论文标题
通过混合机器学习方法对甲烷水合地形成的动态CT成像的定量分析
Quantitative analysis of dynamic CT imaging of methane-hydrate formation with a hybrid machine learning approach
论文作者
论文摘要
含甲烷水合物样品中的快速多相过程对于微CT定量研究而言是挑战性的,因为复杂的层析成像数据分析涉及耗时的分割程序。这是由于样品多尺度结构随时间变化,X射线衰减低和固体和流体材料之间的相对鲜明对比,以及在动态过程中获得的大量数据。我们提出了一种用于自动分割层状粒状培养基中甲烷气体含水酸盐形成的时间分割数据的混合方法。首先,我们使用优化的3D U-NET神经网络对矿物晶粒进行分割,这些矿物晶粒的特征是与周围的孔盐水饱和相对比。然后,我们基于高斯混合模型执行统计聚类,以分离出由水合物形成过程中动态过程引起的灰度不稳定性的孔隙空间相。所提出的方法用于分割在同步加速器的原位断层扫描实验中获取的数百千兆字节的数据。自动分割允许研究毛孔中水合物生长的性能,以及动态过程,例如增量的孔隙流量和重新分布。
Fast multi-phase processes in methane hydrate-bearing samples are challenging for micro-CT quantitative study because of complex tomographic data analysis involving time-consuming segmentation procedures. This is due to the sample multi-scale structure changing in time, low X-ray attenuation and phase contrast between solid and fluid materials, as well as large amount of data acquired during dynamic processes. We propose a hybrid approach for automatic segmentation of tomographic data from time-resolved imaging of methane gas-hydrate formation in sandy granular media. First, we use an optimized 3D U-net neural network to perform segmentation of mineral grains that are characterized by low contrast to the surrounding pore brine-saturated phases. Then, we perform statistical clustering based on the Gaussian mixture model for separating the pore-space phases that are characterized by gray-level instabilities caused by dynamic processes during hydrate formation. The proposed approach was used for segmenting several hundred gigabytes of data acquired during an in-situ tomographic experiment at a synchrotron. Automatic segmentation allowed for studying properties of the hydrate growth in pores, as well as dynamic processes such as the incremental pore-brine flow and redistribution.