Wavelet application in acoustic emission signal detection of wire related events in pipeline

Q4 Physics and Astronomy
Ran Wu, Z. Liao, L. Zhao, X. Kong
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引用次数: 5

Abstract

This thesis establishes an automatic classification program for the signal detection work in pipeline inspection. Time-scale analysis provides the basic methodology of this thesis work. The wavelet transform is implemented in the program for filtering out the majority of noise and detect needed signals. As a popular nondestructive test, acoustic emission (AE) testing has been widely used in many physical and engineering fields such as leak detection and pipeline inspection. Among those applied AE tests, a common problem is to extract the physical features of the ideal events, so as to detect similar signals. In acoustic signal processing, those features can be represented as joint time frequency distribution. However, classical signal processing methods only give global information on either time or frequency domain, while local information is lots. Although the short-time Fourier transform (STFT) is developed to analyze time and frequency details simultaneously, it can only achieve limited precision. Other time-frequency methods are also applied in AE signal processing, but they all have the problem of resolution and time consuming. Wavelet transform is a time-scale technique with adaptable precision, which makes better feature extraction and detail detection. This thesis is an application of wavelet transform in AE signal detection where various noise exists. The wavelet transform with Morelet wavelet as the mother wavelet provides the basis of the program for auto classification in this thesis work. Finally the program is tested with two industrial projects to verify the workability of wavelet transforms and the reliability of the developed auto classifiers.
小波在管道中电线相关事件声发射信号检测中的应用
本文为管道检测中的信号检测工作建立了一个自动分类程序。时间尺度分析是本文工作的基本方法。在程序中实现小波变换,滤除大部分噪声,检测所需信号。声发射检测作为一种流行的无损检测方法,已广泛应用于泄漏检测、管道检测等物理和工程领域。在应用声发射测试中,一个常见的问题是提取理想事件的物理特征,从而检测到相似的信号。在声信号处理中,这些特征可以表示为联合时频分布。然而,经典的信号处理方法只能给出时域或频域的全局信息,而局部信息是大量的。虽然短时傅里叶变换(STFT)可以同时分析时间和频率细节,但其精度有限。其他时频方法也应用于声发射信号的处理,但它们都存在分辨率和耗时的问题。小波变换是一种具有自适应精度的时间尺度技术,可以更好地进行特征提取和细节检测。本文是小波变换在存在各种噪声的声发射信号检测中的应用。以Morelet小波为母小波的小波变换为本文的自动分类程序提供了基础。最后通过两个工业项目对程序进行了测试,验证了小波变换的可操作性和所开发的自动分类器的可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Canadian Acoustics - Acoustique Canadienne
Canadian Acoustics - Acoustique Canadienne Physics and Astronomy-Acoustics and Ultrasonics
CiteScore
0.50
自引率
0.00%
发文量
1
期刊介绍: The CAA is the professional, interdisciplinary organization that : - fosters communication among people working in all areas of acoustics in Canada - promotes the growth and practical application of knowledge in acoustics - encourages education, research, protection of the environment, and employment in acoustics - is an umbrella organization through which general issues in education, employment and research can be addressed at a national and multidisciplinary level
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