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Seismic Monitoring of Greenhouse Gases via Neural Network Full article

Journal Lecture Notes in Computer Science
ISSN: 0302-9743 , E-ISSN: 1611-3349
Output data Year: 2026, Volume: 16196, Pages: 395-407 Pages count : 13 DOI: 10.1007/978-3-032-13127-0_28
Tags Deep Learning, Monitoring CO2, Seismic modelling, fluid-flow
Authors Gondyul Elena 1 , Lisitsa Vadim 1 , Vishnevsky Dmitry 1
Affiliations
1 Sobolev Institute of Mathematics SB RAS, Novosibirsk, Russia

Funding (1)

1 Russian Science Foundation 22-11-00004-П

Abstract: Seismic monitoring of the accumulation and burial of greenhouse gases in a reservoir is attracting increasing attention due to its relevance to mitigating the effects of climate change. Changes in properties in the reservoir during gas injection demonstrate how seismic data changes. Among the seismic surveys, specialists are modeling the propagation of seismic wave fields for seismic monitoring. However, such methods are too resource-intensive, especially when solving for a large number of known velocity models and the number of sources in the acquisition system. Therefore, new effective algorithms for tracking changes in seismic data are needed. The work uses a neural network, which is used in two stages: to refine and obtain seismograms at the next step of seismic monitoring using a coarse computational grid and to suppress numerical dispersion. The developed algorithm makes it possible to accelerate classical seismic monitoring up to 3 times, taking into account the physics of multiphase flows.
Cite: Gondyul E. , Lisitsa V. , Vishnevsky D.
Seismic Monitoring of Greenhouse Gases via Neural Network
Lecture Notes in Computer Science. 2026. V.16196. P.395-407. DOI: 10.1007/978-3-032-13127-0_28 OpenAlex
Dates:
Published online: Jan 2, 2026
Identifiers:
OpenAlex: W7117990357
Citing: Пока нет цитирований
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