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Seismic wave characterization using complex trace analysis in the stationary wavelet packet domain

机译:平稳小波包域中使用复杂迹线分析的地震波表征

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摘要

One of the most important tasks in seismology and applied geophysics is the identification of the different kinds of waves that form a seismic record by means of polarization analysis. In particular, this involves the extraction of body waves (linear polarization) or surface waves (mostly elliptical polarization) from a set of seismic data and which forms a key point in several studies. In this work, a new method of time-frequency polarization analysis based on the stationary wavelet packet transform is developed. The proposed approach identifies and extracts automatically the different waves included in the signal, dependent on the reciprocal ellipticity. Moreover, the algorithm provides enough information to the user to allow them to also manually select the reciprocal ellipticity intervals, and then extract the corresponding waves of interest contained in the signals. The proposed polarization estimation method and the automatic features extraction algorithm have been evaluated first using synthetic signals, and then applied to real seismic records. Based on the results obtained from both synthetic and real signals, we can conclude that the proposed method correctly identifies and extracts automatically the linearly and elliptically polarized waves from the signal, discerning clearly both types of polarization. Moreover, the proposed method is able to identify and extract signals with different kinds of elliptical polarization, allowing us to understand better the characteristics of the Rayleigh waves.
机译:地震学和应用地球物理学中最重要的任务之一是通过极化分析识别形成地震记录的不同种类的波。特别是,这涉及从一组地震数据中提取体波(线性极化)或表面波(主要是椭圆极化),这构成了多项研究的重点。本文研究了一种基于平稳小波包变换的时频极化分析新方法。所提出的方法根据倒数椭圆率自动识别并提取信号中包含的不同波。而且,该算法向用户提供了足够的信息,以允许他们也手动选择倒数椭圆度间隔,然后提取信号中包含的相应感兴趣波。首先使用合成信号对提出的极化估计方法和自动特征提取算法进行了评估,然后将其应用于真实地震记录。根据从合成信号和真实信号获得的结果,我们可以得出结论,建议的方法可以正确识别并自动从信号中提取线性和椭圆偏振波,从而清楚地识别出两种类型的偏振。此外,所提出的方法能够识别和提取具有不同种类的椭圆极化的信号,从而使我们能够更好地理解瑞利波的特性。

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  • 来源
    《Soil Dynamics and Earthquake Engineering》 |2011年第11期|p.1565-1578|共14页
  • 作者单位

    Department of Physics Systems Engineering and Signal Theory. University of Alicante P.O. Box 99 E-03080 Alicante Spain University Institute of Physics Applied to Sciences and Technologies University of Alicante Spain;

    CFZ German Research Center for Ceosciences Telegrafenberg 14473 Potsdam Germany;

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