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Learning material defect patterns by separating mixtures of independent component analyzers from NDT sonic signals

机译:通过从NDT声音信号中分离独立成分分析仪的混合物来学习材料缺陷模式

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摘要

This paper introduces the application of independent component analysis mixture modelling (ICAMM) in non-destructive testing (NDT). The application consists of discriminating patterns for material quality control from homogeneous and defective materials inspected by impact-echo testing. This problem is modelled as a mixture of independent component analysis (ICA) models, representing a class of defective or homogeneous material by an ICA model whose parameters are learned from the impact-echo signal spectrum. These parameters define a kind of particular signature for the different defects. The proposed procedure is intended to exploit to the maximum the information obtained with the cost efficiency of only a single impact. To illustrate this capability, four levels of classification detail (material condition, kind of defect, defect orientation, and defect dimension) are defined, with the lowest level of detail having up to 12 classes. The results from several 3D finite element models and lab specimens of an aluminium alloy that contain defects of different shapes and sizes in different locations are included. The performance of the classification by ICA mixtures is compared with linear discriminant analysis (LDA) and with multi-layer perceptron (MLP) classification. We demonstrate that the mass spectra from impact-echo testing fit ICAMM, and we also show the feasibility of ICAMM to contribute in NDT applications.
机译:本文介绍了独立成分分析混合模型(ICAMM)在无损检测(NDT)中的应用。该应用程序包括区分材料质量控制模式与通过冲击回波测试检查的均质和缺陷材料。这个问题被建模为独立成分分析(ICA)模型的混合物,通过ICA模型表示一类有缺陷或均质的材料,其模型是从冲击回波信号频谱中得知的。这些参数为不同的缺陷定义了一种特殊的签名。拟议的程序旨在最大程度地利用所获得的信息,而仅具有单个影响的成本效率。为了说明这种能力,定义了四个级别的分类详细信息(材料条件,缺陷的种类,缺陷方向和缺陷尺寸),最低的详细信息级别具有多达12个类别。包括几个铝合金的3D有限元模型和实验室样本的结果,这些样本在不同位置包含不同形状和大小的缺陷。将ICA混合物的分类性能与线性判别分析(LDA)和多层感知器(MLP)分类进行了比较。我们证明冲击回波测试的质谱适合ICAMM,并且我们还证明了ICAMM有助于NDT应用的可行性。

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