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review article

Dynamic indoor thermal environment using Reinforcement Learning-based controls: Opportunities and challenges

Chatterjee, Arnab  
•
Khovalyg, Dolaana  
October 1, 2023
Building and Environment

Currently, the indoor thermal environment in many buildings is controlled by conventional control techniques that maintain the indoor temperature within a prescribed deadband. The latest research provides evidence that more dynamic variations of the indoor thermal environment can promote health and trigger positive thermal alliesthesia , but such an environment requires a flexible and responsive control system that can adapt to the changes in real-time. As an emerging control technique, Reinforcement Learning (RL) has attracted growing research interest and demonstrated its potential to enhance building performance while addressing some limitations of other advanced control techniques. Thus, a comprehensive review explored the boundaries and limitations of a dynamic indoor environment and the possibilities to apply RL for building controls suitable for varying the indoor thermal environment. The first part discussed the studies on the permissible limits of temperature step changes and acceptable drifts to human occupants. It also debated the flexibility of the range of human thermal comfort and adaptation. In the next part, studies on RL for HVAC controls were explored, focusing on their application in creating a dynamic indoor thermal environment. The different algorithms, HVAC systems, co-simulation environment, action spaces, and energy-saving potentials were discussed. Overall, based on the review, this work outlined a potential pathway for the RL-based controller that can dynamically vary the indoor temperature. Suitable environmental parameters to be controlled, a choice of the RL-based algorithm, action space, and co-simulation environment are discussed.

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Type
review article
DOI
10.1016/j.buildenv.2023.110766
Author(s)
Chatterjee, Arnab  
Khovalyg, Dolaana  
Date Issued

2023-10-01

Published in
Building and Environment
Volume

244

Article Number

110766

Subjects

Reinforcement Learning

•

Dynamic indoor environment

•

HVAC controls

•

Energy efficiency

•

Thermal comfort

•

Temperature drifting

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
ICE  
Available on Infoscience
February 7, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/203507
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