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arxiv: 2310.04430 · v1 · pith:SPGFY363new · submitted 2023-09-24 · ⚛️ physics.geo-ph · cs.CV· cs.LG

Joint inversion of Time-Lapse Surface Gravity and Seismic Data for Monitoring of 3D CO₂ Plumes via Deep Learning

classification ⚛️ physics.geo-ph cs.CVcs.LG
keywords inversiondeepjointapproachdatalearning-basedmonitoringdensity
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We introduce a fully 3D, deep learning-based approach for the joint inversion of time-lapse surface gravity and seismic data for reconstructing subsurface density and velocity models. The target application of this proposed inversion approach is the prediction of subsurface CO2 plumes as a complementary tool for monitoring CO2 sequestration deployments. Our joint inversion technique outperforms deep learning-based gravity-only and seismic-only inversion models, achieving improved density and velocity reconstruction, accurate segmentation, and higher R-squared coefficients. These results indicate that deep learning-based joint inversion is an effective tool for CO$_2$ storage monitoring. Future work will focus on validating our approach with larger datasets, simulations with other geological storage sites, and ultimately field data.

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