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

Author:

Fang Jinwei1ORCID,Zhou Hui2ORCID,Elita Li Yunyue3,Zhang Qingchen4ORCID,Wang Lingqian2,Sun Pengyuan5,Zhang Jianlei5

Affiliation:

1. China University of Petroleum-Beijing, State Key Laboratory of Petroleum Resources and Prospecting, Key Laboratory of Geophysical Exploration of CNPC, Changping 102249, Beijing, China and National University of Singapore, Department of Civil and Environmental Engineering, 117575, Singapore..

2. China University of Petroleum-Beijing, State Key Laboratory of Petroleum Resources and Prospecting, Key Laboratory of Geophysical Exploration of CNPC, Changping 102249, Beijing, China.(corresponding author); .

3. National University of Singapore, Department of Civil and Environmental Engineering, 117575, Singapore..

4. Chinese Academy of Sciences, Institute of Geodesy and Geophysics, Wuhan 430077, China..

5. BGP Research and Development Center of CNPC, Zhuozhou, Hebei 072751, China..

Abstract

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.

Funder

Research of Novel Method and Technology of Geophysical Prospecting, CNPC

National Key R $\$ D Program of China

National Natural Science Foundation of China

Publisher

Society of Exploration Geophysicists

Subject

Geochemistry and Petrology,Geophysics

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