Tommaso Minella
Development of AI-based models for the management of energy communites = Development of AI-based models for the management of energy communities.
Rel. Alfonso Capozzoli, Silvio Brandi, Sabrina Savino. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Matematica, 2024
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Abstract
In this thesis, we explore the application of the Multi-Agent Actor-Critic (MAAC) algorithm in the context of energy management systems within buildings, where multiple agents must cooperate and compete to optimize energy usage. Efficient energy management in buildings is a challenging problem, often requiring coordination among multiple systems—such as heating, ventilation, and power generation—that interact in complex ways. Reinforcement learning (RL) offers a promising solution by enabling agents to learn optimal policies through trial and error. However, the non-stationary, mixed cooperative-competitive nature of this environment complicates the learning process, as agents must adapt not only to the environment but also to the evolving strategies of other agents.
MAAC is particularly well-suited to address these challenges, thanks to its centralized training and decentralized execution framework
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