Jiang Liangwei, Yang Hongyin, Liu Weijun, Ye Zhongtao, Pei Junwen, Liu Zhangjun, Fan Jianfeng
School of Civil Engineering and Architecture, Wuhan Institute of Technology, Wuhan 430073, China.
State Key Laboratory of Bridge Intelligent and Green Construction, Wuhan 430034, China.
Sensors (Basel). 2024 Jun 2;24(11):3587. doi: 10.3390/s24113587.
Bridge early warning based on structural health monitoring (SHM) system is of significant importance for ensuring bridge safe operation. The temperature-induced deflection (TID) is a sensitive indicator for performance degradation of continuous rigid frame bridges, but the time-lag effect makes it challenging to predict the TID accurately. A bridge early warning method based on nonlinear modeling for the TID is proposed in this article. Firstly, the SHM data of temperature and deflection of a continuous rigid frame bridge are analyzed to examine the temperature gradient variation patterns. Kernel principal component analysis (KPCA) is used to extract principal temperature components. Then, the TID is extracted through wavelet transform, and a nonlinear modeling method for the TID considering the temperature gradient is proposed using the support vector machine (SVM). Finally, the prediction errors of the KPCA-SVM algorithm are analyzed, and the early warning thresholds are determined based on the statistical patterns of the errors. The results show that the KPCA-SVM algorithm achieves high-precision nonlinear modeling for the TID while significantly reducing the computational load. The prediction results have coefficients of determination above 0.98 and fluctuate within a small range with clear statistical patterns. Setting the early warning thresholds based on the statistical patterns of errors enables dynamic and multi-level warnings for bridge structures.
基于结构健康监测(SHM)系统的桥梁预警对于确保桥梁安全运营具有重要意义。温度引起的挠度(TID)是连续刚构桥性能退化的敏感指标,但时间滞后效应使得准确预测TID具有挑战性。本文提出了一种基于TID非线性建模的桥梁预警方法。首先,对一座连续刚构桥的温度和挠度的SHM数据进行分析,以研究温度梯度变化模式。采用核主成分分析(KPCA)提取主要温度成分。然后,通过小波变换提取TID,并利用支持向量机(SVM)提出一种考虑温度梯度的TID非线性建模方法。最后,分析了KPCA-SVM算法的预测误差,并根据误差的统计模式确定预警阈值。结果表明,KPCA-SVM算法实现了对TID的高精度非线性建模,同时显著降低了计算量。预测结果的决定系数高于0.98,且在小范围内波动,具有明显的统计模式。基于误差的统计模式设置预警阈值能够对桥梁结构进行动态和多层次预警。