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Artificial Intelligence-Based Bolt Loosening Diagnosis Using Deep Learning Algorithms for Laser Ultrasonic Wave Propagation Data

机译:基于人工智能的螺栓松开诊断使用深度学习算法激光超声波传播数据

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摘要

The application of deep learning (DL) algorithms to non-destructive evaluation (NDE) is now becoming one of the most attractive topics in this field. As a contribution to such research, this study aims to investigate the application of DL algorithms for detecting and estimating the looseness in bolted joints using a laser ultrasonic technique. This research was conducted based on a hypothesis regarding the relationship between the true contact area of the bolt head-plate and the guided wave energy lost while the ultrasonic waves pass through it. First, a Q-switched Nd:YAG pulsed laser and an acoustic emission sensor were used as exciting and sensing ultrasonic signals, respectively. Then, a 3D full-field ultrasonic data set was created using an ultrasonic wave propagation imaging (UWPI) process, after which several signal processing techniques were applied to generate the processed data. By using a deep convolutional neural network (DCNN) with a VGG-like architecture based regression model, the estimated error was calculated to compare the performance of a DCNN on different processed data set. The proposed approach was also compared with a K-nearest neighbor, support vector regression, and deep artificial neural network for regression to demonstrate its robustness. Consequently, it was found that the proposed approach shows potential for the incorporation of laser-generated ultrasound and DL algorithms. In addition, the signal processing technique has been shown to have an important impact on the DL performance for automatic looseness estimation.
机译:深度学习(DL)算法在非破坏性评估(NDE)的应用现在成为该领域中最具吸引力的主题之一。作为对这种研究的贡献,本研究旨在使用激光超声技术研究DL算法的应用来检测和估算螺栓接头的松动。基于关于螺栓头板的真正接触面积与引导波能量之间的关系的假设进行了该研究,而超声波通过它。首先,使用Q开关的Nd:YAG脉冲激光器和声发射传感器作为激发和感测超声信号。然后,使用超声波传播成像(UWPI)处理创建3D全场超声数据集,之后应用了几种信号处理技术来生成处理的数据。通过使用与基于VGG的架构的回归模型的深度卷积神经网络(DCNN),计算估计的误差以比较DCNN在不同处理的数据集上的性能。该提出的方法也与K最近邻,支持向量回归和深层人工神经网络进行了比较,以便回归以证明其鲁棒性。因此,发现所提出的方法表明掺入激光产生的超声和DL算法的可能性。此外,已经显示了信号处理技术对自动松动估计的DL性能具有重要影响。

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