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首页> 外文期刊>PHYSICAL REVIEW E >Versatile and efficient pore network extraction method using marker-based watershed segmentation
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Versatile and efficient pore network extraction method using marker-based watershed segmentation

机译:基于标记的流域分割的多功能和高效的孔隙网络提取方法

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摘要

Obtaining structural information from tomographic images of porous materials is a critical component of porous media research. Extracting pore networks is particularly valuable since it enables pore network modeling simulations which can be useful for a host of tasks from predicting transport properties to simulating performance of entire devices. This work reports an efficient algorithm for extracting networks using only standard image analysis techniques. The algorithm was applied to several standard porous materials ranging from sandstone to fibrous mats, and in all cases agreed very well with established or known values for pore and throat sizes, capillary pressure curves, and permeability. In the case of sandstone, the present algorithm was compared to the network obtained using the current state-of-the-art algorithm, and very good agreement was achieved. Most importantly, the network extracted from an image of fibrous media correctly predicted the anisotropic permeability tensor, demonstrating the critical ability to detect key structural features. The highly efficient algorithm allows extraction on fairly large images of 5003 voxels in just over 200 s. The ability for one algorithm to match materials as varied as sandstone with 20% porosity and fibrous media with 75% porosity is a significant advancement. The source code for this algorithm is provided.
机译:获得多孔材料的断层图像的结构信息是多孔介质研究的关键组成部分。提取孔网络是特别有价值的,因为它使孔网络建模模拟能够对许多任务来预测运输属性来模拟整个设备的性能。这项工作报告了一种仅使用标准图像分析技术提取网络的有效算法。将该算法应用于几种标准多孔材料,从砂岩到纤维垫,并且在所有情况下都与孔隙和喉部尺寸,毛细管压力曲线和渗透率非常好。在砂岩的情况下,将本算法与使用当前最先进的算法获得的网络进行比较,并且实现了非常好的协议。最重要的是,从纤维介质的图像中提取的网络正确预测各向异性渗透性张量,证明了检测关键结构特征的临界能力。高效的算法允许在超过200秒的时间内提取5003葡萄素的相当大的图像。一种算法使材料与砂岩一样多种含有20%孔隙率和75%孔隙率的纤维培养基的能力是显着的进展。提供了该算法的源代码。

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  • 来源
    《PHYSICAL REVIEW E》 |2017年第2期|023307.1-023307.15|共15页
  • 作者

    Jeff T. Gostick;

  • 作者单位

    University of Waterloo Waterloo Ontario Canada N2L 3G1;

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  • 原文格式 PDF
  • 正文语种 eng
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