Publication Type

Conference Proceeding Article

Version

publishedVersion

Publication Date

11-2026

Abstract

Recent advances in personalized sensing and comfort feedback have spurred the development of data-driven comfort models tailored to individual needs. However, because current models treat sequential comfort feedback independently, they are subject to unstable predictions and limited interpretability, hindering their deployment in building management. This study introduces a dynamic modeling framework that utilizes a Neural Ordinary Differential Equations-based Continuous-time Markov Chain to model the transitions in comfort states over time. Our modeling approach, developed through a field study utilizing smart glasses and mobile app feedback, tracks occupants' comfort transitions across daily activities and contexts. The results demonstrate that this model not only predicts comfort states more accurately and stably than conventional classification models but also uniquely provides a representation of how the hazards of state transitions are influenced by changing ambient and contextual conditions. This approach, therefore, offers a new perspective on personalized building control, where predictions of comfort transition hazards can preemptively suggest building management interventions to avoid occupants experiencing discomfort. In addition, insights into how environmental and contextual characteristics relate to these hazards can guide holistic management strategies that dynamically balance comfort with energy targets in response to the occupants' activities and contexts.

Keywords

Indoor environment quality, Personalized comfort model, Wearable sensing, Continuous-time Markov Chain (CTMC), Neural Ordinary Differential Equations (Neural ODEs)

Discipline

Energy Policy | Engineering

Research Areas

Integrative Research Areas

Publication

BuildSys '24: Proceedings of the 11th ACM International Conference on Systems for Energy-Efficient Buildings, Cities, and Transportation, Hangzhou, China, November 7-8

First Page

209

Last Page

213

ISBN

979840070706324

Identifier

10.1145/3671127.3698188

Publisher

ACM

City or Country

New York

Additional URL

https://doi.org/10.1145/3671127.3698188

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