Author
Listed:
- Sun, Maoran
- Han, Changyu
- Nie, Quan
- Xu, Jingying
- Zhang, Fan
- Zhao, Qunshan
Abstract
With buildings consuming nearly 40% of energy in developed countries, it is important to accurately estimate and understand the building energy efficiency in a city. In this research, we propose a deep learning-based multi-source data fusion framework to estimate building energy efficiency. We consider the traditional factors associated with the building energy efficiency from the energy performance certificate for 160,000 properties (30,000 buildings) in Glasgow, UK (e.g., property structural attributes and morphological attributes), as well as the Google Street View (GSV) building façade images as a complement. We compare the performance improvements between our data-fusion framework with traditional morphological attributes and image-only models. The results show that including the building façade images from GSV, the overall model accuracy increases from 79.7% to 86.8%. A further investigation and explanation of the deep learning model are conducted to understand the relationships between building features and building energy efficiency by using Shapley Additive explanations (SHAP). Our research demonstrates the potential of using multi-source data in building energy efficiency prediction to help understand building energy efficiency at the city level to help achieve the net-zero target by 2050.
Suggested Citation
Sun, Maoran & Han, Changyu & Nie, Quan & Xu, Jingying & Zhang, Fan & Zhao, Qunshan, 2022.
"Understanding Building Energy Efficiency with Administrative and Emerging Urban Big Data by Deep Learning in Glasgow,"
OSF Preprints
g8p4f_v1, Center for Open Science.
Handle:
RePEc:osf:osfxxx:g8p4f_v1
DOI: 10.31219/osf.io/g8p4f_v1
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