CELGMay 19, 2022

Uncertainty Quantification for Transport in Porous media using Parameterized Physics Informed neural Networks

arXiv:2205.12730v18 citationsh-index: 57
Originality Incremental advance
AI Analysis

This addresses uncertainty quantification for reservoir engineers, but it is incremental as it builds on existing PINN methods with parameterization.

The paper tackled uncertainty quantification in reservoir engineering by developing a Parameterized Physics-Informed Neural Network (P-PINN) approach for immiscible two-phase flow in porous media, showing it produces solutions matching ensemble realizations and stochastic moments while competing with traditional stochastic sampling methods.

We present a Parametrization of the Physics Informed Neural Network (P-PINN) approach to tackle the problem of uncertainty quantification in reservoir engineering problems. We demonstrate the approach with the immiscible two phase flow displacement (Buckley-Leverett problem) in heterogeneous porous medium. The reservoir properties (porosity, permeability) are treated as random variables. The distribution of these properties can affect dynamic properties such as the fluids saturation, front propagation speed or breakthrough time. We explore and use to our advantage the ability of networks to interpolate complex high dimensional functions. We observe that the additional dimensions resulting from a stochastic treatment of the partial differential equations tend to produce smoother solutions on quantities of interest (distributions parameters) which is shown to improve the performance of PINNS. We show that provided a proper parameterization of the uncertainty space, PINN can produce solutions that match closely both the ensemble realizations and the stochastic moments. We demonstrate applications for both homogeneous and heterogeneous fields of properties. We are able to solve problems that can be challenging for classical methods. This approach gives rise to trained models that are both more robust to variations in the input space and can compete in performance with traditional stochastic sampling methods.

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