论文标题

深度神经网络的物理准确性,用于2D和3D多矿物的岩石Micro-CT图像

Physical Accuracy of Deep Neural Networks for 2D and 3D Multi-Mineral Segmentation of Rock micro-CT Images

论文作者

Da Wang, Ying, Shabaninejad, Mehdi, Armstrong, Ryan T., Mostaghimi, Peyman

论文摘要

岩石样品的3D微型层析成像UCT的分割对于进一步的数字岩石物理(DRP)分析至关重要,但是,诸如阈值,分水岭分割和融合活动轮廓等常规方法易于用户偏见。深度卷积神经网络(CNN)通过自然图像和$μ$ CT岩石图像产生了准确的PixelWise语义分割结果,但是,身体准确性尚未得到充分记录。在10个配置中测试了4个CNN体系结构的2D和3D表壳的性能。西蒙山砂岩的手动分割的UCT图像被视为地面真理,并用作训练和验证数据,具有很高的素脉络精度(超过99%)。然后,下游分析用于验证身体准确性。计算每个分段相的拓扑,并在单个和混合润湿案例中直接模拟对绝对渗透性和多相流进行建模。这些连通性和流量特征的物理测量表现出很高的差异和不确定性,模型具有95 \%+的voxelwise精度,具有渗透率和连接数量级。新的网络体系结构还作为U-NET和RESNET的混合融合引入,结合了网络中网络中的短和长跳连接。 3D实施在Voxelwise和身体准确度措施中的所有其他测试模型都优于所有其他测试模型。网络架构和数据集中的体积分数(以及相关的加权)是不仅影响VoxelWise情况下准确性权衡的因素,而且在训练物理准确的分割模型中尤其重要。

Segmentation of 3D micro-Computed Tomographic uCT) images of rock samples is essential for further Digital Rock Physics (DRP) analysis, however, conventional methods such as thresholding, watershed segmentation, and converging active contours are susceptible to user-bias. Deep Convolutional Neural Networks (CNNs) have produced accurate pixelwise semantic segmentation results with natural images and $μ$CT rock images, however, physical accuracy is not well documented. The performance of 4 CNN architectures is tested for 2D and 3D cases in 10 configurations. Manually segmented uCT images of Mt. Simon Sandstone are treated as ground truth and used as training and validation data, with a high voxelwise accuracy (over 99%) achieved. Downstream analysis is then used to validate physical accuracy. The topology of each segmented phase is calculated, and the absolute permeability and multiphase flow is modelled with direct simulation in single and mixed wetting cases. These physical measures of connectivity, and flow characteristics show high variance and uncertainty, with models that achieve 95\%+ in voxelwise accuracy possessing permeabilities and connectivities orders of magnitude off. A new network architecture is also introduced as a hybrid fusion of U-net and ResNet, combining short and long skip connections in a Network-in-Network configuration. The 3D implementation outperforms all other tested models in voxelwise and physical accuracy measures. The network architecture and the volume fraction in the dataset (and associated weighting), are factors that not only influence the accuracy trade-off in the voxelwise case, but is especially important in training a physically accurate model for segmentation.

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