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Machine-learning-based methods for output-only structural modal identification

机译:基于机器学习的输出结构模态识别方法

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摘要

In this study, we propose a machine-learning-based approach to identify the modal parameters of the output-only data for structural health monitoring (SHM) that makes full use of the characteristic of independence of modal responses and the principle of machine learning. By taking advantage of the independent feature of each mode, we use the principle of unsupervised learning, turning the training process of the neural network into the process of modal separation. A self-coding neural network is designed to identify the structural modal parameters from the vibration data of structures. The mixture signals, that is, the structural response data, are used as the input of the neural network. Then, we use a complex loss function to restrict the training process of the neural network, making the output of the third layer the modal responses we want, and the weights of the last two layers are mode shapes. The neural network is essentially a nonlinear objective function optimization problem. A novel loss function is proposed to constrain the independent feature with consideration of uncorrelation and non-Gaussianity to restrict the designed neural network to obtain the structural modal parameters. A numerical example of a simple structure is carried out to illustrate the modal parameter identification ability of the proposed approach considering the influence of damping ratios. Then, the proposed method is further verified by an actual SHM dataset from a cable-stayed bridge. The results show that the approach is capable of blindly extracting modal information from system responses.
机译:在这项研究中,我们提出了一种基于机器学习的方法来识别结构健康监测(SHM)的仅产量数据的模态参数,这充分利用了模态响应的独立性和机器学习原理。通过利用每种模式的独立特征,我们使用无监督学习的原理,将神经网络的培训过程转化为模态分离过程。自编码神经网络旨在从结构的振动数据识别结构模态参数。混合信号,即结构响应数据,用作神经网络的输入。然后,我们使用复杂的损失功能来限制神经网络的训练过程,使得第三层的输出是我们想要的模态响应,并且最后两层的重量是模式形状。神经网络基本上是非线性目标函数优化问题。提出了一种新颖的损失函数,以考虑不相关性和非高斯来限制设计的神经网络以获得结构模态参数来限制独立特征。进行简单结构的数值例子,以说明考虑阻尼比的影响的所提出的方法的模态参数识别能力。然后,通过电缆留桥的实际SHM数据集进一步验证所提出的方法。结果表明,该方法能够盲目地从系统响应中提取模态信息。

著录项

  • 来源
    《Structural Control and Health Monitoring》 |2021年第12期|e2843.1-e2843.22|共22页
  • 作者单位

    Harbin Inst Technol Key Lab Intelligent Disaster Mitigat Minist Ind & Informat Technol Harbin Peoples R China|Harbin Inst Technol Sch Civil Engn Harbin Peoples R China;

    Harbin Inst Technol Key Lab Intelligent Disaster Mitigat Minist Ind & Informat Technol Harbin Peoples R China|Harbin Inst Technol Sch Civil Engn Harbin Peoples R China;

    Harbin Inst Technol Key Lab Intelligent Disaster Mitigat Minist Ind & Informat Technol Harbin Peoples R China|Harbin Inst Technol Sch Civil Engn Harbin Peoples R China;

    Harbin Inst Technol Key Lab Intelligent Disaster Mitigat Minist Ind & Informat Technol Harbin Peoples R China|Harbin Inst Technol Sch Civil Engn Harbin Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    machine learning; modal identification; modal independence; neural network; structural health monitoring;

    机译:机器学习;模态识别;模态独立;神经网络;结构健康监测;

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