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Impedance-based structural health monitoring using neural networks for autonomous frequency range selection

机译:使用神经网络自主选择频率范围的基于阻抗的结构健康监测

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摘要

The impedance-based structural health monitoring (SHM) method has come to the forefront in the SHM community due to its practical potential for real applications. In the impedance-based SHM method, the selection of optimal frequency ranges plays an important role in improving the sensitivity of damage detection, since an improper frequency range can lead to erroneous damage detection results and provide false positive damage alarms. To tackle this issue, this paper proposes an innovative technique for autonomous selection of damage-sensitive frequency ranges using artificial neural networks (ANNs). First, the impedance signals are obtained in a wide frequency band, and the signals are split into multiple sub-ranges of this wide band. Then, the predefined damage index is evaluated for each sub-range by comparing impedance signals between the intact and the concurrent cases. Here, the cross correlation coefficients (CCs) are used as the predefined damage index. The ANN is constructed and trained using all CC values at multiple frequency ranges as multi-inputs and the real damage severity as the single output for various preselected damage scenarios, so that subsequent damage estimations may be carried out by selecting the governing frequency ranges autonomously. The performance of the proposed approach has been examined via a series of experimental studies to detect loose bolts and cracks induced on real steel bridge and building structures. It is found that the proposed approach autonomously determines the damage-sensitive frequency ranges and can be used for effective evaluation of damage severity in a wide variety of damage cases in real structures.
机译:基于阻抗的结构健康监测(SHM)方法由于其在实际应用中的实际潜力而已在SHM社区中走在前列。在基于阻抗的SHM方法中,最佳频率范围的选择在提高损伤检测的灵敏度中起着重要作用,因为不合适的频率范围会导致错误的损伤检测结果并提供错误的正损伤警报。为了解决这个问题,本文提出了一种创新技术,可以使用人工神经网络(ANN)自主选择对损伤敏感的频率范围。首先,在宽频带中获得阻抗信号,并且将信号分成该宽带的多个子范围。然后,通过比较完整情况与并发情况之间的阻抗信号,为每个子范围评估预定义的损坏指数。在此,将互相关系数(CC)用作预定的损坏指标。人工神经网络的构造和训练使用了多个频率范围内的所有CC值作为多输入,而实际损害严重性作为针对各种预先选择的损害情景的单个输出,因此可以通过自主选择控制频率范围来进行后续损害估算。通过一系列实验研究来检验所提出方法的性能,以检测在实际钢桥和建筑结构上引起的螺栓松动和裂缝。发现所提出的方法自主地确定损伤敏感的频率范围,并且可以用于有效评估在真实结构中的各种损伤情况下的损伤严重性。

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