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Bayesian Learning of Gas Transport in Three-Dimensional Fracture Networks

Authors :
Shi, Yingqi
Berry, Donald J.
Kath, John
Lodhy, Shams
Ly, An
Percus, Allon G.
Hyman, Jeffrey D.
Moran, Kelly
Strait, Justin
Sweeney, Matthew R.
Viswanathan, Hari S.
Stauffer, Philip H.
Source :
Computers and Geosciences 192, 105700 (2024)
Publication Year :
2023

Abstract

Modeling gas flow through fractures of subsurface rock is a particularly challenging problem because of the heterogeneous nature of the material. High-fidelity simulations using discrete fracture network (DFN) models are one methodology for predicting gas particle breakthrough times at the surface, but are computationally demanding. We propose a Bayesian machine learning method that serves as an efficient surrogate model, or emulator, for these three-dimensional DFN simulations. Our model trains on a small quantity of simulation data and, using a graph/path-based decomposition of the fracture network, rapidly predicts quantiles of the breakthrough time distribution. The approach, based on Gaussian Process Regression (GPR), outputs predictions that are within 20-30% of high-fidelity DFN simulation results. Unlike previously proposed methods, it also provides uncertainty quantification, outputting confidence intervals that are essential given the uncertainty inherent in subsurface modeling. Our trained model runs within a fraction of a second, which is considerably faster than other methods with comparable accuracy and multiple orders of magnitude faster than high-fidelity simulations.

Details

Database :
arXiv
Journal :
Computers and Geosciences 192, 105700 (2024)
Publication Type :
Report
Accession number :
edsarx.2306.03416
Document Type :
Working Paper
Full Text :
https://doi.org/10.1016/j.cageo.2024.105700