钢桁架桥梁连续监测数据归一化:以意大利铁路线为例

Antonio Argentino, Luca Radicioni, Francesco Morgan Bono, Lorenzo Bernardini, Lorenzo Benedetti, Gabriele Cazzulani, Claudio Somaschini, Marco Belloli
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引用次数: 0

摘要

结构健康监测被认为是辅助桥梁管理的有力工具。持续的长期监测桥梁结构提出了几个挑战,包括需要有效的系统设计,强大的传感器部署,高效的数据管理以及全面的数据分析和解释。在运行模态分析领域,电桥频率随时间的自动跟踪已被证明受温度波动的显著影响。在低频采样信号中也观察到这种效应。为了解决这些问题,作者提出了一种双步骤方法来有效地减轻温度对估计模态参数和来自位移、应变和旋转传感器的原始信号的影响。该过程基于多元线性回归,将测量温度作为输入,然后通过移动平均对残差进行低通滤波操作,从而创建最小可检测异常曲线。后者允许在特定置信水平上建立过滤窗口长度和可检测损害阈值之间的定量关系。该案例研究涉及一座铁路钢桁架桥,通过一个永久性监测系统收集了一年多的数据。监测布局包括各种传感器,用于测量结构响应,以及环境和操作变量。一个15个月的数据集展示了温度补偿如何有效地降低信号变异性,这对于增强早期异常检测至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data normalization for the continuous monitoring of a steel truss bridge: A case study from the Italian railway line
Structural health monitoring is recognized as a powerful tool to assist bridge management. Continuous long-term monitoring of bridge structures presents several challenges, including the need for effective system design, robust sensors deployment, efficient data management, and comprehensive data analysis and interpretation. In the field of operational modal analysis, automatic tracking of bridge frequencies over time has been shown to be significantly influenced by temperature fluctuations. This effect is also observed in low-frequency sampled signals. To address these issues, the authors present a double-step procedure to effectively mitigate the influence of temperature on the estimated modal parameters and raw signals from displacement, strain and rotation transducers. The procedure is based on multiple linear regression, taking the measured temperatures as inputs, followed by low-pass filtering operations applied to the residuals through moving averages, leading to the creation of minimum detectable anomaly curves. The latter allow to establish quantitative relationships between filtering window lengths and detectable damage thresholds at specified confidence levels. The case study involves a railway steel truss bridge, where more than a year of data was collected through a permanent monitoring system. The monitoring layout includes a variety of sensors deployed to measure the structural response, as well as environmental and operational variables. A 15-month dataset demonstrates how temperature compensation effectively reduces signal variability, which is crucial for enhancing early-stage anomalies detection.
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