Computational fluid dynamics (CFD) simulation is a core component of wind engineering assessment for urban planning and architecture. CFD simulations require clean and low-complexity models. Existing modeling methods rely on static data from geographic information systems along with manual efforts. They are extraordinarily time-consuming and have difficulties accurately incorporating the up-to-date information of a target area into the flow model. This paper proposes an automated simulation framework with superior modeling efficiency and accuracy. The framework adopts aerial point clouds and an integrated two-dimensional and three-dimensional (3D) deep learning technique, with four operational modules: data acquisition and preprocessing, point cloud segmentation based on deep learning, geometric 3D reconstruction, and CFD simulation. The ad-vantages of the framework are demonstrated through a case study of a local area in Shenzhen, China.
CITATION STYLE
Sun, C., Zhang, F., Zhao, P., Zhao, X., Huang, Y., & Lu, X. (2021). Automated simulation framework for urban wind environments based on aerial point clouds and deep learning. Remote Sensing, 13(12). https://doi.org/10.3390/rs13122383
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