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Wavelet-based outlier analysis for guided wave structural monitoring: Application to multi-wire strands

机译:基于小波的离群值分析用于导波结构监测:在多线股中的应用

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In this paper we describe a method based on outlier analysis and the wavelet transform for structural damage detection based on guided ultrasonic waves. The basic idea is to de-noise and compress the ultrasonic signals by the discrete wavelet transform and use the relevant wavelet coefficients to construct a unidimensional or multidimensional damage index. The damage index is then fed to an outlier analysis to detect anomalies that are representative of structural defects. By extracting the essential information from the ultrasonic signals, the dimension of the damage index is kept at a minimum, as desirable for continuous structural monitoring. The general framework is applied to the detection of notch-like defects in a seven-wire strand by using built-in magnetostrictive devices for ultrasound transduction. Random noise is digitally added to the raw ultrasonic measurements to create statistical populations of the baseline (undamaged) conditions and the damaged conditions. This application demonstrates the effectiveness of the multidimensional analysis compared to the unidimensional analysis, while keeping the number of features as low as four. (C) 2007 Elsevier Ltd. All rights reserved.
机译:本文中,我们描述了一种基于离群分析和小波变换的基于引导超声波的结构损伤检测方法。基本思想是通过离散小波变换对超声信号进行降噪和压缩,并使用相关的小波系数来构建一维或多维损伤指数。然后将损坏指数输入异常值分析,以检测代表结构缺陷的异常。通过从超声信号中提取基本信息,可以将损坏指数的大小保持在最低水平,这是连续进行结构监测所希望的。通过使用内置的磁致伸缩设备进行超声换能,该通用框架可应用于检测七线绞线中的缺口状缺陷。将随机噪声数字化地添加到原始超声测量中,以创建基线(未损坏)状况和损坏状况的统计种群。与一维分析相比,此应用程序演示了多维分析的有效性,同时将特征数保持在四个以下。 (C)2007 Elsevier Ltd.保留所有权利。

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