstrate its ability to learn the depth stabilization task.

Keywords

Reinforcement learningUnderwaterComputer scienceTask (project management)RobotArtificial intelligenceFunction (biology)ReinforcementEngineeringGeology

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