Learning Pore-scale Multiphase Flow from 4D Velocimetry
About
Multiphase flow in porous media underpins subsurface energy and environmental technologies, including geological CO$_2$ storage and underground hydrogen storage, yet pore-scale dynamics in realistic three-dimensional materials remain difficult to characterize and predict. Here we introduce a multimodal learning framework that infers multiphase pore-scale flow directly from time-resolved four-dimensional (4D) micro-velocimetry measurements. The model couples a graph network simulator for Lagrangian tracer-particle motion with a 3D U-Net for voxelized interface evolution. The imaged pore geometry serves as a boundary constraint to the flow velocity and the multiphase interface predictions, which are coupled and updated iteratively at each time step. Trained autoregressively on experimental sequences in capillary-dominated conditions ($Ca\approx10^{-6}$), the learned surrogate captures transient, nonlocal flow perturbations and abrupt interface rearrangements (Haines jumps) over rollouts spanning seconds of physical time, while reducing hour-to-day--scale direct numerical simulations to seconds of inference. By providing rapid, experimentally informed predictions, the framework opens a route to ''digital experiments'' to replicate pore-scale physics observed in multiphase flow experiments, offering an efficient tool for exploring injection conditions and pore-geometry effects relevant to subsurface carbon and hydrogen storage.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Fluid Topology Prediction | Exp.α (train) | Volume Error (%)17.4 | 2 | |
| Fluid Topology Prediction | EXP (test) | Volume Error (%)18.7 | 2 | |
| Particle Velocity Prediction | Exp.α (train) | Velocity MAE (µm/s)0.707 | 2 | |
| Particle Velocity Prediction | EXP (test) | Velocity MAE (µm/s)0.738 | 2 |