Identifying the activity level is pivotal to take metabolic rate into account when assessing comfort in indoor environments. This work addresses two-fold aims. Firstly, the feasibility of employing multi-ultrasonic sensors on a multidomain monitoring platform for personalized comfort is investigated. Secondly, a data calibration and filtering methodology aimed at extracting features to detect office activities is proposed using temporal markers. A living environment for office use was considered and volunteer healthy subjects were monitored during 5 typical office activities. Results confirm the feasibility of integrating ultrasonic sensors in a monitoring platform to capture meaningful movement patterns to discern various office activities. In addition, results show that activity discrimination has an impact of 76% on the estimated Predictive Mean Vote (PMV) values. This information can be integrated in personal comfort models (PCMs) to optimize the occupants' well-being as well as thermoregulation of the built environment and, hence, the building energy consumption.
A Non-Intrusive Ultrasound-Based Sensing Technique for Activity Detection: Proof of Concept Towards Optimized Personalized Comfort / Ciuffreda, I.; Cosoli, G.; Revel, G. M.; Arnesano, M.; Casaccia, S.. - (2024), pp. 16-21. (Intervento presentato al convegno 2024 IEEE International Workshop on Metrology for Living Environment (MetroLivEnv) tenutosi a Chania, Greece nel 12-14 June 2024) [10.1109/MetroLivEnv60384.2024.10615476].
A Non-Intrusive Ultrasound-Based Sensing Technique for Activity Detection: Proof of Concept Towards Optimized Personalized Comfort
Ciuffreda I.;Cosoli G.;Revel G. M.;Casaccia S.
2024-01-01
Abstract
Identifying the activity level is pivotal to take metabolic rate into account when assessing comfort in indoor environments. This work addresses two-fold aims. Firstly, the feasibility of employing multi-ultrasonic sensors on a multidomain monitoring platform for personalized comfort is investigated. Secondly, a data calibration and filtering methodology aimed at extracting features to detect office activities is proposed using temporal markers. A living environment for office use was considered and volunteer healthy subjects were monitored during 5 typical office activities. Results confirm the feasibility of integrating ultrasonic sensors in a monitoring platform to capture meaningful movement patterns to discern various office activities. In addition, results show that activity discrimination has an impact of 76% on the estimated Predictive Mean Vote (PMV) values. This information can be integrated in personal comfort models (PCMs) to optimize the occupants' well-being as well as thermoregulation of the built environment and, hence, the building energy consumption.File | Dimensione | Formato | |
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