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DAMAS COS Damage Location Demonstrator for Structural Health Monitoring

机译:DAMAS COS损坏结构健康监测的位置演示

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The problem of damage detection and identification has a natural hierarchical structure. At the higher levels, one might require the diagnostic to return say, information about the expected time to failure of a structure, while at the lowest level, the question is simply of whether a fault is present or not. In many ways, the latter is the most fundamental. In response to the need for robust low-level damage detection strategies, the discipline of novelty detection has recently evolved (Bishop, 1994) (Tarassenko et al., 1995). The problem is simply to identify from measured data if a machine or structure has deviated from normal condition, i.e., if the data are novel. The method requires a bank of normal condition data against which the possible damage condition data are compared. Recent work (Worden et al., 2000) has shown that it is possible to extend these ideas to allow damage to be located as well as detected. The idea uses the output from a network of novelty detectors to train a neural network classifier to be able to indicate the area of damage in a structure. This paper describes a demonstrator system that first constructs a network of novelty detectors, which are trained to be sensitive to change in the Lamb wave excitations in a composite panel. The output from these novelty detectors are then used to train an artificial neural network to recognise which area of the composite panel is being subjected to damage. The layout of the paper is as follows: Section 2 gives the main objectives of the DAMASCOS consortium and the partners involved whilst Section 3 describes the Lamb wave data. Section 4 discusses the demonstrator hardware and software whilst Section 5 rounds off with a discussion and some conclusions.
机译:损坏检测和识别问题具有自然的层次结构。在较高的级别下,人们可能需要诊断返回说,有关一个结构失败的预期时间的信息,而在最低级别,问题是不是是否存在故障。在许多方面,后者是最基本的。为了响应对稳健的低级损伤检测策略的需求,新奇检测的学科最近进化(Bishop,1994)(Tarassenko等,1995)。如果机器或结构偏离正常条件,即,如果数据是新颖的,则该问题仅从测量数据识别。该方法需要一组正常条件数据,并比较可能的损坏条件数据。最近的作品(Worden等,2000)所示,可以扩展这些想法,以允许损坏待遇和检测到。该想法使用新颖性探测器网络的输出来训练神经网络分类器,以便能够指示结构中的损坏区域。本文介绍了一个演示系统,首先构建新颖性探测器网络,其训练以对复合板中的羔羊波激发的变化敏感。然后使用这些新奇探测器的输出来训练人工神经网络以识别复合板的哪个区域被损坏。纸张的布局如下:第2节给出了大马士科财团的主要目标,涉及的伙伴涉及,虽然第3节描述了羊羔波数据。第4节讨论了演示硬件和软件,虽然第5条随着讨论和一些结论而完成。

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