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Single-sensor acoustic emission source localization in plate-like structures: A deep learning approach

机译:板状结构中的单传感器声发射源定位:一种深度学习方法

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Acoustic emission (AE) source localization in plate-like structures with geometric features, such as stiffeners, usually requires a large number of sensors. Even without any geometric feature, such approaches are usually accurate only within the convex area surrounded by sensors. This paper proposes a deep learning approach that only requires one sensor and can localize acoustic emission sources anywhere within a metallic plate with geometric features. The idea is to leverage the edge reflections of acoustic waves as well as their multimodal and dispersive characteristics. This deep learning approach consists of three autoencoder layers and a regression layer. The input to the first autoencoder layer is the continuous wavelet transform of AE signals and the output of the regression layer is the estimated coordinates of AE sources. To validate the performance of the proposed approach, Hsu-Nielsen pencil lead break tests were performed on an aluminum plate with a stiffener. The results show that the proposed approach has no blind zone and can localize AE sources anywhere on the plate.
机译:声发射(AE)源定位在具有几何特征的板状结构中,例如加强筋,通常需要大量的传感器。即使没有任何几何特征,这种方法通常仅在传感器包围的凸面区域内准确。本文提出了一种深度学习方法,只需要一个传感器,并且可以在具有几何特征的金属板内的任何位置定位声发射源。这个想法是利用声波的边缘反射以及它们的多模式和分散特性。这种深度学习方法由三个AutoEncoder层和回归层组成。第一AutoEncoder层的输入是AE信号的连续小波变换,回归层的输出是AE源的估计坐标。为了验证所提出的方法的性能,在具有加强件的铝板上进行HSU-Nielsen铅笔铅断裂试验。结果表明,该方法没有盲区,可以将AE源位于板上的任何地方。

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