Porous Structure Reconstruction Using Convolutional Neural Networks
Date
Authors
Wang, Yuzhu
Arns, Christoph
Rahman, Sheik S.
Arns, Ji-Youn
Journal Title
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Volume Title
Publisher
Springer Verlag
Abstract
The three-dimensional high-resolution imaging of rock samples is the basis
for pore-scale characterization of reservoirs. Micro X-ray computed tomography (µCT) is considered the most direct means of obtaining the three-dimensional inner
structure of porous media without deconstruction. The micrometer resolution ofµ-CT,
however, limits its application in the detection of small structures such as nanochannels, which are critical for fluid transportation. An effective strategy for solving this
problem is applying numerical reconstruction methods to improve the resolution of
the µ-CT images. In this paper, a convolutional neural network reconstruction method
is introduced to reconstruct high-resolution porous structures based on low-resolution
µ-CT images and high-resolution scanning electron microscope (SEM) images. The
proposed method involves four steps. First, a three-dimensional low-resolution tomographic image of a rock sample is obtained by µ-CT scanning. Next, one or more
sections in the rock sample are selected for scanning by SEM to obtain high-resolution
two-dimensional images. The high-resolution segmented SEM images and their corresponding low-resolution µ-CT slices are then applied to train a convolutional neural
network (CNN) model. Finally, the trained CNN model is used to reconstruct the
entire low-resolution three-dimensional µ-CT image. Because the SEM images are
segmented and have a higher resolution than the µ-CT image, this algorithm integrates
the super-resolution and segmentation processes. The input data are low-resolution µCT images, and the output data are high-resolution segmented porous structures. The experimental results show that the proposed method can achieve state-of-the-art performance.
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Mathematical Geosciences
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Restricted until
2037-12-31
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