Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future Directions
In buildings, one or a combination of systems (e.g., central HVAC system, ceiling fan, desk fan, personal heater, and foot warmer) are often responsible for providing thermal comfort to the occupants. While thermal comfort has been shown to differ from person to person and vary over time, these syst...
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doaj-002d816f4cf749f39994a3a83beb4ab82020-11-25T02:13:21ZengFrontiers Media S.A.Frontiers in Built Environment2297-33622020-04-01610.3389/fbuil.2020.00049485637Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future DirectionsAli Ghahramani0Ali Ghahramani1Parson Galicia2David Lehrer3Zubin Varghese4Zhe Wang5Yogesh Pandit6Department of Building, National University of Singapore, Singapore, SingaporeCenter for the Built Environment, University of California, Berkeley, Berkeley, CA, United StatesCenter for the Built Environment, University of California, Berkeley, Berkeley, CA, United StatesCenter for the Built Environment, University of California, Berkeley, Berkeley, CA, United StatesIngersoll Rand Engineering and Technology Centre, Bengaluru, IndiaBuilding Technology and Urban Systems Division, Lawrence Berkeley National Lab, Berkeley, CA, United StatesIngersoll Rand Engineering and Technology Centre, Bengaluru, IndiaIn buildings, one or a combination of systems (e.g., central HVAC system, ceiling fan, desk fan, personal heater, and foot warmer) are often responsible for providing thermal comfort to the occupants. While thermal comfort has been shown to differ from person to person and vary over time, these systems are often operated based on prefixed setpoints and schedule of operations or at the request/routine of each individual. This leads to occupants’ discomfort and energy wastes. To enable the improvements in both comfort and energy efficiency autonomously, in this paper, we describe the necessity of an integrated system of sensors (e.g., wearable sensors/infrared sensors), infrastructure for enabling system interoperability, learning and control algorithms, and actuators (e.g., HVAC system setpoints, ceiling fans) to work under a governing central intelligent system. To assist readers with little to no exposure to artificial intelligence (AI), we describe the fundamentals of an intelligent entity (rational agent) and components of its problem-solving process (i.e., search algorithms, logic inference, and machine learning) and provide examples from the literature. We then discuss the current application of intelligent personal thermal comfort systems in buildings based on a comprehensive review of the literature. We finally describe future directions for enabling application of fully automated systems to provide comfort in an efficient manner. It is apparent that improvements in all aspects of an intelligent system are be needed to better ascertain the correct combination of systems to activate and for how long to increase the overall efficiency of the system and improve comfort.https://www.frontiersin.org/article/10.3389/fbuil.2020.00049/fullmachine learningpersonal thermal comfortdata mininghuman building interactionsbuildings energy efficiencyintelligent personal comfort systems |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ali Ghahramani Ali Ghahramani Parson Galicia David Lehrer Zubin Varghese Zhe Wang Yogesh Pandit |
spellingShingle |
Ali Ghahramani Ali Ghahramani Parson Galicia David Lehrer Zubin Varghese Zhe Wang Yogesh Pandit Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future Directions Frontiers in Built Environment machine learning personal thermal comfort data mining human building interactions buildings energy efficiency intelligent personal comfort systems |
author_facet |
Ali Ghahramani Ali Ghahramani Parson Galicia David Lehrer Zubin Varghese Zhe Wang Yogesh Pandit |
author_sort |
Ali Ghahramani |
title |
Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future Directions |
title_short |
Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future Directions |
title_full |
Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future Directions |
title_fullStr |
Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future Directions |
title_full_unstemmed |
Artificial Intelligence for Efficient Thermal Comfort Systems: Requirements, Current Applications and Future Directions |
title_sort |
artificial intelligence for efficient thermal comfort systems: requirements, current applications and future directions |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Built Environment |
issn |
2297-3362 |
publishDate |
2020-04-01 |
description |
In buildings, one or a combination of systems (e.g., central HVAC system, ceiling fan, desk fan, personal heater, and foot warmer) are often responsible for providing thermal comfort to the occupants. While thermal comfort has been shown to differ from person to person and vary over time, these systems are often operated based on prefixed setpoints and schedule of operations or at the request/routine of each individual. This leads to occupants’ discomfort and energy wastes. To enable the improvements in both comfort and energy efficiency autonomously, in this paper, we describe the necessity of an integrated system of sensors (e.g., wearable sensors/infrared sensors), infrastructure for enabling system interoperability, learning and control algorithms, and actuators (e.g., HVAC system setpoints, ceiling fans) to work under a governing central intelligent system. To assist readers with little to no exposure to artificial intelligence (AI), we describe the fundamentals of an intelligent entity (rational agent) and components of its problem-solving process (i.e., search algorithms, logic inference, and machine learning) and provide examples from the literature. We then discuss the current application of intelligent personal thermal comfort systems in buildings based on a comprehensive review of the literature. We finally describe future directions for enabling application of fully automated systems to provide comfort in an efficient manner. It is apparent that improvements in all aspects of an intelligent system are be needed to better ascertain the correct combination of systems to activate and for how long to increase the overall efficiency of the system and improve comfort. |
topic |
machine learning personal thermal comfort data mining human building interactions buildings energy efficiency intelligent personal comfort systems |
url |
https://www.frontiersin.org/article/10.3389/fbuil.2020.00049/full |
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