2023
DOI: 10.21014/actaimeko.v12i3.1570
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Wearable devices and Machine Learning algorithms to assess indoor thermal sensation: metrological analysis

Gloria Cosoli,
Silvia Angela Mansi,
Gian Marco Revel
et al.

Abstract: Personal comfort modeling is considered the most promising solution for indoor thermal comfort management in buildings. The use of wearable sensors is investigated for the real-time measurement of physiological signals to train comfort models for buildings monitoring and control. To achieve the required reliability, different uncertainty sources should be considered and weighted in the measurement results evaluation. This study presents an example of personal comfort model (PCM) development based on wearable s… Show more

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Cited by 2 publications
(2 citation statements)
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“…Personal comfort modelling is considered the most promising solution for indoor thermal comfort management in buildings. The use of wearable sensors is investigated in [7] for the real-time measurement of physiological signals to train comfort models for buildings monitoring and control. To achieve the required reliability, different uncertainty sources should be considered and weighted in the measurement results evaluation.…”
mentioning
confidence: 99%
See 1 more Smart Citation
“…Personal comfort modelling is considered the most promising solution for indoor thermal comfort management in buildings. The use of wearable sensors is investigated in [7] for the real-time measurement of physiological signals to train comfort models for buildings monitoring and control. To achieve the required reliability, different uncertainty sources should be considered and weighted in the measurement results evaluation.…”
mentioning
confidence: 99%
“…To achieve the required reliability, different uncertainty sources should be considered and weighted in the measurement results evaluation. The study presented in [7] is an example of personal comfort model (PCM) development based on wearable sensors (i.e., Empatica E4 smartband and MUSE headband) acquiring multimodal signals (i.e., photoplethysmographic -PPG, electrodermal activity -EDA, skin temperature -SKT, and electroencephalographic -EEG ones), together with a metrological characterisation of the modelling procedure. Starting from the data collected within an experimental campaign on 76 subjects, different Machine Learning (ML) algorithms were exploited to create comfort models capable of predicting the human thermal sensation (TS).…”
mentioning
confidence: 99%