Thermal comfort is essential for well-being in urban spaces, especially as cities face increasing heat from urbanization and climate change. Existing thermal comfort models usually overlook temporal dynamics alongside spatial dependen cies. We address this problem by introducing a spatio-temporal jump model that clusters data with persistence across both spatial and temporal dimensions. This framework enhances interpretability, minimizes abrupt state changes, and easily handles missing data. We validate our approach through extensive simulations, demonstrating its accuracy in recovering the true underlying partition. When applied to hourly environmental data gathered from a set of weather stations located across the city of Singapore, our proposal identifies meaningful thermal comfort regimes, demonstrating its effectiveness in dynamic urban settings and suitability for real-world monitoring. Our model accurately predicts thermal preference feedback, demonstrating the potential of an unsupervised approach to reliably capture users comfort without the need for extensive surveys.

Spatio-temporal jump model for urban thermal comfort monitoring / F. Cortese, A. Pievatolo. - In: STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT. - ISSN 1436-3240. - 40:5(2026 Apr 10), pp. 94.1-94.16. [10.1007/s00477-026-03221-2]

Spatio-temporal jump model for urban thermal comfort monitoring

F. Cortese
Primo
;
2026

Abstract

Thermal comfort is essential for well-being in urban spaces, especially as cities face increasing heat from urbanization and climate change. Existing thermal comfort models usually overlook temporal dynamics alongside spatial dependen cies. We address this problem by introducing a spatio-temporal jump model that clusters data with persistence across both spatial and temporal dimensions. This framework enhances interpretability, minimizes abrupt state changes, and easily handles missing data. We validate our approach through extensive simulations, demonstrating its accuracy in recovering the true underlying partition. When applied to hourly environmental data gathered from a set of weather stations located across the city of Singapore, our proposal identifies meaningful thermal comfort regimes, demonstrating its effectiveness in dynamic urban settings and suitability for real-world monitoring. Our model accurately predicts thermal preference feedback, demonstrating the potential of an unsupervised approach to reliably capture users comfort without the need for extensive surveys.
Clustering; Missing data; Mixed-type data; Regime-switching models; Thermal comfort
Settore STAT-01/A - Statistica
10-apr-2026
Article (author)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1235196
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