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Enhanced sparse component analysis for operational modal identification of real-life bridge structures

机译:增强的稀疏分量分析,用于真实桥梁结构的运行模式识别

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摘要

Blind source separation receives increasing attention as an alternative tool for operational modal analysis in civil applications. However, the implementations on real-life structures in literature are rare, especially in the case of using limited sensors. In this study, an enhanced version of sparse component analysis is proposed for output-only modal identification with less user involvement compared with the existing work. The method is validated on ambient and non-stationary vibration signals collected from two bridge structures with the working performance evaluated by the classic operational modal analysis methods, stochastic subspace identification and natural excitation technique combined with the eigensystem realisation algorithm (NExT/ERA). Analysis results indicate that the method is capable of providing comparative results about modal parameters as the NExT/ERA for ambient vibration data. The method is also effective in analysing non stationary signals due to heavy truck loads or human excitations and capturing small changes in mode shapes and modal frequencies of bridges. Additionally, closely-spaced and low-energy modes can be easily identified. The proposed method indicates the potential for automatic modal identification on field test data. (C) 2018 Elsevier Ltd. All rights reserved.
机译:作为民用应用中的操作模式分析的替代工具,盲源分离受到越来越多的关注。但是,文献中关于现实生活结构的实现很少,特别是在使用有限的传感器的情况下。在这项研究中,提出了一种稀疏分量分析的增强版本,用于仅输出的模式识别,与现有工作相比,用户参与较少。该方法在从两个桥梁结构收集的环境和非平稳振动信号上进行了验证,其工作性能通过经典的操作模态分析方法,随机子空间识别和自然激励技术结合特征系统实现算法(NExT / ERA)进行了评估。分析结果表明,该方法能够提供模态参数的比较结果,如环境振动数据的NExT / ERA。该方法还可以有效地分析由于重型卡车负载或人为因素引起的不稳定信号,并捕获桥梁的振型和振型频率的微小变化。此外,可以轻松地识别出间隔很近的低能耗模式。所提出的方法表明了对现场测试数据进行自动模态识别的潜力。 (C)2018 Elsevier Ltd.保留所有权利。

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