Department of Structural, Geotechnical and Building Engineering (DISEG), Politecnico di Torino, Corso Duca Degli Abruzzi, 24, 10128 Turin, Italy.
College of Civil Engineering, Fuzhou University, Fuzhou 350108, China.
Sensors (Basel). 2023 Jan 7;23(2):693. doi: 10.3390/s23020693.
The acoustic emission (AE) technique is one of the most widely used in the field of structural monitoring. Its popularity mainly stems from the fact that it belongs to the category of non-destructive techniques (NDT) and allows the passive monitoring of structures. The technique employs piezoelectric sensors to measure the elastic ultrasonic wave that propagates in the material as a result of the crack formation's abrupt release of energy. The recorded signal can be investigated to obtain information about the source crack, its position, and its typology (Mode I, Mode II). Over the years, many techniques have been developed for the localization, characterization, and quantification of damage from the study of acoustic emission. The onset time of the signal is an essential information item to be derived from waveform analysis. This information combined with the use of the triangulation technique allows for the identification of the crack location. In the literature, it is possible to find many methods to identify, with increasing accuracy, the onset time of the P-wave. Indeed, the precision of the onset time detection affects the accuracy of identifying the location of the crack. In this paper, two techniques for the definition of the onset time of acoustic emission signals are presented. The first method is based on the Akaike Information Criterion (AIC) while the second one relies on the use of artificial intelligence (AI). A recurrent convolutional neural network (R-CNN) designed for sound event detection (SED) is trained on three different datasets composed of seismic signals and acoustic emission signals to be tested on a real-world acoustic emission dataset. The new method allows taking advantage of the similarities between acoustic emissions, seismic signals, and sound signals, enhancing the accuracy in determining the onset time.
声发射(AE)技术是结构监测领域中应用最广泛的技术之一。它之所以如此受欢迎,主要是因为它属于无损检测(NDT)技术,可以对结构进行被动监测。该技术采用压电传感器测量由于裂纹形成而突然释放能量在材料中传播的弹性超声波。可以研究记录的信号以获取有关源裂纹、其位置和其类型(I 型、II 型)的信息。多年来,已经开发出许多技术来从声发射研究中对损伤进行定位、表征和量化。信号的起始时间是从波形分析中得出的重要信息项。此信息与三角测量技术的使用相结合,可用于识别裂纹位置。在文献中,可以找到许多方法来识别 P 波的起始时间,以提高准确性。事实上,起始时间检测的精度会影响识别裂纹位置的准确性。在本文中,提出了两种定义声发射信号起始时间的技术。第一种方法基于赤池信息量准则(AIC),第二种方法依赖于人工智能(AI)的使用。用于声音事件检测(SED)的递归卷积神经网络(R-CNN)在由地震信号和声发射信号组成的三个不同数据集上进行训练,然后在真实的声发射数据集上进行测试。新方法可以利用声发射、地震信号和声音信号之间的相似性,提高确定起始时间的准确性。