作者
Sorena Vosoughkhosravi, Seddigheh Norouziasl, Amirhosein Jafari
发表日期
2023/7/10
研讨会论文
EC3 Conference 2023
卷号
4
页码范围
0-0
出版商
European Council on Computing in Construction
简介
Lighting is responsible for 17% of the total electricity consumption in commercial buildings in the United States. Investigating and better understanding the lighting energy load provides the potential for more energy-saving in commercial buildings. This study proposes a framework to predict the lighting schedule and load in office buildings by integrating an agent-based model into an artificial neural network model. A small office building is used as a case study. The results illustrated that the accuracy of the prediction model could be as high as 92.8%.
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