Predicting Subsurface CO2 Saturation using Late Fusion of Seismic and Streaming Well Data
| Title | Predicting Subsurface CO2 Saturation using Late Fusion of Seismic and Streaming Well Data |
| Publication Type | Conference |
| Year of Publication | 2025 |
| Authors | Henriksson, V, Abhinav Prakash Gahlot, Felix J. Herrmann |
| Conference Name | ML4SEISMIC Partners Meeting |
| Month | 11 |
| Keywords | Amortized Variational Inference, Bayesian inference, conditional normalizing flows, data assimilation, deep learning, digital twin, GCS, Imaging, Inverse problems, late fusion, ML4SEISMIC, permeability, reservoir simulation, RTM, SLIM, Summary Statistics, Uncertainty quantification, WISE |
| Abstract | Determining subsurface flow of CO2 in porous rock formations is a challenging task especially when it involves intergration of multimodal data that are collected at disparate timescales. In this work, we investigate how data fushion can be used to integrate multimodal data consisting on infrequently collected active-source seismic surveys and continuous streaming data of saturation measurements collected at monitoring wells. For the purpose, we propose a data fusion framework based on late fusion, which combines seismic images, computed from seismic surveys, with time-series data collected at the wells. By integrating the spatial information from seismic data with high-resolution but sparce spatial-temporal patterns from wells, we aim to better approximate the complex CO2 flow patterns. |
| URL | https://slim.gatech.edu/Publications/Public/Conferences/ML4SEISMIC/2025/henriksson2025ML4SEISMICpss |
| Citation Key | henriksson2025ML4SEISMICpss |
