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小波变换域K-L变换及其去噪效果分析

K-L transformation in wavelet conversion domain and the analysis of de-noise effect

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【摘要】 K-L变换利用相邻地震道的相关性来去除随机噪声,但对于倾斜和弯曲同相轴反射去噪效果不佳。采用改进的时变倾角扫描叠加K-L变换能够较好地去除随机噪声,但由于在时间域进行,没有考虑有效信号和随机噪声在频率域的特点,高频有效信号易受压制。小波变换具有较强的时频分析能力,在小波变换域进行K-L变换,可以实现分时分频K-L变换去噪。介绍了小波变换域K-L变换压制随机噪声的基本原理,即先将地震信号进行小波分解形成分时分频的小波包剖面,然后用K-L变换对小波包剖面进行去噪,再将去噪后的小波包剖面重构回地震剖面,从而达到消除随机噪声的目的。理论模型计算和实际资料处理表明,小波变换域K-L变换去噪方法在有效去除随机噪声的同时能够保护高频有效信号。

【Abstract】 The K-L transformation uses the coherence of adjacent seismic traces to remove the random noise. But the de-noise effect is not good for sloping and bending event reflection. Although the advanced time-variation dip sweep stack K-L transformation can remove random noises, the characteristics of effective signals and random noises in frequency domain is not taken into consideration, making the high-frequency effective signals lost. Because the wavelet transformation has a good ability in time-frequency analysis, the K-L transformation in wavelet domain can remove noises in time and frequency domain separately. The principles of suppressing random noises with K-L transformation in wavelet conversion domain are that 1) wavelet decomposition is carried out on seismic signals to form wavelet packet sections in time sharing and frequency division, 2) K-L transformation is utilized to remove noises on sections, and 3) the de-noise wavelet packet sections are reconstituted into seismic sections to remove random noises. The theoretical model computation and actual data processing show that the K-L transformation in wavelet conversion domain can remove random noises effectively and preserve the effective high-frequency signals simultaneously.

【关键词】 K-L变换小波变换随机噪声
【Key words】 K-L transformationwavelet transformationrandom noise
【基金】 四川省重点学科建设项目(SZD0414)资助
  • 【文献出处】 石油物探 ,Geophysical Prospecting for Petroleum , 编辑部邮箱 ,2007年02期
  • 【分类号】P631.44
  • 【被引频次】27
  • 【下载频次】503
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