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Damage Localization and Quantification of Truss Structure Based on Electromechanical Impedance Technique and Neural Network

机译:基于机电阻抗技术和神经网络的桁架结构损伤定位与定量

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摘要

Truss structure is widely used in civil engineering. However, it is difficult to quantitatively monitor the state of truss structures because of the connection diversity and complexity of truss structures. In this paper, electromechanical impedance (EMI) technique was proposed to measure impedance spectra by using PZT elements and backpropagation (BP) neural network was used as an effective nonlinear conversion tool to quantify the health state of truss structures. Firstly, frequency band of the spectrum was experimentally determined by the trial-and-error approach. Then four connection rods of this truss structure were selected for experimental research. These connection rods were loosened gradually with a small angle increment and the impedance spectra were recorded. Then, the measured data were compressed through dividing the frequency range into multiple subbands. And RMSD values of these bands showed that data points were reduced while damage features remained. Finally, one four-layered BP neural network model was constructed based on these compressed data. The research results showed that compressed impedance data could retain their damage features. After the training, the developed neural network model could not only determine the location of loosened rod, but also quantify the loosening levels.
机译:桁架结构广泛用于土木工程。然而,由于桁架结构的连接分集和复杂性,难以定量监测桁架结构的状态。在本文中,提出了通过使用PZT元件测量阻抗光谱的机电阻抗(EMI)技术,并使用反向衰退(BP)神经网络用作有效的非线性转换工具,以量化桁架结构的健康状态。首先,通过试验和误差方法实验确定光谱的频带。然后选择该桁架结构的四个连接杆进行实验研究。通过小角度增量逐渐松开这些连接杆,并记录阻抗谱。然后,通过将频率范围划分为多个子带,压缩测量数据。这些频段的RMSD值显示,数据点减少,而损坏功能仍然存在。最后,基于这些压缩数据构建了一个四层BP神经网络模型。研究结果表明,压缩阻抗数据可以保留其损坏特征。在训练之后,发达的神经网络模型不仅可以确定松散杆的位置,而且还可以量化松动水平。

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