利用激光位移传感器和无线加速度计高效监测桥梁钢支座的健康状况

H. Waqas, Mehran Sahil, Abdullah Riaz, Shiraz Ahmed, Muhammad Waseem, Hermann Seitz
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引用次数: 0

摘要

在许多桥梁中,钢支座通常用于抵消热和交通条件下的诱导荷载。然而,由于老化和维护方面的限制,钢支座的有效性已经大打折扣,可能会影响桥梁系统的整体性能。现有的检测钢支座故障的监测技术缺乏自动化和精确性,因此无法进行长期和实时的桥梁动态评估。本研究提出了一种基于响应的方法,通过分析轴承附近交通引起的响应来识别轴承故障。为了实施这种方法,我们采用了激光位移传感器和无线加速度传感器来监测故障钢桥支座和功能良好的钢桥支座。通过响应分析和比较,观察到了支座性能的显著差异。激光传感器的测量结果显示,在交通荷载作用下,故障支座处的梁体垂直偏移较大。此外,对支座位置加速度响应的调查表明,支座故障会改变附近的振动特性,严重影响交叉功率谱密度(CPSD)和交叉相关性。为了定量评估钢轴承的性能,引入了状态评分(CS)。CS 与轴承损坏有很强的相关性,为桥梁资产管理中的维护和决策过程提供了有价值的见解。本研究通过利用先进的监测技术和引入 CS 进行评估,为识别钢桥支座故障提供了一种全面的自动化方法。该方法所获得的结果可加强桥梁维护策略,促进有效的桥梁资产管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient bridge steel bearing health monitoring using laser displacement sensors and wireless accelerometers
Steel bearings have been commonly used to counteract induced loading from thermal and traffic conditions in numerous bridges. However, their effectiveness has been compromised due to aging and maintenance limitations, potentially impacting the overall bridge system performance. Existing monitoring techniques for detecting malfunctioning steel bearings lack automation and precision, making them inadequate for long-term and real-time bridge dynamics assessment. This study proposes a response-based approach to identify bearing malfunction by analyzing the traffic-induced response in the bearing vicinity. To implement this approach, laser displacement sensors and wireless acceleration sensors were employed to monitor both malfunctioning and well-functioning steel bridge bearings. Significant differences in bearing performance were observed through response analysis and comparison. Laser sensor measurements revealed larger vertical deflections in the girder at malfunctioned bearing under traffic loading. Moreover, the investigation of the acceleration response in the bearing locality indicated that bearing malfunction could alter the vibrational characteristics of the vicinity, significantly affecting Cross Power Spectral Density (CPSD) and cross-correlation. To quantitatively evaluate the performance of steel bearings, a Condition Score (CS) was introduced. The CS exhibited a strong correlation with bearing damage, providing valuable insights for maintenance and decision-making processes in bridge asset management. This study offers a comprehensive and automated method for identifying steel bridge bearing malfunction by utilizing advanced monitoring techniques and introducing the CS for assessment. The results obtained from this approach can enhance bridge maintenance strategies and contribute to effective bridge asset management.
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