Multi-task Learning for Concurrent Prediction of Thermal Comfort, Sensation, and Preference
Betty Lala, Hamada Rizk, Srikant Manas Kala, Aya Hagishima

TL;DR
This paper introduces DeepComfort, a multi-task deep learning model that simultaneously predicts multiple thermal comfort metrics in classrooms, improving accuracy and consistency over traditional single-task models, and validated through extensive field data.
Contribution
The paper presents the first application of multi-task learning for thermal comfort prediction in classrooms, demonstrating superior performance over existing single-task models.
Findings
DeepComfort achieves over 90% accuracy on multiple metrics.
The model generalizes well across different datasets.
Multi-task approach reduces conflicting predictions in real-world settings.
Abstract
Indoor thermal comfort immensely impacts the health and performance of occupants. Therefore, researchers and engineers have proposed numerous computational models to estimate thermal comfort (TC). Given the impetus toward energy efficiency, the current focus is on data-driven TC prediction solutions that leverage state-of-the-art machine learning (ML) algorithms. However, an indoor occupant's perception of indoor thermal comfort (TC) is subjective and multi-dimensional. Different aspects of TC are represented by various standard metrics/scales viz., thermal sensation (TSV), thermal comfort (TCV), and thermal preference (TPV). The current ML-based TC prediction solutions adopt the Single-task Learning approach, i.e., one prediction model per metric. Consequently, solutions often focus on only one TC metric. Moreover, when several metrics are considered, multiple TC models for a single…
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Taxonomy
TopicsBuilding Energy and Comfort Optimization · Urban Heat Island Mitigation · Noise Effects and Management
