基于深度生成模型的颗粒状多孔介质三维重构

Rongyan Yin, Qizhi Teng, Xiaohong Wu, Fan Zhang, Shuhua Xiong
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引用次数: 0

摘要

颗粒状多孔介质可被视为颗粒组合,其微观结构的重建对于研究这些介质的特征和物理性质至关重要,包括石油地质学和计算材料科学。尽管已有许多研究对颗粒重建进行了研究,但大多数研究都将颗粒作为简化的个体进行离散重建,无法复制复杂的几何形状和颗粒之间的自然相互作用。在这项工作中,提出了一种基于深度学习算法的混合生成模型,用于从单个二维(2D)切片图像中重建颗粒状多孔介质的高质量三维(3D)微观结构。该方法从给定图像中提取二维先验信息,生成整体的颗粒集。为了提高模型的重建能力,引入了自关注模块和有效模式损失模块。实验结果表明,该方法能够准确再现不同几何形状晶粒的复杂形态和空间分布,无需人工干预。此外,一旦模型训练完成,可以实现从单个2D图像快速端到端生成各种3D实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three-dimensional reconstruction of granular porous media based on deep generative models
Reconstruction of microstructure in granular porous media, which can be viewed as granular assemblies, is crucial for studying their characteristics and physical properties in various fields concerned with the behavior of such media, including petroleum geology and computational materials science. In spite of the fact that many existing studies have investigated grain reconstruction, most of them treat grains as simplified individuals for discrete reconstruction, which cannot replicate the complex geometrical shapes and natural interactions between grains. In this work, a hybrid generative model based on a deep-learning algorithm is proposed for high-quality three-dimensional (3D) microstructure reconstruction of granular porous media from a single two-dimensional (2D) slice image. The method extracts 2D prior information from the given image and generates the grain set as a whole. Both a self-attention module and effective pattern loss are introduced in a bid to enhance the reconstruction ability of the model. Samples with grains of varied geometrical shapes are utilized for the validation of our method, and experimental results demonstrate that our proposed approach can accurately reproduce the complex morphology and spatial distribution of grains without any artificiality. Furthermore, once the model training is complete, rapid end-to-end generation of diverse 3D realizations from a single 2D image can be achieved.
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