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Lamb wave based automatic damage detection using matching pursuit and machine learning

机译:使用匹配追踪和机器学习的基于羔羊波的自动损伤检测

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摘要

In this study, matching pursuit (MP) has been tested with machine learning algorithms such as artificial neural networks (ANNs) and support vector machines (SVMs) to automate the process of damage detection in metallic plates. Here, damage detection is done using the Lamb wave response in a thin aluminium plate simulated using a finite element (FE) method. To reduce the complexity of the Lamb wave response, only the A0 mode is excited and sensed. The procedure adopted for damage detection consists of three major steps, involving signal processing and machine learning (ML). In the first step, MP is used for de-noising and enhancing the sparsity of the database. In the existing literature, MP is used to decompose any signal into a linear combination of waveforms that are selected from a redundant dictionary. In this work, MP is deployed in two stages to make the database sparse as well as to de-noise it. After using MP on the database, it is then passed as input data for ML classifiers. ANN and SVM are used to detect the location of the potential damage from the reduced data. The study demonstrates that the SVM is a robust classifier in the presence of noise and is more efficient than the ANN. Out-of-sample data are used for the validation of the trained and tested classifier. Trained classifiers are found to be successful in the detection of damage with a detection rate of more than 95%.
机译:在这项研究中,已经使用机器学习算法(例如人工神经网络(ANN)和支持向量机(SVM))对匹配追踪(MP)进行了测试,以自动检测金属板中的损伤。在这里,使用Lamb波响应在铝板中进行损伤检测,该铝板使用有限元(FE)方法模拟。为了降低兰姆波响应的复杂性,仅激发和感测A0模式。损坏检测所采用的过程包括三个主要步骤,涉及信号处理和机器学习(ML)。第一步,MP用于降低噪声并增强数据库的稀疏性。在现有文献中,MP用于将任何信号分解为从冗余字典中选择的波形的线性组合。在这项工作中,MP的部署分为两个阶段,以使数据库稀疏并消除噪声。在数据库上使用MP后,然后将其作为ML分类器的输入数据传递。 ANN和SVM用于根据减少的数据检测潜在损坏的位置。这项研究表明,在有噪声的情况下,SVM是一种鲁棒的分类器,并且比ANN更有效。样本外数据用于验证经过训练和测试的分类器。训练有素的分类器被发现可以成功地检测到损坏,检出率超过95%。

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