Suppr超能文献

使用小波变换信号处理器进行信号检测与噪声抑制:在超声探伤中的应用。

Signal detection and noise suppression using a wavelet transform signal processor: application to ultrasonic flaw detection.

作者信息

Abbate A, Koay J, Frankel J, Schroeder S C, Das P

机构信息

Benet Labs., Watervliet, NY.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 1997;44(1):14-26. doi: 10.1109/58.585186.

Abstract

The utilization of signal processing techniques in nondestructive testing, especially in ultrasonics, is widespread. Signal averaging, matched filtering, frequency spectrum analysis, neural nets, and autoregressive analysis have all been used to analyze ultrasonic signals. The Wavelet Transform (WT) is the most recent technique for processing signals with time-varying spectra. Interest in wavelets and their potential applications has resulted in an explosion of papers; some have called the wavelets the most significant mathematical event of the past decade. In this work, the Wavelet Transform is utilized to improve ultrasonic flaw detection in noisy signals as an alternative to the Split-Spectrum Processing (SSP) technique. In SSP, the frequency spectrum of the signal is split using overlapping Gaussian passband filters with different central frequencies and fixed absolute bandwidth. A similar approach is utilized in the WT, but in this case the relative bandwidth is constant, resulting in a filter bank with a self-adjusting window structure that can display the temporal variation of the signal's spectral components with varying resolutions. This property of the WT is extremely useful for detecting flaw echoes embedded in background noise. The detection of ultrasonic pulses using the wavelet transform is described and numerical results show good detection even for signal-to-noise ratios (SNR) of -15 dB. The improvement in detection was experimentally verified using steel samples with simulated flaws.

摘要

信号处理技术在无损检测中,尤其是在超声检测中的应用十分广泛。信号平均、匹配滤波、频谱分析、神经网络和自回归分析都已被用于分析超声信号。小波变换(WT)是处理具有时变频谱信号的最新技术。对小波及其潜在应用的兴趣导致了大量论文的涌现;有些人称小波是过去十年中最重要的数学事件。在这项工作中,小波变换被用于改善噪声信号中的超声探伤,作为对分裂谱处理(SSP)技术的替代。在SSP中,信号的频谱使用具有不同中心频率和固定绝对带宽的重叠高斯通带滤波器进行分割。在小波变换中采用了类似的方法,但在这种情况下相对带宽是恒定的,从而产生了一个具有自调整窗口结构的滤波器组,该滤波器组可以以不同分辨率显示信号频谱分量的时间变化。小波变换的这一特性对于检测嵌入背景噪声中的缺陷回波极为有用。描述了使用小波变换检测超声脉冲的方法,数值结果表明,即使对于-15 dB的信噪比(SNR),检测效果也很好。使用带有模拟缺陷的钢样本通过实验验证了检测效果的改善。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验