基于监测响应和交通视频的连续梁桥有限元模型修正方法

Lanxin Luo, Ye Xia, Ao Wang, Xiaoming Lei, Xudong Jian, Limin Sun
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引用次数: 4

摘要

准确的有限元模型在运行桥梁的健康监测中起着至关重要的作用。在传统的有限元模型更新(FEMU)方法中,车辆引起的静力结构挠度通常是从现场试验中获得的,这中断了交通并限制了试验加载场景。本研究提出了一种FEMU方法,直接应用运行阶段的海量多源结构和交通数据对有限元模型进行更新,有效地解决了上述缺陷。采用基于计算机视觉的车辆载荷识别技术对车辆载荷进行精确定位和称重,并基于识别的车辆载荷在有限元模型中进行静态仿真。利用结构动力特性和车辆引起的结构静力响应等指标建立了FEMU目标函数。目标函数中的静态误差指标综合了理论静态响应和实测静态响应的曲线形状和极值差。最后,采用并行粒子群优化(PSO)算法寻找全局最优的更新有限元模型。采用连续比例尺桥梁模型进行了四种典型桥型的试验研究。与初始有限元模型相比,更新后的有限元模型在所有场景下的动态和静态结果都有明显改善,静态误差指标平均降低75%。该方法为实时FEMU监测数据的部署提供了一种实用的方法,它考虑了动态和静态特征,为损伤检测、性能评估和管理提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finite element model updating method for continuous girder bridges using monitoring responses and traffic videos
Accurate finite element (FE) models play an essential role in the health monitoring of operational bridges. Static structural deflections caused by vehicles, which are used in traditional finite element model updating (FEMU) methods, are often procured from field tests, interrupting the traffic and limiting the test loading scenarios. This study proposes a FEMU method that directly applies the massive, multi‐source structural and traffic data in the operation phase to update the FE model, effectively solving the defects above. We use the computer vision‐based vehicle load identification technique to accurately locate and weigh vehicle loads and carry out static simulations in the FE model based on the identified vehicle loads. The proposed FEMU objective function is established using indices including dynamic structural characteristics and vehicle‐induced static structural responses. The static error index in the objective function integrates the curve shape and extrema difference of theoretic and measured static responses. Finally, we deploy a parallel particle swarm optimization (PSO) algorithm to find the global optimal updated FE model. A continuous scale bridge model is employed in the experimental studies with four typical scenarios. Compared to the results from the initial FE model, the updated FE model provides significantly better results both in dynamic and static aspects in all scenarios, and the static error indexes reduce by 75% on average. The proposed method offers a practical approach to deploying the monitoring data for real‐time FEMU, which considers dynamic and static features and provides a basis for damage detection, performance assessment, and management.
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