A graphics-based digital twin framework for computer vision-based post-earthquake structural inspection and evaluation using unmanned aerial vehicles

Shuo Wang , Casey Rodgers , Guanghao Zhai , Thomas Ngare Matiki , Brian Welsh , Amirali Najafi , Jingjing Wang , Yasutaka Narazaki , Vedhus Hoskere , Billie F. Spencer Jr.
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引用次数: 9

Abstract

Rapid structural inspections and evaluations are critical after earthquakes. Computer vision-based methods have attracted the interest of researchers for their potential to be rapid, safe, and objective. To provide an end-to-end solution for computer vision-based post-earthquake inspection and evaluation of a specific as-built structure, the concepts of physics-based graphics model (PBGM) and digital twin (DT) are combined to develop a graphics-based digital twin (GBDT) framework. The GBDT framework comprises a finite element (FE) model and a computer graphics (CG) model whose state is informed by the FE analysis, representing the state of the structure before and after an earthquake. The CG model is first created making use of the FE model and the photographic survey of the structure, yielding the virtual counterpart of the as-built structure quickly and accurately. Then damage modelling approaches are proposed to predict the location and extent of structural and nonstructural damage under seismic loading, from which photographic representation of the predicted damage is realized in the CG model. The effectiveness of the GBDT framework is demonstrated using a five-story reinforced concrete benchmark building through the design and assessment of various UAV (Unmanned Aerial Vehicle) inspection trajectories for post-earthquake scenarios. The results demonstrate that the proposed GBDT framework has significant potential to enable rapid structural inspection and evaluation, ultimately leading to more efficient allocation of scarce resources in a post-earthquake setting.

基于图形的基于计算机视觉的无人机地震后结构检测与评估数字孪生框架
地震后,快速的结构检查和评估是至关重要的。基于计算机视觉的方法因其快速、安全、客观的潜力而引起了研究人员的兴趣。为了提供基于计算机视觉的地震后检测和评估特定竣工结构的端到端解决方案,将基于物理的图形模型(PBGM)和数字孪生(DT)的概念结合起来,开发了基于图形的数字孪生(GBDT)框架。GBDT框架包括一个有限元(FE)模型和一个计算机图形(CG)模型,其状态由有限元分析告知,代表了地震前后结构的状态。首先利用有限元模型和结构的摄影测量创建CG模型,快速准确地生成实际结构的虚拟对应物。在此基础上,提出了预测地震作用下结构和非结构损伤的位置和程度的损伤建模方法,并在CG模型中实现了预测损伤的图像表示。通过设计和评估震后场景中各种无人机(UAV)检测轨迹,使用五层钢筋混凝土基准建筑验证了GBDT框架的有效性。结果表明,提出的GBDT框架具有实现快速结构检查和评估的巨大潜力,最终导致在地震后环境中更有效地分配稀缺资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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