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A Comparison of Classical and Deep Reinforcement Learning Methods for HVAC Control (2308.05711v1)
Published 10 Aug 2023 in cs.LG, cs.SY, and eess.SY
Abstract: Reinforcement learning (RL) is a promising approach for optimizing HVAC control. RL offers a framework for improving system performance, reducing energy consumption, and enhancing cost efficiency. We benchmark two popular classical and deep RL methods (Q-Learning and Deep-Q-Networks) across multiple HVAC environments and explore the practical consideration of model hyper-parameter selection and reward tuning. The findings provide insight for configuring RL agents in HVAC systems, promoting energy-efficient and cost-effective operation.
- Marshall Wang (1 paper)
- John Willes (10 papers)
- Thomas Jiralerspong (12 papers)
- Matin Moezzi (2 papers)