Automated Operational Modal Analysis of a steel truss railway bridge employing free decay response

Francesco Morgan Bono, Antonio Argentino, Lorenzo Bernardini, Lorenzo Benedetti, Gabriele Cazzulani, Claudio Somaschini, Marco Belloli
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Abstract

The efficiency and resilience of transportation networks depend significantly on the integrity of bridges, which are increasingly threatened by ageing, traffic, and extreme climate events. Traditional visual inspections have notable limitations, necessitating the adoption of more objective methods like Structural Health Monitoring (SHM). This study explores the application of Operational Modal Analysis (OMA) to estimate the modal parameters of railway bridges, specifically using the Covariance-based Stochastic Subspace Identification (SSI-COV) algorithm. The case study involves a steel Warren truss bridge monitored over 20 months. The research demonstrates that SSI-COV, typically requiring stationary random input, can effectively utilise the bridge’s free decay responses following train passages. This approach strongly improves signal-to-noise ratio, which is vice-versa critical for railway bridges ambient vibrations due to the very low input energy, enabling precise modal parameter estimation with shorter time windows and lower-performance sensors. Results were validated against the Peak-Picking (PP) and the Enhanced Frequency Domain Decomposition (EFDD) methods, with SSI-COV identifying three additional natural frequencies and exhibiting lower dispersion in frequency estimates throughout the monitored period. Statistical analysis further indicated that using multiple free decays enhances the accuracy and reduces variability for challenging modes, while dominant modes are reliably estimated with minimal decay data. These findings endorse the combination of SSI-COV and free decays as a robust tool for detailed and long-term bridge monitoring, offering a valuable and potentially low-cost alternative to ambient vibration-based OMA techniques.
采用自由衰减响应对钢桁梁铁路桥进行自动化运行模态分析
交通网络的效率和弹性在很大程度上取决于桥梁的完整性,而桥梁正日益受到老化、交通和极端气候事件的威胁。传统的目视检查有明显的局限性,需要采用更客观的方法,如结构健康监测(SHM)。本研究探讨了运行模态分析(OMA)在铁路桥梁模态参数估计中的应用,特别是基于协方差的随机子空间识别(SSI-COV)算法。该案例研究涉及一座钢制沃伦桁架桥,监测时间超过20个月。研究表明,SSI-COV通常需要固定随机输入,可以有效地利用列车通过后桥梁的自由衰减响应。这种方法极大地提高了信噪比,这对铁路桥梁环境振动至关重要,因为输入能量非常低,可以用更短的时间窗口和更低性能的传感器进行精确的模态参数估计。结果与拾峰(PP)和增强频域分解(EFDD)方法进行了验证,SSI-COV识别了三个额外的固有频率,并且在整个监测期间的频率估计中表现出较低的色散。统计分析进一步表明,使用多个自由衰变可以提高具有挑战性模态的精度并减少变异,而优势模态则可以用最小的衰变数据可靠地估计。这些研究结果表明,SSI-COV和自由衰减的结合是一种可靠的工具,可用于详细和长期的桥梁监测,为基于环境振动的OMA技术提供了一种有价值且潜在低成本的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.10
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