A New Structural Health Monitoring Strategy Based on PZT Sensors and Convolutional Neural Network

被引:105
作者
de Oliveira, Mario A. [1 ]
Monteiro, Andre, V [1 ]
Vieira Filho, Jozue [2 ]
机构
[1] Mato Grosso Fed Inst Technol, Dept Elect & Elect, BR-78005200 Cuiaba, Brazil
[2] Sao Paulo State Univ UNESP, Campus Sao Joao da Boa Vista, BR-13876750 Sao Paulo, Brazil
关键词
SHM; electromechanical impedance; piezoelectricity; intelligent fault diagnosis; machine learning; CNN; deep learning; ELECTROMECHANICAL IMPEDANCE METHOD; BEARING FAULT-DIAGNOSIS; SIMPLIFIED FUZZY ARTMAP; WAFER ACTIVE SENSORS; DAMAGE DETECTION; COMPOSITE STRUCTURES; CRACK DETECTION; IDENTIFICATION; RECOGNITION; SYSTEMS;
D O I
10.3390/s18092955
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Preliminaries convolutional neural network (CNN) applications have recently emerged in structural health monitoring (SHM) systems focusing mostly on vibration analysis. However, the SHM literature shows clearly that there is a lack of application regarding the combination of PZT-(lead zirconate titanate) based method and CNN. Likewise, applications using CNN along with the electromechanical impedance (EMI) technique applied to SHM systems are rare. To encourage this combination, an innovative SHM solution through the combination of the EMI-PZT and CNN is presented here. To accomplish this, the EMI signature is split into several parts followed by computing the Euclidean distances among them to form a RGB (red, green and blue) frame. As a result, we introduce a dataset formed from the EMI-PZT signals of 720 frames, encompassing a total of four types of structural conditions for each PZT. In a case study, the CNN-based method was experimentally evaluated using three PZTs glued onto an aluminum plate. The results reveal an effective pattern classification; yielding a 100% hit rate which outperforms other SHM approaches. Furthermore, the method needs only a small dataset for training the CNN, providing several advantages for industrial applications.
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页数:21
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