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温度效应对基于机器学习的损伤检测中桥梁-车辆非平稳相互作用信号的影响消除。

Temperature Effects Removal from Non-Stationary Bridge-Vehicle Interaction Signals for ML Damage Detection.

机构信息

Department of Structural, Geotechnical and Building Engineering, Politecnico di Torino, 10129 Turin, Italy.

Department of Civil and Environmental Engineering, Universitat Politècnica de Catalunya, 08034 Barcelona, Spain.

出版信息

Sensors (Basel). 2023 May 30;23(11):5187. doi: 10.3390/s23115187.

DOI:10.3390/s23115187
PMID:37299918
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10256064/
Abstract

Bridges are vital components of transport infrastructures, and therefore, it is of utmost importance that they operate safely and reliably. This paper proposes and tests a methodology for detecting and localizing damage in bridges under both traffic and environmental variability considering non-stationary vehicle-bridge interaction. In detail, the current study presents an approach to temperature removal in the case of forced vibrations in the bridge using principal component analysis, with detection and localization of damage using an unsupervised machine learning algorithm. Due to the difficulty in obtaining real data on undamaged and later damaged bridges that are simultaneously influenced by traffic and temperature changes, the proposed method is validated using a numerical bridge benchmark. The vertical acceleration response is derived from a time-history analysis with a moving load under different ambient temperatures. The results show how machine learning algorithms applied to bridge damage detection appear to be a promising technique to efficiently solve the problem's complexity when both operational and environmental variability are included in the recorded data. However, the example application still shows some limitations, such as the use of a numerical bridge and not a real bridge due to the lack of vibration data under health and damage conditions, and with varying temperatures; the simple modeling of the vehicle as a moving load; and the crossing of only one vehicle present in the bridge. This will be considered in future studies.

摘要

桥梁是交通基础设施的重要组成部分,因此,它们安全可靠地运行至关重要。本文提出并测试了一种在交通和环境变化下,考虑非平稳车桥相互作用的桥梁损伤检测和定位方法。具体来说,本研究提出了一种利用主成分分析去除桥梁强迫振动中温度影响的方法,并利用无监督机器学习算法检测和定位损伤。由于难以获得同时受到交通和温度变化影响的无损和后期受损桥梁的真实数据,因此该方法使用数值桥梁基准进行了验证。垂直加速度响应是根据不同环境温度下移动荷载的时程分析得出的。结果表明,当将运营和环境变化纳入记录数据中时,应用于桥梁损伤检测的机器学习算法似乎是一种很有前途的技术,可以有效地解决问题的复杂性。然而,由于缺乏健康和损伤状态下以及温度变化时的振动数据,并且仅考虑了一辆车在桥上通过的情况,因此示例应用仍存在一些局限性。这将在未来的研究中进一步考虑。

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