Times Series Forecasting for Urban Building Energy Consumption Based on Graph Convolutional Network
Yuqing Hu, Xiaoyuan Cheng, Suhang Wang, Jianli Chen, Tianxiang Zhao,, Enyan Dai

TL;DR
This paper introduces a novel spatial-temporal graph convolutional network model for urban building energy consumption forecasting, effectively capturing inter-building dependencies and outperforming traditional time-series models.
Contribution
The study develops a new data-driven urban building energy model that integrates physical knowledge and inter-building dependencies using ST-GCN, enhancing accuracy over existing models.
Findings
ST-GCN outperforms other time-series models in energy prediction.
Physical knowledge embedded in the model improves interpretability.
Inter-building dependencies significantly impact energy consumption modeling.
Abstract
The world is increasingly urbanizing and the building industry accounts for more than 40% of energy consumption in the United States. To improve urban sustainability, many cities adopt ambitious energy-saving strategies through retrofitting existing buildings and constructing new communities. In this situation, an accurate urban building energy model (UBEM) is the foundation to support the design of energy-efficient communities. However, current UBEM are limited in their abilities to capture the inter-building interdependency due to their dynamic and non-linear characteristics. Those models either ignored or oversimplified these building interdependencies, which can substantially affect the accuracy of urban energy modeling. To fill the research gap, this study proposes a novel data-driven UBEM synthesizing the solar-based building interdependency and spatial-temporal graph…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Traffic Prediction and Management Techniques · Building Energy and Comfort Optimization
