Carbon Emissions of Campus Buildings Based on Machine Learning
ID:364 View Protection:ATTENDEE Updated Time:2022-05-13 17:14:17 Hits:648 Invited speech

Start Time:2022-05-26 17:30 (Asia/Shanghai)

Duration:20min

Session:[S11] Green and low-carbon technology for urban and rural construction » [S11-1] Green and low-carbon technology for urban and rural construction-1

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Abstract
ABSTRACT: The direct and indirect carbon emissions from the building sector are about 9 GT in 2020 based on the IEA data. The buildings are still off track for carbon neutrality by 2050. Hence, it is important to explore the carbon performance of buildings. The machine learning technique can provide fast and reliable energy analysis of buildings. This research applies the four types of machine learning models (full linear model, multivariate adaptive regression spline, support vector machine, and gradient boosting machine) to create the surrogate building energy models in the campus buildings of Tianjin, China. Then the sensitivity analysis based on these learning models is used to determine the key factors affecting building carbon emissions. The multivariate adaptive regression spline model performs the best in estimating carbon emissions of buildings with the R2 (coefficient of determination) above 0.99. The equipment heat gains are responsible for over 40% variations of carbon emissions in most of the campus buildings. The following three important variables are heating set-point during unoccupied periods, lighting heat gains, and infiltration rate. These four variables should be carefully checked to reduce the carbon emissions of campus buildings studied in this research.
 
Keywords
carbon emissions, machine learning, building energy, campus building
Speaker
Wei TIAN
Tianjin University of Science and Technology

Dr. Wei Tian is a professor at the University of Tianjin Science and Technology, China. His major research interests are building performance simulation and green building design at both individual and urban scales using machine learning, uncertainty analysis, sensitivity analysis, and Bayesian computation. He is a committee member of China Building Performance Simulation Association (IBPSA-CHINA). He also serves as an editorial board member of the Journal of Building Performance Simulation (IBPSA official journal). He has published over 150 peer-reviewed journal & conference papers. He has conducted several national and international research projects on energy efficiency analysis for high-performance buildings, including the National Natural Science Foundation of China and the key research projects of the Department of Education (China).

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