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    DeePore: A deep learning workflow for rapid and comprehensive characterization of porous materials

    , Article Advances in Water Resources ; Volume 146 , 2020 Rabbani, A ; Babaei, M ; Shams, R ; Wang, Y. D ; Chung, T ; Sharif University of Technology
    Elsevier Ltd  2020
    Abstract
    DeePore2 is a deep learning workflow for rapid estimation of a wide range of porous material properties based on the binarized micro–tomography images. By combining naturally occurring porous textures we generated 17,700 semi–real 3–D micro–structures of porous geo–materials with size of 2563 voxels and 30 physical properties of each sample are calculated using physical simulations on the corresponding pore network models. Next, a designed feed–forward convolutional neural network (CNN) is trained based on the dataset to estimate several morphological, hydraulic, electrical, and mechanical characteristics of the porous material in a fraction of a second. In order to fine–tune the CNN design,...