2022
DOI: 10.3390/en15218235
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Demand Response in HEMSs Using DRL and the Impact of Its Various Configurations and Environmental Changes

Abstract: With smart grid advances, enormous amounts of data are made available, enabling the training of machine learning algorithms such as deep reinforcement learning (DRL). Recent research has utilized DRL to obtain optimal solutions for complex real-time optimization problems, including demand response (DR), where traditional methods fail to meet time and complex requirements. Although DRL has shown good performance for particular use cases, most studies do not report the impacts of various DRL settings. This paper… Show more

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