Personal Thermal Comfort models differ from the steady-state methods because they consider personal user feedback as target value. Today, the availability of integrated "smart" devices following the concept of the Internet of Things and Machine Learning (ML) techniques allows developing frameworks reaching optimized indoor thermal comfort conditions. The article investigates the potential of such approach through an experimental campaign in a test cell, involving 25 participants in a Real (R) and Virtual (VR) scenario, aiming at evaluating the effect of external stimuli on personal thermal perception, such as the variation of colours and images of the environment. A dataset with environmental parameters, biometric data and the perceived comfort feedbacks of the participants is defined and managed with ML algorithms in order to identify the most suitable one and the most influential variables that can be used to predict the Personal Thermal Comfort Perception (PTCP). The results identify the Extra Trees classifier as the best algorithm. In both R and VR scenario a different group of variables allows predicting PTCP with high accuracy.

A Machine Learning approach for personal thermal comfort perception evaluation: experimental campaign under real and virtual scenarios

Francesco Salamone
;
Alice Bellazzi;Lorenzo Belussi;Ludovico Danza;Matteo Ghellere;Italo Meroni;
2020

Abstract

Personal Thermal Comfort models differ from the steady-state methods because they consider personal user feedback as target value. Today, the availability of integrated "smart" devices following the concept of the Internet of Things and Machine Learning (ML) techniques allows developing frameworks reaching optimized indoor thermal comfort conditions. The article investigates the potential of such approach through an experimental campaign in a test cell, involving 25 participants in a Real (R) and Virtual (VR) scenario, aiming at evaluating the effect of external stimuli on personal thermal perception, such as the variation of colours and images of the environment. A dataset with environmental parameters, biometric data and the perceived comfort feedbacks of the participants is defined and managed with ML algorithms in order to identify the most suitable one and the most influential variables that can be used to predict the Personal Thermal Comfort Perception (PTCP). The results identify the Extra Trees classifier as the best algorithm. In both R and VR scenario a different group of variables allows predicting PTCP with high accuracy.
2020
Istituto per le Tecnologie della Costruzione - ITC
Inglese
75th National ATI Congress – #7 Clean Energy for all (ATI 2020)
75th National ATI Congress - #7 Clean Energy for all (ATI 2020)
197
10
https://www.e3s-conferences.org/articles/e3sconf/abs/2020/57/e3sconf_ati2020_04001/e3sconf_ati2020_04001.html
EDP Sciences
Les Ulis Cedex
FRANCIA
Sì, ma tipo non specificato
02/09/2020, 04/09/2020
Roma
indoor thermal comfort
perception
wearable
Internet of Things
Machine Learning
Virtual Reality
10
open
Salamone, Francesco; Bellazzi, Alice; Belussi, Lorenzo; Damato, Gianfranco; Danza, Ludovico; Dell'Aquila, Federico; Ghellere, Matteo; Megale, Valentin...espandi
273
info:eu-repo/semantics/conferenceObject
04 Contributo in convegno::04.01 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/401135
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