4.5 Article

Physiological sensing-driven personal thermal comfort modelling in consideration of human activity variations

Journal

BUILDING RESEARCH AND INFORMATION
Volume 49, Issue 5, Pages 512-524

Publisher

ROUTLEDGE JOURNALS, TAYLOR & FRANCIS LTD
DOI: 10.1080/09613218.2020.1840328

Keywords

Information and communication technologies (ICT); thermal comfort; data collection; buildings

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This study investigates the impact of metabolic rate on thermal comfort models by introducing a robust data-driven personalized model that takes into account variations in human activity. Wearable sensors and machine learning algorithms were used to monitor and analyze individual physiological signals, activity-based metabolic rates, and environmental factors. Field experiments in a US campus building showed that predictive models considering metabolic rate resulted in a performance improvement of up to 8.5%, suggesting that activity-based metabolic rates offer a better understanding of personal thermal comfort.
As one of the representative parameters for human energy metabolism, the metabolic rate has been considered as the significant factor for occupants' thermal comfort analyses. Despite the importance of metabolic rate as a predictor of thermal comfort modelling, prior works rely on uncertain metabolic rate estimation without considering actual activity variations while occupying a building. This study aims at identifying the effect of metabolic rate on the thermal comfort models by proposing a robust data-driven personalized model in consideration of human activity variations. To investigate heterogeneous thermal state of occupants, wearable sensors and machine learning algorithms were used to continuously monitor and analyse individual physiological signals, activity-based metabolic rates and environmental indices. Field experiments were conducted with 10 subjects in a campus building in the US, and the results showed that predictive models considering metabolic rate yield advanced performance of up to 8.5%, implying that activity-based metabolic rates provide better understanding of personal thermal comfort. This paper quantitatively validates the effectiveness of reflecting metabolic rate based on human activity variations into personal thermal comfort modelling, which provides an insight into how to better model personal thermal comfort of occupants in real-life settings.

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