1. Data fusion in predicting internal heat gains for office buildings through a deep learning approach.
- Author
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Wang, Zhe, Hong, Tianzhen, and Piette, Mary Ann
- Subjects
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DEEP learning , *OFFICE buildings , *MULTISENSOR data fusion , *ARCHITECTURE & energy conservation , *HEAT , *BUILDING operation management , *SHORT-term memory - Abstract
• Internal heat gain prediction is important in energy efficient building operation. • Long Short-Term Memory (LSTM) Networks, was applied to predict building internal load. • Compared with ASHRAE fixed schedules, LSTMs could reduce prediction errors by 40%. • MELs was found to be the most important feature for internal heat gain prediction. • The findings facilitate accurate load prediction for building predictive control. Heating, Ventilation, and Air Conditioning (HVAC) is a major energy consumer in buildings. The predictive control has demonstrated a potential to reduce HVAC energy use. To facilitate predictive HVAC control, internal heat gains prediction is required. In this study, we applied Long Short-Term Memory Networks, a special form of deep neural network, to predict miscellaneous electric loads, lighting loads, occupant counts and internal heat gains in two United States office buildings. Compared with the predetermined schedules used in American Society of Heating, Refrigerating and Air-Conditioning Engineers (ASHRAE) standard 90.1, the Long Short-Term Memory Networks method could reduce the prediction errors of internal heat gains from 12% to 8% in Building A, and from 26% to 16% in Building B. It was also found that for internal heat gains prediction, miscellaneous electric loads is a more important feature than occupant counts for two reasons. First, miscellaneous electric loads is the best proxy variable for internal heat gains, as it is the major component of and has the highest correlation coefficient with the internal heat gains. Second, miscellaneous electric loads contain valuable information to predict occupant count, while occupant count could not help improve miscellaneous electric loads prediction. These findings could help researchers and practitioners select the most relevant features to more accurately predict internal heat gains for the implementation of predictive HVAC control in buildings. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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