Physics-driven self-supervised learning system for seismic velocity inversion

被引:0
|
作者
Liu, Bin [1 ,2 ,3 ]
Jiang, Peng [4 ]
Wang, Qingyang [4 ]
Ren, Yuxiao [2 ]
Yang, Senlin [1 ,4 ]
Cohn, Anthony G. [2 ,5 ]
机构
[1] Shandong Univ, Geotech & Struct Engn Res Ctr, Jinan, Peoples R China
[2] Shandong Univ, Sch Civil Engn, Jinan, Peoples R China
[3] Shandong Univ, Data Sci Inst, Jinan, Peoples R China
[4] Shandong Univ, Sch Qilu Transportat, Jinan, Peoples R China
[5] Univ Leeds, Sch Comp, Leeds, England
基金
中国国家自然科学基金;
关键词
WAVE-FORM INVERSION; NEURAL-NETWORK; MODEL; FRAMEWORK;
D O I
10.1190/GEO2021-0302.1
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Seismic velocity inversion plays a vital role in various applied seismology processes. A series of deep learning methods have been developed that rely purely on manually provided labels for supervision; however, their performances depend heavily on us-ing large training data sets with corresponding velocity models. Because no physical laws are used in the training phase, it is usually challenging to generalize trained neural networks to a new data domain. To mitigate these issues, we have embedded a seismic forward modeling step at the end of a network to re -map the inversion result back to seismic data and thus train the neural network through self-supervised loss, i.e., the misfit be-tween the network input and output. As a result, we eliminate the need for many labeled velocity models, and physical laws are introduced when back-propagating gradients through the seismic forward modeling step. We verify the effectiveness of our approach through comprehensive experiments on syn-thetic data sets, where self-supervised learning outperforms the fully supervised approach, which accesses much more la-beled data. The superior performance is even more significant when compared with a new data domain that has velocity mod-els with faults and more geologic layers. Finally, in case of un-known and more complex data types, we develop a network -constrained full-waveform inversion (FWI) method. This method refines the initial prediction of the network by iteratively optimizing network parameters other than the velocity model, as found with the conventional FWI method, and demonstrates clear advantages in terms of interface and velocity accuracy. With these measures (self-supervised learning and network -con-strained FWI), our physics-driven self-supervised learning sys-tem successfully mitigates issues such as the dependence on large labeled data sets, the absence of physical laws, and the difficulty in adapting to new data domains.
引用
收藏
页码:R145 / R161
页数:17
相关论文
共 50 条
  • [1] Self-supervised, active learning seismic full-waveform inversion
    Colombo, Daniele
    Turkoglu, Ersan
    Sandoval-Curiel, Ernesto
    Alyousuf, Taqi
    GEOPHYSICS, 2024, 89 (02) : U31 - U52
  • [2] Self-Supervised Deep Learning for Nonlinear Seismic Full Waveform Inversion
    Gao, Zhaoqi
    Yang, Wei
    Li, Chuang
    Li, Feipeng
    Wang, Qingzhen
    Ding, Jicai
    Gao, Jinghuai
    Xu, Zongben
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [3] From seismic traces to reservoir properties: Physics-driven inversion
    Stanford University, Stanford, CA, United States
    不详
    Leading Edge, 2008, 4 (456-461):
  • [4] A Physics-Driven Deep Learning Network for Subsurface Inversion
    Jin, Yuchen
    Wu, Xuqing
    Chen, Jiefu
    Huang, Yueqin
    2019 UNITED STATES NATIONAL COMMITTEE OF URSI NATIONAL RADIO SCIENCE MEETING (USNC-URSI NRSM), 2019,
  • [5] Physics-Driven Deep Learning Inversion with Application to Magnetotelluric
    Liu, Wei
    Wang, He
    Xi, Zhenzhu
    Zhang, Rongqing
    Huang, Xiaodi
    REMOTE SENSING, 2022, 14 (13)
  • [6] Physically Driven Self-Supervised Learning and its Applications in Geophysical Inversion
    Yang, Yang
    Wang, Zhuo
    Liu, Naihao
    Wang, Jingyu
    Pang, Shanmin
    Liu, Rongchang
    Gao, Jinghuai
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2024, 62 : 1 - 11
  • [7] Inversion-based multistage seismic data processing with physics-driven priors
    Kumar R.
    Kamil Y.
    Bilsby P.
    Narayan A.
    Mahdad A.
    Brouwer W.G.
    Misbah A.
    Vassallo M.
    Zarkhidze A.
    Watterson P.
    Leading Edge, 2023, 42 (01): : 52 - 60
  • [8] Physics-driven deep-learning for marine CSEM data inversion
    Liang, Hao
    Gao, Ruoyun
    Yin, Changchun
    Su, Yang
    He, Zhanxiang
    Liu, Yunhe
    JOURNAL OF APPLIED GEOPHYSICS, 2024, 229
  • [9] Highly-Accelerated High-Resolution Multi-Echo fMRI Using Self-Supervised Physics-Driven Deep Learning Reconstruction
    Gulle, Merve
    Demirel, Omer Burak
    Dowdle, Logan
    Moeller, Steen
    Yacoub, Essa
    Ugurbil, Kamil
    Akcakaya, Mehmet
    2023 IEEE 9TH INTERNATIONAL WORKSHOP ON COMPUTATIONAL ADVANCES IN MULTI-SENSOR ADAPTIVE PROCESSING, CAMSAP, 2023, : 196 - 200
  • [10] Self-adaptive physics-driven deep learning for seismic wave modeling in complex topography
    Ding, Yi
    Chen, Su
    Li, Xiaojun
    Wang, Suyang
    Luan, Shaokai
    Sun, Hao
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2023, 123