F. Cicirelli, A. Guerrieri, C. Mastroianni, Fabio Palopoli, G. Spezzano, Andrea Vinci
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Comfort-aware Cognitive Buildings Leveraging Deep Reinforcement Learning
This paper presents a novel approach for the management of buildings by leveraging cognitive technologies. The proposed approach exploits the Deep Reinforcement Learning paradigm to learn from both a physical and a simulated environment so as to optimize people comfort and energy consumption.