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Detection of the propagation of defects in pressurised pipes by means of the acoustic emission technique using artificial neural networks

机译:利用人工神经网络通过声发射技术检测压力管道中缺陷的传播

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摘要

The acoustic emission test has distinguished relevance among non-destructive testing and, therefore, research abounds at present aimed at the improvement of the reliability of results. In this work, the methodologies and the results obtained in a study performed are presented to implement pattern classifiers by using artificial neural networks, aimed at the detection of propagation of existing defects in pressurised pipes by means of the Acoustic Emission testing (AE). Parameters that are characteristic of the AE signals were used as input data for the classifiers. Several tests were performed and the classification performances were in the range of 92% for most of the instances analysed. Studies of parameter relevance were also performed and showed that only a few of the parameters are actually important for the separation of the classes of signals corresponding to No Propagation (NP) of defects and Propagation (P) of defects. The results obtained are pioneering in this type of research and encouraged the present publication.
机译:声发射测试在非破坏性测试中具有明显的相关性,因此,目前针对提高结果可靠性的研究很多。在这项工作中,提出了在进行的研究中获得的方法和结果,以通过使用人工神经网络实施模式分类器,旨在通过声发射测试(AE)检测加压管道中现有缺陷的传播。 AE信号特有的参数用作分类器的输入数据。进行了几次测试,对于大多数被分析实例,分类性能在92%的范围内。还进行了参数相关性的研究,结果表明,只有很少一部分参数对于分离与缺陷无传播(NP)和缺陷传播(P)相对应的信号类别非常重要。所获得的结果是这类研究的先驱,并鼓励了本出版物的发表。

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