地震地质 ›› 2022, Vol. 44 ›› Issue (5): 1257-1272.DOI: 10.3969/j.issn.0253-4967.2022.05.011

• 研究论文 • 上一篇    下一篇

用高分辨率谱分解方法研究三河-平谷大地震区的深部细结构

李倩(), 酆少英, 秦晶晶, 田一鸣   

  1. 中国地震局地球物理勘探中心, 郑州 450002
  • 收稿日期:2021-08-25 修回日期:2022-04-28 出版日期:2022-10-20 发布日期:2022-11-28
  • 作者简介:

    李倩, 女, 1985年生, 2016年于中国石油大学(北京)获地质资源与地质工程专业博士学位, 高级工程师, 从事地壳深浅结构的反射地震探测与研究, 电话: 0371-56865137, E-mail:

  • 基金资助:
    中国地震局地震科技星火计划项目(XH20076Y)

STUDY ON FINE CRUSTAL STRUCTURE OF THE SANHE-PINGGU EARTHQUAKE REGION BY HIGH-RESOLUTION SPECTRAL DECOMPOSITION METHOD

LI Qian(), FENG Shao-ying, QIN Jing-jing, TIAN Yi-ming   

  1. Geophysical Exploration Center, China Earthquake Administration, Zhengzhou 450002, China
  • Received:2021-08-25 Revised:2022-04-28 Online:2022-10-20 Published:2022-11-28

摘要:

深地震反射数据的深部具有低频、 弱能量、 低信噪比等特点, 这为深部构造的正确解释带来了困难。稀疏约束反演谱分解方法是基于非稳态褶积模型的一种时频分析方法, 该方法将谱分解问题描述成一个线性反演问题, 将其与L1范数的正则化条件相结合, 即可使其沿着满足约束条件的方向求解得到理想的时频谱。以上方法具有产生高分辨率时频谱和相位谱的能力, 在石油地球物理勘探的储层低频异常检测、 随机噪声衰减以及碳酸盐岩孔洞识别等方面取得了一定效果, 但尚未有将其应用于深地震反射数据中的报道。文中将稀疏约束反演谱分解方法应用于三河-平谷8.0级大地震区的深地震反射数据中, 通过单道数据测试说明该方法能够有效识别地震振幅异常, 较为准确地重构地震信号; 对叠加剖面的应用结果表明, 在特定频段范围内的重构剖面及时频剖面与原始叠加剖面相比具有更高的分辨率, 能够清晰地刻画出三河-平谷地区地壳深部被噪声湮灭的低频细节特征; 高分辨率的时频相位谱具有丰富的相位信息, 相位特征变化明显, 可以借助时频相位谱对地壳浅部的断层进行识别, 有助于判断构造边界; 子波重构剖面以及高分辨率的单频相位谱有助于刻画出该区莫霍过渡带内部反射的精细结构特征。综合分析原始反射地震剖面、 时频剖面以及子波重构剖面, 有助于深入研究三河-平谷大地震区的深部精细构造, 为后续深地震反射剖面的精细解释奠定了基础。

关键词: 深地震反射数据, 稀疏约束反演谱分解, 时频相位谱, 深部细结构, 数据重构

Abstract:

Deep seismic reflection detection technology is considered to be one of the effective technical means to detect the fine lithospheric structure and the deep structure in earth’s interior. However, the detection depth of deep seismic reflection technology is large, and the geological tectonics of target area are usually complex(such as there are many fault zones, the terrain elevation changes greatly), which makes the explosion condition of source and the receiving condition of seismic wave very poor in the process of seismic data acquisition. This results in that the deep seismic reflection data has low frequency, narrow frequency band, low signal-to-noise ratio and resolution, and weak reflection energy. In addition, due to the existence of various forms of complex geological bodies in the deep crust and the energy absorption and attenuation caused by the long-distance propagation of seismic wave, etc., the reflection wave groups of the middle and lower crust in the deep seismic reflection profile is often characterized by weak reflection energy, poor continuity, interleaved or zonal distribution, which brings difficulties to the correct interpretation of seismic data and the understanding of geological structure.
With the emergence of high-resolution time-frequency analysis methods, it becomes more and more meaningful to try to use new time-frequency analysis methods to analyze the time-frequency distribution characteristics and phase extraction of deep seismic reflection data. The sparse constraint inverse spectral decomposition(SCISD)is a time-frequency analysis method based on the unsteady convolution model. This method describes the spectral decomposition problem as a linear inversion problem, in which minimizing the l1 norm of the time-frequency spectrum of the seismic signal is adopted as a sparsity constraint term, and it has the ability to generate high-resolution time-frequency spectrum and phase spectrum. Compared with transform-based spectral decomposition methods(such as short-time Fourier transform, continuous-wavelet transform and S-transform), this method has higher time-frequency resolution, more concentrated time-frequency distribution, and good anti-noise performance. It can extract the corresponding time-varying wavelet phase information, and is not affected by the shape and length of time window. Due to these good features, the SCISD method has achieved certain results in low-frequency anomaly detection, reservoir identification and carbonate cave-type reservoir prediction for petroleum geophysical exploration. On the one hand, it can provide high time resolution for thin reservoir prediction, on the other hand, it can provide wavelet phase change characteristics for gas reservoir detection and carbonate cave identification. However, it has not yet been applied to deep seismic reflection data. Therefore, this paper applies the SCISD method to the deep seismic reflection data in the Sanhe-Pinggu M8.0 earthquake area. The test of single-channel data shows that this method can effectively identify the seismic amplitude anomaly and reconstruct the seismic signal more accurately. The time-frequency characteristic analysis and data reconstruction of the deep seismic reflection data in the Sanhe-Pinggu M8.0 earthquake area were carried out. It is found that the reconstructed section and time-frequency section have higher signal-to-noise ratio and resolution than the original section, and improve the continuity of the seismic profile events. It can not only calibrate the frequency components at different times of weak signals in the deep seismic reflection data, but also clearly depict the characteristics of low-frequency details on the stacked section. The high-resolution time-frequency phase spectrum has rich phase information, and the phase characteristics change significantly. It can be used for fault identification, which is helpful to judge the tectonic boundary. The wavelet reconstruction technique and the high-resolution single-frequency phase spectrum are helpful to characterize the internal reflection structure of the Moho transition zone. The SCISD method is suitable as the spectral decomposition method for deep seismic reflection data.
By analyzing the time-frequency characteristics of the original reflection seismic data and purposefully reconstructing the deep seismic reflection data, the effective weak signals in the deep crust can be extracted. The joint comparative analysis of time-frequency profile and reconstructed profile is helpful to deeply study the deep fine structure and establish an intuitive understanding of the deep structure. This method analyzes the deep seismic reflection profile from a new perspective, which is beneficial to discover new geological understandings, has very important research significance, and can be widely used in the interpretation of deep seismic reflection data.

Key words: deep seismic reflection data, sparsity constraint inverse spectral decomposition, time-frequency phase spectrum, crustal fine structure, data reconstruction