2020
DOI: 10.48550/arxiv.2008.13732
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Data-driven Outer-Loop Control Using Deep Reinforcement Learning for Trajectory Tracking

Maria Angelica Arroyo,
Luis Felipe Giraldo

Abstract: Reference tracking systems involve a plant that is stabilized by a local feedback controller and a command center that indicates the reference set-point the plant should follow. Typically, these systems are subject to limitations such as disturbances, systems delays, constraints, uncertainties, underperforming controllers, and unmodeled parameters that do not allow them to achieve the desired performance. In situations where it is not possible to redesign the inner-loop system, it is usual to incorporate an ou… Show more

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