Desert seismic data denoising based on energy spectrum analysis in empirical curvelet domain

IF 0.5 4区 地球科学 Q4 GEOCHEMISTRY & GEOPHYSICS
Mo Li, Yue Li, Ning Wu, Yanan Tian
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引用次数: 4

Abstract

Desert seismic events are disturbed and contaminated by strong random noise, which complicates the subsequent processing, inversion, and interpretation of the data. Thus, noise suppression is an important task. The complex characteristics of random noise in desert seismic records differ completely from those of Gaussian white noise such that they are non-stationary, non-Gaussian, non-linear and low frequency. In addition, desert seismic signals and strong random noise generally share the same frequency bands. Such factors bring great difficulties in the processing and interpretation of desert seismic data. To obtain high-quality data in desert seismic exploration, we have developed an effective denoising method for desert seismic data, which performs energy spectrum analysis in the empirical curvelet transform (ECT) domain. The empirical curvelet coefficients are divided into two different groups according to their energy spectrum distributions. In the first group, which contains fewer effective signals, a large threshold is selected to remove lots of random noise; the second group, with more effective signals, a coherence-enhancing diffusion filter (CEDF) is used to eliminate the noise. Unlike traditional curvelet transforms, ECT not only has the multi-scale, multi-direction, and anisotropy properties of conventional curvelet transform, but also provides adaptability to separate the effective signals from the random noise. We examine synthetic and field desert seismic data. The denoising results demonstrate that the proposed method can be used for preserving effective signals and removing random noise.

基于经验曲线域能谱分析的沙漠地震数据去噪
沙漠地震事件受到强烈随机噪声的干扰和污染,这给后续的数据处理、反演和解释带来了复杂性。因此,噪声抑制是一项重要的工作。沙漠地震记录中的随机噪声具有非平稳、非高斯、非线性和低频等复杂特征,与高斯白噪声完全不同。此外,沙漠地震信号与强随机噪声一般具有相同的频带。这些因素给沙漠地震资料的处理和解释带来了很大的困难。为了在沙漠地震勘探中获得高质量的数据,提出了一种有效的沙漠地震数据去噪方法,即在经验曲线变换(ECT)域进行能量谱分析。根据经验曲线系数的能谱分布,将其分为两组。第一组有效信号较少,选取较大的阈值去除大量的随机噪声;第二组采用相干增强扩散滤波器(CEDF)消除噪声,信号更加有效。与传统曲线变换不同,ECT不仅具有传统曲线变换的多尺度、多方向和各向异性特性,而且具有从随机噪声中分离有效信号的适应性。我们考察了合成和野外沙漠地震资料。结果表明,该方法能有效地保留有效信号,去除随机噪声。
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来源期刊
Studia Geophysica et Geodaetica
Studia Geophysica et Geodaetica 地学-地球化学与地球物理
CiteScore
1.90
自引率
0.00%
发文量
8
审稿时长
6-12 weeks
期刊介绍: Studia geophysica et geodaetica is an international journal covering all aspects of geophysics, meteorology and climatology, and of geodesy. Published by the Institute of Geophysics of the Academy of Sciences of the Czech Republic, it has a long tradition, being published quarterly since 1956. Studia publishes theoretical and methodological contributions, which are of interest for academia as well as industry. The journal offers fast publication of contributions in regular as well as topical issues.
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