Physics Informed Deep Learning for Transport in Porous Media. Buckley Leverett Problem
Cedric G. Fraces, Adrien Papaioannou, Hamdi Tchelepi

TL;DR
This paper introduces a physics-informed deep learning approach using adversarial networks and physics regularization to accurately simulate porous media transport problems with limited data, capturing physical laws and uncertainties.
Contribution
The paper presents a novel hybrid physics-based machine learning method that combines adversarial neural networks with physics regularization for reservoir modeling.
Findings
Accurately simulates Buckley-Leverett transport with limited data
Learns governing parameters and provides uncertainty quantification
Applicable to forward and inverse physical problems
Abstract
We present a new hybrid physics-based machine-learning approach to reservoir modeling. The methodology relies on a series of deep adversarial neural network architecture with physics-based regularization. The network is used to simulate the dynamic behavior of physical quantities (i.e. saturation) subject to a set of governing laws (e.g. mass conservation) and corresponding boundary and initial conditions. A residual equation is formed from the governing partial-differential equation and used as part of the training. Derivatives of the estimated physical quantities are computed using automatic differentiation algorithms. This allows the model to avoid overfitting, by reducing the variance and permits extrapolation beyond the range of the training data including uncertainty implicitely derived from the distribution output of the generative adversarial networks. The approach is used to…
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Taxonomy
TopicsModel Reduction and Neural Networks · Seismic Imaging and Inversion Techniques · Generative Adversarial Networks and Image Synthesis
