Data-driven low-frequency signal recovery using deep-learning predictions in full-waveform inversion

被引:0
|
作者
Fang J. [1 ,2 ,3 ]
Zhou H. [1 ]
Elita Li Y. [2 ,3 ]
Zhang Q. [4 ]
Wang L. [1 ]
Sun P. [5 ]
Zhang J. [5 ]
机构
[1] China University of Petroleum-Beijing, State Key Laboratory of Petroleum Resources and Prospecting, Key Laboratory of Geophysical Exploration of Cnpc, Changping, Beijing
[2] National University of Singapore, Department of Civil and Environmental Engineering, Singapore
[3] National University of Singapore, Department of Civil and Environmental Engineering, Singapore
[4] Chinese Academy of Sciences, Institute of Geodesy and Geophysics, Wuhan
[5] Bgp Research and Development Center of Cnpc, Zhuozhou, Hebei
来源
Zhou, Hui (huizhou@cup.edu.cn) | 1600年 / Society of Exploration Geophysicists卷 / 85期
基金
中国国家自然科学基金;
关键词
full-waveform inversion; machine learning; reconstruction;
D O I
10.1190/geo2020-0159.1
中图分类号
学科分类号
摘要
The lack of low-frequency signals in seismic data makes the full-waveform inversion (FWI) procedure easily fall into local minima leading to unreliable results. To reconstruct the missing low-frequency signals more accurately and effectively, we have developed a data-driven low-frequency recovery method based on deep learning from high-frequency signals. In our method, we develop the idea of using a basic data patch of seismic data to build a local data-driven mapping in low-frequency recovery. Energy balancing and data patches are used to prepare high- and low-frequency data for training a convolutional neural network (CNN) to establish the relationship between the high- and low-frequency data pairs. The trained CNN then can be used to predict low-frequency data from high-frequency data. Our CNN was trained on the Marmousi model and tested on the overthrust model, as well as field data. The synthetic experimental results reveal that the predicted low-frequency data match the true low-frequency data very well in the time and frequency domains, and the field results show the successfully extended low-frequency spectra. Furthermore, two FWI tests using the predicted data demonstrate that our approach can reliably recover the low-frequency data. © 2020 Society of Exploration Geophysicists.
引用
收藏
页码:A37 / A43
页数:6
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