Reinforcement Learning (RL) Meets Urban Climate Modeling: Investigating the Efficacy and Impacts of RL-Based HVAC Control
Junjie Yu, John S. Schreck, David John Gagne, Keith W. Oleson, Jie Li, Yongtu Liang, Qi Liao, Mingfei Sun, David O. Topping, Zhonghua Zheng

TL;DR
This study evaluates the effectiveness and impacts of reinforcement learning-based HVAC control across different urban climates, highlighting variability in performance and transferability influenced by climate conditions.
Contribution
It introduces an integrated framework combining RL with urban climate modeling to assess HVAC control strategies in diverse climatic contexts.
Findings
RL reward and impact vary significantly across climates.
Hot cities tend to achieve higher RL rewards.
Climate influences RL strategy transferability.
Abstract
Reinforcement learning (RL)-based heating, ventilation, and air conditioning (HVAC) control has emerged as a promising technology for reducing building energy consumption while maintaining indoor thermal comfort. However, the efficacy of such strategies is influenced by the background climate and their implementation may potentially alter both the indoor climate and local urban climate. This study proposes an integrated framework combining RL with an urban climate model that incorporates a building energy model, aiming to evaluate the efficacy of RL-based HVAC control across different background climates, impacts of RL strategies on indoor climate and local urban climate, and the transferability of RL strategies across cities. Our findings reveal that the reward (defined as a weighted combination of energy consumption and thermal comfort) and the impacts of RL strategies on indoor…
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Taxonomy
TopicsBuilding Energy and Comfort Optimization · Smart Grid Energy Management · Greenhouse Technology and Climate Control
