A Glass Curtain Wall Bolt Loosening Monitoring using Piezoelectric Impedance Measurement and 1D-CNN-based Transfer Learning

Zhuo Chen, Jiawen Xu, Ruqiang Yan
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Abstract

The safety of a glass curtain wall is depending on the tightness of its bolts. Traditional bolt loosening monitoring often uses a number of simple and crude methods to obtain data, such as the hammering method, where the target structure is hammered. Then the prediction is performed using conventional signal processing methods. Such methods tend to be of limited accuracy, time-consuming and laborious, highly dependent on individual experience, and of poor generality. In this research, we introduce the electromechanical impedance method and adopt transfer learning for the structural health monitoring of the glass curtain wall. The impedance of the structures with tight and loose bolts is measured by dual-piezoelectric transducers. The inductance shunt circuit is integrated for enriching the data of the source domain. The features of the structures in the source domain are extracted using a one-dimensional convolutional neural network and then transferred to a target domain. A fine-tuning method is used to improve the accuracy of the monitoring of bolt looseness due to a small sample of the target domain. From what has been discussed above, the proposed method combines EMI and transfer learning, which is convenient to operate, avoids too much human intervention, and has good accuracy and versatility. Experimental analysis proves the effectiveness of the proposed method in the health monitoring of glass curtain walls.
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基于压电阻抗测量和一维cnn迁移学习的玻璃幕墙螺栓松动监测
玻璃幕墙的安全性取决于其螺栓的密封性。传统的螺栓松动监测往往采用一些简单粗暴的方法来获取数据,如锤击法,即对目标结构进行锤击。然后用常规的信号处理方法进行预测。这种方法往往精度有限,耗时费力,高度依赖个人经验,通用性差。本研究将机电阻抗法引入玻璃幕墙结构健康监测中,并采用迁移学习方法。采用双压电换能器测量了螺栓紧固和螺栓松动结构的阻抗。集成了电感分流电路,丰富了源域数据。利用一维卷积神经网络提取源域结构的特征,并将其转移到目标域。由于目标域样本较小,采用微调方法提高了螺栓松动监测的精度。综上所述,本文提出的方法结合了电磁干扰和迁移学习,操作方便,避免了过多的人为干预,具有良好的准确性和通用性。实验分析证明了该方法在玻璃幕墙健康监测中的有效性。
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