Urban wind field prediction based on sparse sensors and physics‐informed graph‐assisted auto‐encoder

Author:

Gao Huanxiang1,Hu Gang123,Zhang Dongqin1,Jiang Wenjun1,Tse K. T.4,Kwok K. C. S.5,Kareem Ahsan6

Affiliation:

1. Artificial Intelligence for Wind Engineering (AIWE) Lab, School of Civil and Environmental Engineering Harbin Institute of Technology Shenzhen China

2. Guangdong Provincial Key Laboratory of Intelligent and Resilient Structures for Civil Engineering Harbin Institute of Technology Shenzhen China

3. Guangdong‐Hong Kong‐Macao Joint Laboratory for Data‐Driven Fluid Mechanics and Engineering Applications Harbin Institute of Technology Shenzhen China

4. Department of Civil and Environmental Engineering The Hong Kong University of Science and Technology, Clear Water Bay, Kowloon Hong Kong China

5. Centre for Wind, Waves and Water School of Civil Engineering The University of Sydney Sydney New South Wales Australia

6. NatHaz Modeling Laboratory University of Notre Dame Notre Dame Indiana USA

Abstract

AbstractThe urban flow wind field is a critical element for downstream research, such as mitigation of urban wind disasters, assessment of urban wind environment, and urban drone route planning. However, it is impractical to arrange a large number of sensors to monitor an urban wind flow field. Hence, acquiring the entire urban wind flow field via sparse sensors would be highly valuable. To date, no scheme including deep learning (DL) model has been specifically designed for this purpose. This study presents an innovative approach to reconstruct complex high‐resolution urban wind fields based on sparse sensors, using a physics‐informed graph neural network (GNN)‐assisted auto‐encoder. The proposed method leverages the relationship between sensors and their surrounding environment enabled by deep mining capabilities of GNNs. As a result, the utilization and emphasis on sparse sensors data are significantly enhanced. The continuity equation of fluid flow is incorporated into the loss function of the convolution neural network to improve the stability and performance of the model. The findings suggest that, in contrast to prevalent generative DL models, the proposed model yields an approximate 50% reduction in root mean square error for reconstructing high‐resolution urban wind fields for multiple wind attack angles.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Computational Theory and Mathematics,Computer Graphics and Computer-Aided Design,Computer Science Applications,Civil and Structural Engineering,Building and Construction

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