2023
DOI: 10.1109/tste.2023.3270761
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Multi-Agent Reinforcement Learning Control of a Hydrostatic Wind Turbine-Based Farm

Abstract: This paper leverages multi-agent reinforcement learning (MARL) to develop an efficient control system for a wind farm comprising a new type of wind turbines with hydrostatic transmission. The primary motivation for hydrostatic wind turbines (HWT) is increased reliability, and reduced manufacturing, operating, and maintaining costs by removing troublesome components and reducing nacelle weight. Nevertheless, the high system complexity of HWT and the wake effect pose significant challenges for the control of HWT… Show more

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