2023
DOI: 10.20944/preprints202307.0386.v1
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Combination Optimization Method of Grid Section Based on Deep Reinforcement Learning with Accelerated Convergence Speed

Abstract: Modern power system integrates more and more new energy and use a large number of power electronic equipment. This makes it face more challenges in online optimization and real-time control. Deep reinforcement learning(DRL) has the ability of processing big data and high-dimensional features, as well as the ability of independently learning and optimizing decision-making in complex environments. In this paper, we explore DRL based online combination optimization method of grid section for large complex power s… Show more

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