Estimating relative diffusion from 3D micro-CT images using CNNs

Stephan Gärttner , Florian Frank , Fabian Woller , Andreas Meier , Nadja Ray
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Abstract

In recent years, convolutional neural networks (CNNs) have demonstrated their effectiveness in predicting bulk parameters, such as effective diffusion, directly from pore-space geometries. CNNs offer significant computational advantages over traditional methods, making them particularly appealing. However, the current literature primarily focuses on fully saturated porous media, while the partially saturated case is also of high interest for various applications. Partially saturated conditions present more complex geometries for diffusive transport, making the prediction task more challenging. Traditional CNNs tend to lose robustness and accuracy with lower saturation rates. In this paper, we overcome this limitation by introducing a CNN, which conveniently fuses diffusion prediction and a well-established morphological model that describes phase distributions in partially saturated porous media. We demonstrate the ability of our CNN to perform accurate predictions of relative diffusion directly from full pore-space geometries. Finally, we compare our predictions with well-established relations such as the one by Millington–Quirk.

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利用 CNN 从三维显微 CT 图像中估算相对弥散度
近年来,卷积神经网络(CNN)在直接从孔隙空间几何图形预测有效扩散等块体参数方面显示了其有效性。与传统方法相比,卷积神经网络具有显著的计算优势,因此特别具有吸引力。然而,目前的文献主要关注完全饱和的多孔介质,而部分饱和的情况在各种应用中也具有很高的关注度。部分饱和条件下的扩散传输呈现出更复杂的几何形状,使得预测任务更具挑战性。传统的 CNN 在饱和度较低时往往会失去鲁棒性和准确性。在本文中,我们通过引入 CNN 克服了这一局限性,CNN 将扩散预测与描述部分饱和多孔介质中相分布的成熟形态学模型方便地融合在一起。我们展示了我们的 CNN 直接从全孔隙空间几何图形对相对扩散进行精确预测的能力。最后,我们将我们的预测与 MillingtonQuirk 等人的成熟关系进行了比较。
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