4.7 Article

Multi-occupant dynamic thermal comfort monitoring robot system

期刊

BUILDING AND ENVIRONMENT
卷 234, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.buildenv.2023.110137

关键词

Dynamic thermal comfort estimation; Robot system; Multi-occupant recognition; Real-time localization and mapping; Intelligent building

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Nowadays, the focus of research has shifted to occupant thermal comfort due to the increasing time spent indoors and its potential impact on productivity. Efforts have been made to develop thermal comfort monitoring systems for building environments. Fixed sensors may not be efficient in non-uniform environments, which is why mobile robots have been introduced for occupant thermal monitoring. However, there are still challenges in multi-view extraction and fusion of human features, dynamic recognition and real-time estimation for multiple occupants, and multi-occupant localization. To address these gaps, a novel mobile robot based thermal comfort monitoring system is proposed, which collects occupant thermal information from RGB-D and thermal images, locates occupants, and estimates their thermal comfort in real time. An autonomous robot is designed to automatically recognize occupants, their appearance, clothing, and body temperature from collected images. A machine learning method is trained to estimate each occupant's thermal comfort. Additionally, the robot can re-identify the occupant in different views, mark their positions, and track their trajectory on a real-time map. An experiment was conducted on 20 occupants in 80 hours in an office building, and the results showed that the system can estimate occupant thermal comfort in real time with a high ROC-AUC score of 0.84.
Nowadays occupant thermal comfort has been a research focus for people's increasing indoor time and its potential influence on productivity. Efforts have been paid to develop thermal comfort monitoring systems for building environments. Fixed sensors might be less efficient for non-uniform environment distribution. To solve this problem, mobile robots are introduced for occupant thermal monitoring. However, there are still some challenges for thermal comfort monitoring systems, which include multi-view extraction and fusion of human features, dynamic recognition and real-time estimation for multiple occupants, and multi-occupant localization. To fulfill these research gaps, we propose a novel mobile robot based thermal comfort monitoring system, which collects occupant thermal information from RGB-D and thermal images, locates occupants and estimates their thermal comfort in real time. An autonomous robot is designed to automatically recognize occupants, their appearance, wearing cloth, and body temperature from collected images. A machine learning method is trained to estimate each occupant's thermal comfort. Moreover, the robot can re-identify the occupant in different views, mark their positions and track their trajectory in a real-time map. We conducted an experiment on 20 occupants in 80 h in an office building, and the results showed that our system can estimate the occupant's thermal comfort in real time with a high ROC-AUC score of 0.84.

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