CCPortal
DOI10.6038/cjg20151221
S-transform spectrum decomposition technique in the application of the extraction of weak seismic signals
Deng Gong; Liang Feng; Li Xiao-Ting; Zhao Jun-Meng; Liu Hong-Bing; Wang Xun
通讯作者Deng, G (通讯作者)
发表日期2015
ISSN0001-5733
起始页码4594
结束页码4604
卷号58期号:12
英文摘要In processing of deep seismic reflection data, when the frequency band difference between the weak useful signal and noise both from the deep subsurface is very small and hard to distinguish, the traditional method of filtering will be limited. To solve this problem, we apply different spectral decomposition methods respectively to experimental data and real data and compare the results from these methods. Our purpose is to find an effective way to protect weak signals during processing deep seismic reflection data. The spectral decomposition method is based on the discrete Fourier transform, which uses the signal frequency-amplitude spectrum and other information to generate a high-resolution seismic image. Typically, it is used to identify the lateral distribution of media properties, solve spectrum changes within complex media and local phase instability and other issues, such as locating faults and small-scale complex fractures. S transform as a new time-frequency analysis method, which is a generalization of STFT developed by Stockwell in 1994, has the ability to automatically adjust the resolution. This method has been widely applied to exploration seismic, MT and other geophysical datasets in recent years. It has become one of the effective methods in noise suppressing during geophysical data processing. Comparing deep seismic reflection data with conventional oil reflection seismic data, in order to probe deep structure, this approach employs a large number of explosives, long observing systems, leading to a phenomenon that valid signals from the deep and noise are mixed together both in the time domain and frequency domain. Considering these characteristics of deep reflection data, this paper combines spectral decomposition with S transform technology. First we design a simple pulse function experimental data to confirm the validity of the S transform method. Then we illustrate the effect of spectral decomposition which is influenced by choosing frequency analysis methods and the transform window function which determines the strength of the resolving power of the method. On this basis, S transform spectrum decomposition is applied to a single channel of deep reflection seismic data and the stacked profile, then the application results of traditional transform spectral decomposition and S transform spectral decomposition are compared. Comparison of single channel data shows that compared with traditional spectral decomposition, the S transform spectral decomposition method is able to automatically adjust the resolution, accurately calibrate frequency component of weak signals at different times in deep reflection seismic data. Application to stacked profile data shows that the stacked profile results obtained by the S transform spectral decomposition and those from other spectral decomposition method are largely consistent, while the results of S transform spectral decomposition clearly depict the characteristics of low-frequency details which are superimposed by noise in original stacked profile. At the same time, it improves the resolution and enhances the phase axis continuity on the stacked profile. Comparison also clearly indicates that the phase axis on the resultant profile obtained by Gabor transform spectral decomposition is more broken, which is caused by fixed-length window function used by Gabor transform decomposition, in which the window length does not change with the signal frequency. In Gabor transform decomposition, the length of the window function parameters can only be selected from the start of processing and is set to a certain value, while the S transform spectral decomposition method chooses the variable length of the window function according to signal change. It can automatically adjust the frequency characteristics of the signal by the local window length to better characterize the details of each frequency range. Such an effect is very obvious in deep reflection seismic imaging. Our results show that the key of the spectral decomposition technique is to select the transform window function. The S transform spectral decomposition technology used in real deep reflection seismic data processing can effectively protect the weak low-frequency signals. It can effectively improve the signal to noise ratio and resolution of weak reflection signals from the deep subsurface, while depicting the characteristics of low-frequency details on the stacked section and ultimately obtaining better imaging results.
关键词TIME-FREQUENCYGABOR TRANSFORMMORLET WAVELETLOWER REACHESMIDDLE
英文关键词Gabor transform; Stockwell transform; Spectral decomposition; Deep seismic reflectio; Time-frequency analysis
语种英语
WOS研究方向Geochemistry & Geophysics
WOS类目Geochemistry & Geophysics
WOS记录号WOS:000367361200021
来源期刊CHINESE JOURNAL OF GEOPHYSICS-CHINESE EDITION
来源机构中国科学院青藏高原研究所
文献类型期刊论文
条目标识符http://gcip.llas.ac.cn/handle/2XKMVOVA/258498
推荐引用方式
GB/T 7714
Deng Gong,Liang Feng,Li Xiao-Ting,et al. S-transform spectrum decomposition technique in the application of the extraction of weak seismic signals[J]. 中国科学院青藏高原研究所,2015,58(12).
APA Deng Gong,Liang Feng,Li Xiao-Ting,Zhao Jun-Meng,Liu Hong-Bing,&Wang Xun.(2015).S-transform spectrum decomposition technique in the application of the extraction of weak seismic signals.CHINESE JOURNAL OF GEOPHYSICS-CHINESE EDITION,58(12).
MLA Deng Gong,et al."S-transform spectrum decomposition technique in the application of the extraction of weak seismic signals".CHINESE JOURNAL OF GEOPHYSICS-CHINESE EDITION 58.12(2015).
条目包含的文件
条目无相关文件。
个性服务
推荐该条目
保存到收藏夹
导出为Endnote文件
谷歌学术
谷歌学术中相似的文章
[Deng Gong]的文章
[Liang Feng]的文章
[Li Xiao-Ting]的文章
百度学术
百度学术中相似的文章
[Deng Gong]的文章
[Liang Feng]的文章
[Li Xiao-Ting]的文章
必应学术
必应学术中相似的文章
[Deng Gong]的文章
[Liang Feng]的文章
[Li Xiao-Ting]的文章
相关权益政策
暂无数据
收藏/分享

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。