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Stochastic reconstruction of 3D porous media from 2D images using generative adversarial networks

机译:使用生成对抗网络从2D图像的三维多孔介质随机重建

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Micro computed tomography (CT) provides petrophysics laboratories with the ability to image three dimensional porous media at pore scale. However, evaluating flow properties requires the acquisition of a large number of representative images, which is often unfeasible. Stochastic reconstruction methods are algorithms able to generate novel, realistic rock images from a small sample, thus avoiding a large acquisition process. A more convenient approach would use only two dimensional images, replacing 3D scans with images of the rock cuttings made during the drilling. This would extend the technique to media having pores smaller than the resolution of the micro-CT, but that can be imaged by microscopy. We introduce a novel method for 2D-to-3D reconstruction of the structure of porous media by applying generative adversarial neural networks. We compare several measures of pore morphology between simulated and acquired images. Experiments include bead pack, Berea sandstone, and Ketton limestone images. Results show that our GANs-based method can reconstruct three-dimensional images of porous media at different scales that are representative of the morphology of the original images. Also, compared to classical stochastic methods of image reconstruction, the generation of multiple images is much faster. (c) 2020ElsevierB.V. Allrightsreserved.
机译:微计算机断层扫描(CT)提供岩石物理学实验室,能够在孔秤上以三维多孔介质形象。然而,评估流程属性需要获取大量代表性的图像,这通常是不可行的。随机重建方法是能够从小样本产生新颖,现实岩图像的算法,从而避免了大的采集过程。一种更方便的方法将仅使用二维图像,用在钻井期间制造的岩石切割图像替换3D扫描。这将使该技术扩展到具有小于微型CT的分辨率小的介质,但是可以通过显微镜进行成像。通过应用生成的对抗性神经网络介绍了一种新的2D-3D重建的新方法,用于多孔介质的结构。我们比较模拟和获取图像之间的若干孔形态措施。实验包括珠子包,Berea砂岩和Ketton LimeStone图像。结果表明,我们的GANS的方法可以在代表原始图像的形态的不同尺度下重建多孔介质的三维图像。而且,与经典随机的图像重建方法相比,多个图像的产生更快。 (c)2020elsevierb.v。版权所有。

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