Seismic monitoring of CO2 plume dynamics using ensemble Kalman filtering

TitleSeismic monitoring of CO2 plume dynamics using ensemble Kalman filtering
Publication TypePresentation
Year of Publication2024
AuthorsGrant Bruer, Abhinav Prakash Gahlot, Edmond Chow, Felix J. Herrmann
KeywordsBayesian inference, data assimilation, ensemble Kalman filter, FWI, Imaging, Inverse problems, ML4SEISMIC, RTM, SLIM, two-phase flow, Uncertainty quantification
Abstract

Monitoring CO 2 injected and stored in subsurface reservoirs is critical for avoiding failure scenarios and enables real-time optimization of CO 2 injection rates. Sequential Bayesian data assimilation (DA) is a statistical method for combining information over time from multiple sources to estimate a hidden state, such as the spread of the subsurface CO 2 plume. An example of scalable and efficient sequential Bayesian DA is the ensemble Kalman filter (EnKF). We improve upon existing DA literature in the seismic-CO 2 monitoring domain by applying this scalable DA algorithm to a high-dimensional CO 2 reservoir using two-phase flow dynamics and time-lapse full waveform seismic data with a realistic surface-seismic survey design. We show more accurate estimates of the CO 2 saturation field using the EnKF compared to using either the seismic data or the fluid physics alone. Furthermore, we test a range of values for the EnKF hyperparameters and give guidance on their selection for seismic CO 2 reservoir monitoring.

URLhttps://slim.gatech.edu/Publications/Public/Conferences/ML4SEISMIC/2024/bruer2024ML4SEISMICsmp
Citation Keybruer2024ML4SEISMICsmp