Multi-fidelity Fourier Neural Operator for Fast Modeling of Large-Scale Geological Carbon Storage
Hewei Tang, Qingkai Kong, Joseph P. Morris

TL;DR
This paper introduces a multi-fidelity Fourier neural operator approach to efficiently model large-scale geological carbon storage, reducing data costs while maintaining accuracy across different discretizations and models.
Contribution
The paper presents a novel multi-fidelity FNO method that improves large-scale GCS modeling efficiency and transferability between datasets with different fidelities and discretizations.
Findings
Achieves 81% reduction in data generation costs for accurate predictions.
Demonstrates effective transfer learning across different discretizations and models.
Predicts pressure fields with reasonable accuracy even with limited high-fidelity data.
Abstract
Deep learning-based surrogate models have been widely applied in geological carbon storage (GCS) problems to accelerate the prediction of reservoir pressure and CO2 plume migration. Large amounts of data from physics-based numerical simulators are required to train a model to accurately predict the complex physical behaviors associated with this process. In practice, the available training data are always limited in large-scale 3D problems due to the high computational cost. Therefore, we propose to use a multi-fidelity Fourier neural operator (FNO) to solve large-scale GCS problems with more affordable multi-fidelity training datasets. FNO has a desirable grid-invariant property, which simplifies the transfer learning procedure between datasets with different discretization. We first test the model efficacy on a GCS reservoir model being discretized into 110k grid cells. The…
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Taxonomy
TopicsReservoir Engineering and Simulation Methods · CO2 Sequestration and Geologic Interactions · Enhanced Oil Recovery Techniques
