Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Transfer learning for thermal comfort prediction in multiple cities
Abstract The HVAC (Heating, Ventilation and Air Conditioning) system is an important part of a building, which constitutes up to 40% of building energy usage. The main purpose of HVAC, maintaining appropriate thermal comfort, is crucial for the best energy usage. Additionally, thermal comfort is also important for well-being, health, and work productivity. Recently, data-driven thermal comfort models have achieved better performance than traditional knowledge-based methods (e.g. the predicted mean vote model). An accurate thermal comfort model requires a large amount of self-reported thermal comfort data from indoor occupants which undoubtedly remains a challenge for researchers. In this research, we aim to address this data-shortage problem and boost the performance of thermal comfort prediction. We utilize sensor data from multiple cities in the same climate zone to learn thermal comfort patterns. We present a transfer learning-based multilayer perceptron model from the same climate zone (TL-MLP-C*) for accurate thermal comfort prediction. Extensive experimental results on the ASHRAE RP-884, Scales Project and Medium US Office datasets show that the performance of the proposed TL-MLP-C* exceeds the performance of state-of-the-art methods in accuracy and F1-score.
Highlights Data from multiple cities can benefit thermal comfort modelling in a target building. The proposed transfer learning models can tackle the data-shortage problem. The performance of thermal comfort prediction can be improved with transfer learning.
Transfer learning for thermal comfort prediction in multiple cities
Abstract The HVAC (Heating, Ventilation and Air Conditioning) system is an important part of a building, which constitutes up to 40% of building energy usage. The main purpose of HVAC, maintaining appropriate thermal comfort, is crucial for the best energy usage. Additionally, thermal comfort is also important for well-being, health, and work productivity. Recently, data-driven thermal comfort models have achieved better performance than traditional knowledge-based methods (e.g. the predicted mean vote model). An accurate thermal comfort model requires a large amount of self-reported thermal comfort data from indoor occupants which undoubtedly remains a challenge for researchers. In this research, we aim to address this data-shortage problem and boost the performance of thermal comfort prediction. We utilize sensor data from multiple cities in the same climate zone to learn thermal comfort patterns. We present a transfer learning-based multilayer perceptron model from the same climate zone (TL-MLP-C*) for accurate thermal comfort prediction. Extensive experimental results on the ASHRAE RP-884, Scales Project and Medium US Office datasets show that the performance of the proposed TL-MLP-C* exceeds the performance of state-of-the-art methods in accuracy and F1-score.
Highlights Data from multiple cities can benefit thermal comfort modelling in a target building. The proposed transfer learning models can tackle the data-shortage problem. The performance of thermal comfort prediction can be improved with transfer learning.
Transfer learning for thermal comfort prediction in multiple cities
Gao, Nan (Autor:in) / Shao, Wei (Autor:in) / Rahaman, Mohammad Saiedur (Autor:in) / Zhai, Jun (Autor:in) / David, Klaus (Autor:in) / Salim, Flora D. (Autor:in)
Building and Environment ; 195
15.02.2021
Aufsatz (Zeitschrift)
Elektronische Ressource
Englisch
Transfer learning for thermal comfort prediction in multiple cities
Elsevier | 2021
|Transfer learning with unsupervised domain adaptation for personal thermal comfort prediction
Elsevier | 2025
|Thermal Comfort in Japanese Cities in Summer
British Library Conference Proceedings | 1993
|