Physics Informed Deep Neural Net Inverse Modeling for Estimating Model Parameters in Permeable Porous Media Flows

Author:

Pashaei Kalajahi Amin1,Perez-Raya Isaac2,D'Souza Roshan M1

Affiliation:

1. Department of Mechanical Engineering, University of Wisconsin-Milwaukee, Milwaukee, WI 53201

2. Department of Mechanical Engineering, Rochester Institute of Technology, Rochester, NY 14623

Abstract

Abstract We present a method that combines a physics-informed deep neural network and Stokes' second problem to estimate the porosity and the permeability of a porous medium. Particularly, we investigate the accuracy of physics-informed deep neural networks in predicting the hidden quantities of interest, such as velocity and unknown parameters, including permeability and porosity, by employing different network architectures and different sizes of input data sets. The employed neural network is jointly trained to match the essential class of physical laws governing fluid motion in porous media (Darcy's law and mass conservation) and the fluid velocities in the domain or region of interest. Therefore, the described approach allows the estimation of hidden quantities of interest. This strategy conditions the neural network to honor physical principles. Thus, the model adapts to fit best the data provided while striving to respect the governing physical laws. Results show that the proposed approach achieves significant accuracy in estimating the velocity, permeability, and porosity of the media, even when the neural network is trained by a relatively small input data-set. Also, results demonstrate that using the optimal neural network architecture is indispensable to increase the porosity and permeability prediction accuracy.

Publisher

ASME International

Subject

Mechanical Engineering

Reference55 articles.

1. Temporal Dynamics of Preferential Flow to a Subsurface Drain;Soil Sci. Soc. Am. J.,2001

2. Long-Term Persistence of Oil From the Exxon Valdez Spill in Two-Layer Beaches;Nat. Geosci.,2010

3. Flow Along and Across Glass-Fiber Wicks: Testing of Permeability Models Through Experiments and Simulations;AIChE J.,2018

4. Underground Sequestration of Carbon Dioxide–a Viable Greenhouse Gas Mitigation Option;Energy,2005

5. Experimental Ageing of Oolitic Limestones Under CO2 Storage Conditions: Petrographical and Chemical Evidence;Chem. Geol.,2009

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