Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning

Despite the promising results of deep learning research, construction industry applications are still limited. Facility Management (FM) in construction has yet to take full advantage of the efficiency of deep learning techniques in daily operations and maintenance. Heating, Ventilation, and Air Cond...

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Main Authors: Sanzana, Mirza Rayana, Maul, Tomas, Wong, Jing Ying, Abdulrazic, Mostafa Osama Mostafa, Yip, Chun-Chieh
Format: Article
Language:English
Published: Elsevier Ltd 2022
Subjects:
Online Access:https://eprints.nottingham.ac.uk/80525/
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author Sanzana, Mirza Rayana
Maul, Tomas
Wong, Jing Ying
Abdulrazic, Mostafa Osama Mostafa
Yip, Chun-Chieh
author_facet Sanzana, Mirza Rayana
Maul, Tomas
Wong, Jing Ying
Abdulrazic, Mostafa Osama Mostafa
Yip, Chun-Chieh
author_sort Sanzana, Mirza Rayana
building Nottingham Research Data Repository
collection Online Access
description Despite the promising results of deep learning research, construction industry applications are still limited. Facility Management (FM) in construction has yet to take full advantage of the efficiency of deep learning techniques in daily operations and maintenance. Heating, Ventilation, and Air Conditioning (HVAC) is a major part of Facility Management and Maintenance (FMM) operations, and an occasional HVAC malfunction can lead to a huge monetary loss. The application of deep learning techniques in FMM can optimize building performance, especially in predictive maintenance, by lowering energy consumption, scheduling maintenance, as well as monitoring equipment. This review covers 100 papers that show how neural networks have evolved in this area and summarizes deep learning applications in facility management. Furthermore, it discusses the current challenges and foresees how deep learning applications can be useful in this field for researchers developing specific deep learning models for FMM. The paper also highlights how establishing public datasets relevant to FM for predictive maintenance is crucial for the effectiveness of deep learning techniques. The utilization of deep learning methods for predictive maintenance on Thermal-Storage Air-Conditioning (TS-AC) in HVAC is necessary for environmental sustainability, as well as to improve the cost-efficiency of buildings.
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spelling nottingham-805252025-09-04T12:23:13Z https://eprints.nottingham.ac.uk/80525/ Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning Sanzana, Mirza Rayana Maul, Tomas Wong, Jing Ying Abdulrazic, Mostafa Osama Mostafa Yip, Chun-Chieh Despite the promising results of deep learning research, construction industry applications are still limited. Facility Management (FM) in construction has yet to take full advantage of the efficiency of deep learning techniques in daily operations and maintenance. Heating, Ventilation, and Air Conditioning (HVAC) is a major part of Facility Management and Maintenance (FMM) operations, and an occasional HVAC malfunction can lead to a huge monetary loss. The application of deep learning techniques in FMM can optimize building performance, especially in predictive maintenance, by lowering energy consumption, scheduling maintenance, as well as monitoring equipment. This review covers 100 papers that show how neural networks have evolved in this area and summarizes deep learning applications in facility management. Furthermore, it discusses the current challenges and foresees how deep learning applications can be useful in this field for researchers developing specific deep learning models for FMM. The paper also highlights how establishing public datasets relevant to FM for predictive maintenance is crucial for the effectiveness of deep learning techniques. The utilization of deep learning methods for predictive maintenance on Thermal-Storage Air-Conditioning (TS-AC) in HVAC is necessary for environmental sustainability, as well as to improve the cost-efficiency of buildings. Elsevier Ltd 2022-06-23 Article PeerReviewed application/pdf en https://eprints.nottingham.ac.uk/80525/1/Application%20of%20deep%20learning%20in%20facility%20management%20and%20maintenance%20for%20heating%2C%20ventilation%2C%20and%20air%20conditioning-10.1016j.autcon.2022.104445.pdf Sanzana, Mirza Rayana, Maul, Tomas, Wong, Jing Ying, Abdulrazic, Mostafa Osama Mostafa and Yip, Chun-Chieh (2022) Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning. Automation in Construction, 141 . p. 104445. ISSN 0926-5805 deep learning (DL); facility management (FM) ; facility management and maintenance (FMM) ; heating ventilation and air conditioning (HVAC) ; deep neural networks https://doi.org/10.1016/j.autcon.2022.104445 10.1016/j.autcon.2022.104445 10.1016/j.autcon.2022.104445 10.1016/j.autcon.2022.104445
spellingShingle deep learning (DL); facility management (FM) ; facility management and maintenance (FMM) ; heating
ventilation
and air conditioning (HVAC) ; deep neural networks
Sanzana, Mirza Rayana
Maul, Tomas
Wong, Jing Ying
Abdulrazic, Mostafa Osama Mostafa
Yip, Chun-Chieh
Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning
title Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning
title_full Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning
title_fullStr Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning
title_full_unstemmed Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning
title_short Application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning
title_sort application of deep learning in facility management and maintenance for heating, ventilation, and air conditioning
topic deep learning (DL); facility management (FM) ; facility management and maintenance (FMM) ; heating
ventilation
and air conditioning (HVAC) ; deep neural networks
url https://eprints.nottingham.ac.uk/80525/
https://eprints.nottingham.ac.uk/80525/
https://eprints.nottingham.ac.uk/80525/