Enhancing personalised thermal comfort models with Active Learning for improved HVAC controls
Zeynep Duygu Tekler, Yue Lei, Xilei Dai, Adrian Chong

TL;DR
This paper introduces an Active Learning-based framework for personalised thermal comfort models that reduces occupant data collection effort while maintaining high satisfaction and energy efficiency in building HVAC systems.
Contribution
It proposes a novel Active Learning approach to efficiently gather occupant preferences, improving personalised HVAC control models with less intrusive data collection.
Findings
31.0% reduction in data labelling effort
1.3% increase in energy savings
Thermal satisfaction above 98%
Abstract
Developing personalised thermal comfort models to inform occupant-centric controls (OCC) in buildings requires collecting large amounts of real-time occupant preference data. This process can be highly intrusive and labour-intensive for large-scale implementations, limiting the practicality of real-world OCC implementations. To address this issue, this study proposes a thermal preference-based HVAC control framework enhanced with Active Learning (AL) to address the data challenges related to real-world implementations of such OCC systems. The proposed AL approach proactively identifies the most informative thermal conditions for human annotation and iteratively updates a supervised thermal comfort model. The resulting model is subsequently used to predict the occupants' thermal preferences under different thermal conditions, which are integrated into the building's HVAC controls. The…
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Taxonomy
TopicsBuilding Energy and Comfort Optimization
