Spectral decomposition and multi-frequency joint AVO inversion based on the neural network

被引:0
|
作者
Wang Y. [1 ,2 ,3 ]
Wang Y. [1 ,2 ,3 ]
机构
[1] Key Laboratory of Petroleum Resources Research, Institute of Geology and Geophysics, Chinese Academy of Sciences, Beijing
[2] College of Earth and Planetary Sciences, University of Chinese Academy of Sciences, Beijing
[3] Innovation Academy for Earth Science, Chinese Academy of Sciences, Beijing
关键词
D O I
10.1190/geo2022-0474.1
中图分类号
学科分类号
摘要
The conventional AVO (Amplitude variation with offset) inversion method based on the amplitude attribute of pre-stack gathers calculates the elastic parameters of underground media through the variation of amplitude with offset. However, when the underground medium is a thin interlayer, the tuning effect will occur, which is the aliasing phenomenon of amplitude at the reflection interface. The tuning effect makes the conventional AVO inversion method based on amplitude attributes unable to solve the problem of thin interlayer recognition. In addition, the same reflection interface will have different AVO characteristics at different frequencies, whereas the frequency factor is not included in conventional AVO inversion methods. Two-stage neural network approaches based on deep learning are combined to improve the resolution of thin interlayers and to accurately invert the elastic parameters. For the first-stage neural network, a fully connected network is used to solve the inversion spectral decomposition problem. It can eliminate the thin interlayer tuning effect, effectively improve the resolution, and obtain reflection coefficients at different frequencies. For the second-stage neural network, a multi-channel convolutional neural network is used to establish the mapping relationship between multi-frequency reflection coefficients and elastic parameters, so as to the multi-frequency joint inversion of elastic parameters could be realized. The above procedure is applied to synthetic data (with and without noise) to show the anti-noise ability of the two-stage deep learning method. Compared with the method of directly predicting elastic parameters using seismic data and the conventional AVO inversion method, the two-stage deep learning method can describe the elastic parameters of thin interbeds more accurately. The same procedure is applied to the field data, and the inversion results indicate that they can well match with the well-logging data. Hence it is promising for practical applications. © 2023 Society of Exploration Geophysicists.
引用
收藏
页码:1 / 44
页数:43
相关论文
共 50 条
  • [21] Joint PP and PS AVO inversion based on Zoeppritz equations
    Xiucheng Wei 1
    Earthquake Science, 2011, (04) : 329 - 334
  • [22] Joint PP and PS AVO inversion based on Bayes theorem
    Guo-Qing Hu
    Yang Liu
    Xiu-Cheng Wei
    Tian-Sheng Chen
    Applied Geophysics, 2011, 8 : 293 - 302
  • [23] Surface seismic imaging by multi-frequency amplitude inversion
    Greenhalgh, S. A.
    Bing, Zhou
    EXPLORATION GEOPHYSICS, 2003, 34 (04) : 217 - 224
  • [24] Deep Spectral Meshes: Multi-Frequency Facial Mesh Processing with Graph Neural Networks
    Kosk, Robert
    Southern, Richard
    You, Lihua
    Bian, Shaojun
    Kokke, Willem
    Maguire, Greg
    ELECTRONICS, 2024, 13 (04)
  • [25] Seismic AVO Inversion Method for Viscoelastic Media Based on a Tandem Invertible Neural Network Model
    Sun, Yuhang
    Liu, Yang
    Dong, Hongli
    Chen, Gui
    Li, Xuegui
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2024, 62 : 1 - 18
  • [26] Neural network models of eddy current multi-frequency system for nondestructive testing
    Chady, T
    Enokizono, M
    Sikora, R
    IEEE TRANSACTIONS ON MAGNETICS, 2000, 36 (04) : 1724 - 1727
  • [27] Research on Multi-frequency Ultrasonic On-Line Monitoring Technology of Transformer Oil Based on Neural Network
    Zeng Zhong
    Wang Qi
    Zhou Yuan
    2018 CHINA INTERNATIONAL CONFERENCE ON ELECTRICITY DISTRIBUTION (CICED), 2018, : 189 - 194
  • [28] Frequency-Weighting for Multi-Frequency Electromagnetic Source Contrast Inversion
    Geddert, Nicholas
    Sparling, Liam
    LoVetri, Joe
    Jeffrey, Ian
    2018 INTERNATIONAL WORKSHOP ON COMPUTING, ELECTROMAGNETICS, AND MACHINE INTELLIGENCE (CEMI), 2018, : 15 - 16
  • [29] Inversion of experimental multi-frequency data using the contrast source inversion method
    Bloemenkamp, RF
    Abubakar, A
    van den Berg, PM
    INVERSE PROBLEMS, 2001, 17 (06) : 1611 - 1622
  • [30] SPECTRAL DECOMPOSITION AND AVO-BASED AMPLITUDE DECOMPOSITION: A COMPARATIVE STUDY AND APPLICATION
    Farfour, Mohammed
    Yoon, Wang Jung
    Gaci, Said
    Ouabed, Noureddine
    JOURNAL OF SEISMIC EXPLORATION, 2020, 29 (03): : 261 - 273