Database and code to the paper: A multiscale CNN-based intrinsic permeability prediction in deformable porous media

This work in the related paper introduces a novel application for predicting the macroscopic intrinsic permeability tensor in deformable porous media, using a limited set of micro-CT images of real microgeometries. The primary goal is to develop an efficient, machine-learning (ML)-based method that overcomes the limitations of traditional permeability estimation techniques, which often rely on time-consuming experiments or computationally expensive fluid dynamics simulations. The novelty of this work lies in leveraging Convolutional Neural Networks (CNN) to predict pore-fluid flow behavior under deformation and anisotropic flow conditions. Particularly, the described approach employs binarized CT images of porous micro-structure as inputs to predict the symmetric second-order permeability tensor, a critical parameter in continuum porous media flow modeling. The methodology comprises four key steps: (1) constructing a dataset of CT images from Bentheim sandstone at different volumetric strain levels; (2) performing pore-scale simulations of single-phase flow using the lattice Boltzmann method (LBM) to generate permeability data; (3) training the CNN model with the processed CT images as inputs and permeability tensors as outputs; and (4) exploring techniques to improve model generalization, including data augmentation and alternative CNN architectures. Examples are provided to demonstrate the CNN’s capability to accurately predict the permeability tensor, a crucial parameter in various disciplines such as geotechnical engineering, hydrology, and material science.

Data and Resources

Cite this as

Heider, Yousef, Aldakheel, Fadi, Ehlers, Wolfgang (2024). Dataset: Database and code to the paper: A multiscale CNN-based intrinsic permeability prediction in deformable porous media. https://doi.org/10.25835/xrii0m6f

DOI retrieved: October 1, 2024

Additional Info

Field Value
Imported on November 28, 2024
Last update November 28, 2024
License CC-BY-NC-3.0
Source https://data.uni-hannover.de/dataset/data_and_ml_code
Author Heider, Yousef
Given Name Yousef
Family Name Heider
More Authors
Aldakheel, Fadi
Ehlers, Wolfgang
Author Email Heider, Yousef
Maintainer Yousef Heider
Maintainer Email Yousef Heider
Source Creation 01 October, 2024, 15:09 PM (UTC+0000)
Source Modified 01 October, 2024, 16:38 PM (UTC+0000)
Machine learning 40
Multiscale modeling 30
Porous Media Theory 30