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Quantitative classification of adhesive bondline dimensions using Lamb waves and artificial neural networks

机译:使用兰姆波和人工神经网络对胶粘剂粘结层尺寸进行定量分类

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摘要

Adhesive bonding of metal assemblies is gaining acceptance for use with safety critical structures, and there is a need for effective inspection for both quality assurance (QA) and the assessment of condition in service. One aspect of QA is the need for the dimensions of adhesive bondlines to be within tolerance and measurable. This paper describes the application of ultrasonic Lamb waves in the determination of the principal dimensions of two forms of adhered joints (Lap and T-form) between metal plates. Low order Lamb wave modes (s0 and a1) are propagated across adhered bond-lines, and the received signals are transformed to the modulus frequency domain (FD). The FD data are used as input to artificial neural networks (ANNs), which are trained to associate features in the input data with principal bondline dimensions. The performance of different network structures and simplified forms of these is examined, and the technique gives reliable estimates of the required dimensions in bondlines not included in network training. The interconnected weights of simplified networks provide evidence of the features in Lamb wave signals that underlie the successful operation of the method.
机译:金属组件的胶粘结合已被认可用于安全关键型结构,因此需要对质量保证(QA)和使用状态评估进行有效检查。 QA的一个方面是,要求胶粘剂粘合线的尺寸在公差范围内且可测量。本文介绍了超声波兰姆波在确定金属板之间两种形式的粘合接头(搭接和T型)的主要尺寸时的应用。低阶兰姆波模式(s0和a1)在粘合的粘合线上传播,并且接收到的信号被转换到模量频域(FD)。 FD数据用作人工神经网络(ANN)的输入,该神经网络经过训练可以将输入数据中的特征与主要粘合线尺寸相关联。检查了不同网络结构的性能以及这些结构的简化形式,并且该技术对未包含在网络培训中的接合线中的所需尺寸提供了可靠的估计。简化网络的相互联系的权重为兰姆波信号的特征提供了证据,这些特征奠定了该方法成功运行的基础。

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