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A hybrid active learning framework for personal thermal comfort models
Abstract Personal thermal comfort models are used to predict individual-level thermal comfort responses to inform design and control decisions of buildings to achieve optimal conditioning for improved comfort and energy efficiency. However, the development of data-driven thermal comfort models requires collecting a large amount of sensor-related measurements and user-labelled data (i.e., user feedback) to achieve accurate predictions, which can be highly intrusive and labour intensive in real-world applications. In this work, we propose a hybrid active learning framework to reduce data collection costs for developing data-efficient and robust personal comfort models that predict users’ thermal comfort and air movement preferences. Through the proposed framework, we evaluated the performance of two active learning algorithms (i.e., Uncertainty Sampling and Query-by-Committee) and two labelling strategies (Independent and Joint Labelling strategies) to achieve the optimal reduction in user labelling effort for personal comfort modelling. The effectiveness of the proposed framework was demonstrated on a real-world thermal comfort dataset involving 58 participants collected over 10 working days with 2,727 responses under 16 thermal conditions. The final results showed a 46% and 35% reduction in labelling effort for the thermal comfort and air movement preference models, respectively, with increasing reductions occurring over time and when encountering new users. Through the insights gained in this study, future studies on data-driven thermal comfort models can adopt active learning as a viable and effective solution to address the high cost of data collection while maintaining the model’s scalability and predictive performance.
Graphical abstract Display Omitted
Highlights A hybrid active learning (AL) framework was proposed for personal comfort models. Different active learning algorithms and labelling strategies were evaluated. A real-world dataset was used to demonstrate the feasibility of the framework. The reduction in labelling effort over time and across new users were analysed. The application of AL resulted in a reduction in user labelling effort of up to 46%.
A hybrid active learning framework for personal thermal comfort models
Abstract Personal thermal comfort models are used to predict individual-level thermal comfort responses to inform design and control decisions of buildings to achieve optimal conditioning for improved comfort and energy efficiency. However, the development of data-driven thermal comfort models requires collecting a large amount of sensor-related measurements and user-labelled data (i.e., user feedback) to achieve accurate predictions, which can be highly intrusive and labour intensive in real-world applications. In this work, we propose a hybrid active learning framework to reduce data collection costs for developing data-efficient and robust personal comfort models that predict users’ thermal comfort and air movement preferences. Through the proposed framework, we evaluated the performance of two active learning algorithms (i.e., Uncertainty Sampling and Query-by-Committee) and two labelling strategies (Independent and Joint Labelling strategies) to achieve the optimal reduction in user labelling effort for personal comfort modelling. The effectiveness of the proposed framework was demonstrated on a real-world thermal comfort dataset involving 58 participants collected over 10 working days with 2,727 responses under 16 thermal conditions. The final results showed a 46% and 35% reduction in labelling effort for the thermal comfort and air movement preference models, respectively, with increasing reductions occurring over time and when encountering new users. Through the insights gained in this study, future studies on data-driven thermal comfort models can adopt active learning as a viable and effective solution to address the high cost of data collection while maintaining the model’s scalability and predictive performance.
Graphical abstract Display Omitted
Highlights A hybrid active learning (AL) framework was proposed for personal comfort models. Different active learning algorithms and labelling strategies were evaluated. A real-world dataset was used to demonstrate the feasibility of the framework. The reduction in labelling effort over time and across new users were analysed. The application of AL resulted in a reduction in user labelling effort of up to 46%.
A hybrid active learning framework for personal thermal comfort models
Tekler, Zeynep Duygu (author) / Lei, Yue (author) / Peng, Yuzhen (author) / Miller, Clayton (author) / Chong, Adrian (author)
Building and Environment ; 234
2023-02-21
Article (Journal)
Electronic Resource
English
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