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Monitoring CO2 in Seismic Data Using Neural Network Full article

Conference Computational Science and Its Applications
30 Jun - 3 Jul 2025 , Istanbul
Source Computational Science and Its Applications (ICCSA 2025 Workshops) : Proceedings
Compilation, Springer Cham. Switzerland.2026. 462 c. ISBN 978-3-031-97596-7.
Journal Lecture Notes in Computer Science
ISSN: 0302-9743 , E-ISSN: 1611-3349
Output data Year: 2025, Volume: 15888, Pages: 330-342 Pages count : 13 DOI: 10.1007/978-3-031-97596-7_22
Tags Deep Learning, Monitoring CO2, Seismic modeling
Authors Gondyul Elena 1 , Lisitsa Vadim 1 , Vishnevsky Dmitry 1
Affiliations
1 Sobolev Institute of Mathematics SB RAS

Funding (1)

1 Russian Science Foundation 22-11-00004-П

Abstract: Accurate monitoring of .CO2 migration in subsurface reservoirs is critical for understanding the behavior of injected greenhouse gases. This study proposes a neural network-based approach to improve the accuracy of seismograms used in time-lapse seismic monitoring. The method consists of two stages: first, a neural network predicts changes in seismograms corresponding to velocity model variations between consecutive monitoring steps, allowing for the approximation of spatio-temporal dependencies and facilitating wavefield extrapolation. The seismograms at this stage are generated using a coarse computational grid to reduce computational costs. In the second stage, a neural network is employed to mitigate numerical dispersion in the predicted seismogram differences generated via classical modeling under the assumption of an unchanged velocity model. The trained network is then applied to all seismograms obtained in the first stage. This approach enables a more precise estimation of .CO2 migration patterns, providing valuable insights into subsurface dynamics. The proposed approach significantly accelerates seismic modeling and its application to monitoring greenhouse gases in reservoir rocks.
Cite: Gondyul E. , Lisitsa V. , Vishnevsky D.
Monitoring CO2 in Seismic Data Using Neural Network
In compilation Computational Science and Its Applications (ICCSA 2025 Workshops) : Proceedings. – Springer Cham., 2025. – Т.Part III. – C.330-342. – ISBN 978-3-031-97596-7. DOI: 10.1007/978-3-031-97596-7_22 Scopus OpenAlex
Dates:
Published print: May 28, 2025
Published online: May 28, 2025
Identifiers:
Scopus: 2-s2.0-105010829547
OpenAlex: W4412059130
Citing: Пока нет цитирований
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