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arxiv: 2209.02850 · v1 · pith:AZTRJPOMnew · submitted 2022-09-06 · 💻 cs.LG · physics.geo-ph

Inversion of Time-Lapse Surface Gravity Data for Detection of 3D CO₂ Plumes via Deep Learning

classification 💻 cs.LG physics.geo-ph
keywords deepgravitymonitoringdatalearningproposedsubsurfacesurface
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We introduce three algorithms that invert simulated gravity data to 3D subsurface rock/flow properties. The first algorithm is a data-driven, deep learning-based approach, the second mixes a deep learning approach with physical modeling into a single workflow, and the third considers the time dependence of surface gravity monitoring. The target application of these proposed algorithms is the prediction of subsurface CO$_2$ plumes as a complementary tool for monitoring CO$_2$ sequestration deployments. Each proposed algorithm outperforms traditional inversion methods and produces high-resolution, 3D subsurface reconstructions in near real-time. Our proposed methods achieve Dice scores of up to 0.8 for predicted plume geometry and near perfect data misfit in terms of $\mu$Gals. These results indicate that combining 4D surface gravity monitoring with deep learning techniques represents a low-cost, rapid, and non-intrusive method for monitoring CO$_2$ storage sites.

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