Characteristic spectrum research in ae signals based on wavelet analysis

Xiao-qing Yuan, Yi-kai Shi
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引用次数: 4

Abstract

Acoustic emission (AE) signal is one kind of non-steady random signal, its frequency and the statistical nature change with the time variation. In traditional spectrum analysis, a spectrum can't be used to determine what the corresponding period of time domain signal is. According to Mallat decomposition algorithm, wavelet decomposition of each scale and structure is the convolution of a low-pass filter and a high-pass filter, acoustic emission signal is decomposed into different frequency range of time-domain signal components. The lower-scale decomposition component gives expression to high-frequency of the local information, and the higher-scale decomposition component gives expression to low-frequency of the local information. A measured AE signal was decomposed by 6-wavelet. The results showed that AE wave spectrum feature analysis based on wavelet analysis can be used to analyze the spectrum characteristics of the emission signal, and effectively extract useful information of AE.
基于小波分析的声发射信号特征谱研究
声发射信号是一种非稳态随机信号,其频率和统计性质随时间的变化而变化。在传统的频谱分析中,一个频谱不能确定时域信号对应的周期是什么。根据Mallat分解算法,小波分解的每个尺度和结构是一个低通滤波器和一个高通滤波器的卷积,声发射信号被分解成不同频率范围的时域信号分量。低尺度分解分量表示局部信息的高频,高尺度分解分量表示局部信息的低频。对实测声发射信号进行6小波分解。结果表明,基于小波分析的声发射波谱特征分析可用于分析发射信号的频谱特征,有效提取声发射的有用信息。
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