Correlation model of deflection, vehicle load, and temperature for in‐service bridge using deep learning and structural health monitoring

Yang Deng, Hanwen Ju, Wenqiang Zhai, A. Li, You-liang Ding
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引用次数: 5

Abstract

Deflection is an important issue in bridge structural health monitoring. An accurate deflection–vehicle load–temperature correlation model is critical to abnormal data identification, deflection prediction under extreme conditions, and bridge structural assessment. However, because of the discrete distribution in time domain of vehicle load and the extreme complexity of the deflection–vehicle load–temperature correlation, the correlation modeling method needs further studies. A novel deflection–vehicle load–temperature correlation modeling method is developed in this study. Based on the concept of deflection influence line (DIL), the raw vehicle load monitoring data are transformed into time‐continuous vehicle influence coefficient (VIC). By using gated recurrent unit (GRU) neural network, a correlation model with inputs of VIC and environmental temperature data and output of deflection data is established. Taking a suspension bridge in China as an example, the prediction accuracy of short‐, medium‐, and long‐term correlation models is tested. Moreover, based on the correlation model, a decomposition method of temperature‐ and vehicle‐induced deflection components is proposed. The results show that the predicted deflection of the short‐term correlation model is basically consistent with the real‐time monitoring data, while the medium‐ and long‐term correlation models have accurate prediction ability for the deflection extreme values in a certain time window. The temperature‐ and vehicle‐induced deflection components separated by using the correlation model are in good agreement with the wavelet decomposition (WD) results, with clear physical meaning and independent of empirical judgment.
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基于深度学习和结构健康监测的在役桥梁挠度、车辆荷载和温度相关模型
挠度是桥梁结构健康监测中的一个重要问题。准确的挠度-车辆荷载-温度关联模型对于异常数据识别、极端工况下挠度预测和桥梁结构评估至关重要。然而,由于车辆载荷在时域上的离散分布以及挠度-车辆载荷-温度相关性的极端复杂性,相关建模方法有待进一步研究。提出了一种新的挠度-车辆荷载-温度相关建模方法。基于偏转影响线(DIL)的概念,将原始车辆载荷监测数据转化为时间连续的车辆影响系数(VIC)。采用门控循环单元(GRU)神经网络,建立了VIC和环境温度数据输入与挠度数据输出的关联模型。以中国某悬索桥为例,对短期、中期和长期相关模型的预测精度进行了检验。此外,在相关模型的基础上,提出了温度和车辆引起的挠度分量的分解方法。结果表明,短期相关模型预测的挠度与实时监测数据基本一致,中长期相关模型对一定时间窗内的挠度极值有较好的预测能力。利用相关模型分离出的温度和车辆引起的偏转分量与小波分解(WD)结果吻合较好,具有明确的物理意义,不依赖于经验判断。
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