2021
DOI: 10.48550/arxiv.2110.02566
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Adaptive control of a mechatronic system using constrained residual reinforcement learning

Abstract: We propose a simple, practical and intuitive approach to improve the performance of a conventional controller in uncertain environments using deep reinforcement learning while maintaining safe operation. Our approach is motivated by the observation that conventional controllers in industrial motion control value robustness over adaptivity to deal with different operating conditions and are suboptimal as a consequence. Reinforcement learning on the other hand can optimize a control signal directly from input-ou… Show more

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