Tracking long-term modal behaviour of a footbridge and identifying potential SHM approaches

IF 3.6 2区 工程技术 Q1 ENGINEERING, CIVIL Journal of Civil Structural Health Monitoring Pub Date : 2024-04-03 DOI:10.1007/s13349-024-00787-9
Wai Kei Ao, David Hester, Connor O’Higgins, James Brownjohn
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Abstract

Numerous studies have investigated the long-term monitoring of natural frequencies, primarily focusing on medium–large highway bridges, using expensive monitoring systems with a large array of sensors. However, this paper addresses the less explored issue of monitoring a footbridge, examining four critical aspects: (i) sensing system, (ii) frequency extraction method, (iii) data modelling techniques, and (iv) damage detection. The paper proposes a low-cost all-in-one sensor/logger unit instead of a conventional sensing system to address the first issue. For the second issue, many studies use natural frequency data extracted from measured acceleration for data modelling, the paper highlights the impact of the input parameters used in the automated frequency extraction process, which affects the number and quality of frequency data points extracted and subsequently influences the data models that can be created. After that, the paper proposes a modified PCA model optimised for computational efficiency, designed explicitly for sparse data from a low-cost monitoring system, and suitable for future on-board computation. It also explores the capabilities and limitations of a data model developed using a limited data set. The paper demonstrates these aspects using data collected from a 108 m cable-stayed footbridge over several months. Finally, the detection of damage is achieved by employing the one-class SVM machine learning technique, which utilises the outcomes obtained from data modelling. In summary, this paper addresses the challenges associated with the long-term monitoring of a footbridge, including selecting a suitable sensing system, automated frequency extraction, data modelling techniques, and damage detection. The proposed solutions offer a cost-effective and efficient approach to monitoring footbridges while considering the challenges of sparse data sets.

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跟踪人行天桥的长期模态行为并确定潜在的 SHM 方法
许多研究都对自然频率的长期监测进行了调查,主要集中在中大型公路桥梁上,使用的是昂贵的、带有大量传感器阵列的监测系统。然而,本文针对较少探讨的人行天桥监测问题,研究了四个关键方面:(i) 传感系统;(ii) 频率提取方法;(iii) 数据建模技术;以及 (iv) 损伤检测。针对第一个问题,论文提出了一种低成本的一体化传感器/记录仪装置,而不是传统的传感系统。针对第二个问题,许多研究使用从测量的加速度中提取的自然频率数据进行数据建模,本文强调了自动频率提取过程中使用的输入参数的影响,这些参数会影响提取的频率数据点的数量和质量,进而影响可创建的数据模型。随后,论文提出了一个改进的 PCA 模型,该模型针对计算效率进行了优化,明确针对来自低成本监测系统的稀疏数据而设计,并适用于未来的车载计算。论文还探讨了使用有限数据集开发的数据模型的能力和局限性。本文利用几个月来从 108 米斜拉人行天桥上收集的数据对这些方面进行了演示。最后,通过采用单类 SVM 机器学习技术,利用数据建模获得的结果,实现了损坏检测。总之,本文探讨了与人行天桥长期监测相关的挑战,包括选择合适的传感系统、自动频率提取、数据建模技术和损坏检测。所提出的解决方案为监测人行天桥提供了一种经济高效的方法,同时也考虑到了稀疏数据集所带来的挑战。
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来源期刊
Journal of Civil Structural Health Monitoring
Journal of Civil Structural Health Monitoring Engineering-Safety, Risk, Reliability and Quality
CiteScore
8.10
自引率
11.40%
发文量
105
期刊介绍: The Journal of Civil Structural Health Monitoring (JCSHM) publishes articles to advance the understanding and the application of health monitoring methods for the condition assessment and management of civil infrastructure systems. JCSHM serves as a focal point for sharing knowledge and experience in technologies impacting the discipline of Civionics and Civil Structural Health Monitoring, especially in terms of load capacity ratings and service life estimation.
期刊最新文献
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