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Automated Simulation Framework for Urban Wind Environments Based on Aerial Point Clouds and Deep Learning

Chujin Sun, Fan Zhang, Pengju Zhao, Xinyi Zhao, Yuli Huang, Xinzheng Lu

2021Remote Sensing26 citationsDOIOpen Access PDF

Abstract

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 advantages of the framework are demonstrated through a case study of a local area in Shenzhen, China.

Topics & Concepts

Point cloudComputer scienceDeep learningComputational fluid dynamicsPreprocessorSegmentationArtificial intelligenceSimulationAerospace engineeringEngineeringWind and Air Flow StudiesRemote Sensing and LiDAR Applications3D Surveying and Cultural Heritage
Automated Simulation Framework for Urban Wind Environments Based on Aerial Point Clouds and Deep Learning | Litcius