4.6 Article

Post-Earthquake Building Evaluation Using UAVs: A BIM-Based Digital Twin Framework

期刊

SENSORS
卷 22, 期 3, 页码 -

出版社

MDPI
DOI: 10.3390/s22030873

关键词

unmanned aerial vehicles; building information modeling; digital twin; computer vision; post-earthquake evaluation; automated inspection

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Computer vision has the potential to assist in post-earthquake inspection of buildings by automatically detecting damage in images. This paper proposes a digital twin framework that integrates UAV imagery, component identification, and damage evaluation using a BIM for post-earthquake building evaluation. The framework combines component-wise damage estimates with pre-earthquake structural analysis to predict a building's post-earthquake safety.
Computer vision has shown potential for assisting post-earthquake inspection of buildings through automatic damage detection in images. However, assessing the safety of an earthquake-damaged building requires considering this damage in the context of its global impact on the structural system. Thus, an inspection must consider the expected damage progression of the associated component and the component's contribution to structural system performance. To address this issue, a digital twin framework is proposed for post-earthquake building evaluation that integrates unmanned aerial vehicle (UAV) imagery, component identification, and damage evaluation using a Building Information Model (BIM) as a reference platform. The BIM guides selection of optimal sets of images for each building component. Then, if damage is identified, each image pixel is assigned to a specific BIM component, using a GrabCut-based segmentation method. In addition, 3D point cloud change detection is employed to identify nonstructural damage and associate that damage with specific BIM components. Two example applications are presented. The first develops a digital twin for an existing reinforced concrete moment frame building and demonstrates BIM-guided image selection and component identification. The second uses a synthetic graphics environment to demonstrate 3D point cloud change detection for identifying damaged nonstructural masonry walls. In both examples, observed damage is tied to BIM components, enabling damage to be considered in the context of each component's known design and expected earthquake performance. The goal of this framework is to combine component-wise damage estimates with a pre-earthquake structural analysis of the building to predict a building's post-earthquake safety based on an external UAV survey.

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