Modeling of multi-mineral-component digital core based on Res-Unet

IF 1.6 3区 地球科学 Q3 GEOCHEMISTRY & GEOPHYSICS Journal of Geophysics and Engineering Pub Date : 2023-04-05 DOI:10.1093/jge/gxad024
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引用次数: 1

Abstract

As the exploration of oil and gas moves further into less conventional reservoirs, effective methods are required for the fine evaluation of complex formations, particularly digital core models with multiple mineral components. The current technology cannot directly produce digital core images with multiple minerals. Therefore, image segmentation has been widely used to create digital multi-mineral core images from computed tomography (CT) images. The commonly used image segmentation methods do not provide satisfactory CT images of complex rock formations. Consequently, deep learning algorithms have been successfully applied for image segmentation. In this paper, a novel method is proposed to develop an accurate digital core model with multiple mineral components based on the Res-Unet neural network. CT images of glutenite and the corresponding results of quantitative evaluation of minerals by scanning electron microscopy (QEMSCAN) are used as a training dataset for the automatic segmentation of CT core images. The used quantitative metrics show that compared with the multi-threshold and U-Net segmentation methods, the Res-Unet network leads to better results of mineral morphology and distribution recognition. Finally, it is demonstrated that the proposed Res-Unet-based segmentation model is an effective tool for creating three-dimensional digital core models with multiple mineral components.
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基于Res-Unet的多矿物组分数字岩心建模
随着石油和天然气勘探进一步进入不太传统的储层,需要有效的方法来精细评估复杂地层,特别是具有多种矿物成分的数字岩心模型。目前的技术无法直接产生具有多种矿物的数字岩心图像。因此,图像分割已被广泛用于从计算机断层扫描(CT)图像创建数字多矿物岩心图像。常用的图像分割方法不能提供令人满意的复杂岩层的CT图像。因此,深度学习算法已成功应用于图像分割。本文提出了一种基于Res-Unet神经网络的多矿物成分精确数字岩心模型的新方法。砂砾岩的CT图像和相应的扫描电子显微镜(QEMSCAN)矿物定量评价结果被用作CT核心图像自动分割的训练数据集。使用的定量指标表明,与多阈值和U-Net分割方法相比,Res-Unet网络在矿物形态和分布识别方面取得了更好的结果。最后,证明了所提出的基于Res-Unet的分割模型是创建具有多个矿物成分的三维数字岩心模型的有效工具。
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来源期刊
Journal of Geophysics and Engineering
Journal of Geophysics and Engineering 工程技术-地球化学与地球物理
CiteScore
2.50
自引率
21.40%
发文量
87
审稿时长
4 months
期刊介绍: Journal of Geophysics and Engineering aims to promote research and developments in geophysics and related areas of engineering. It has a predominantly applied science and engineering focus, but solicits and accepts high-quality contributions in all earth-physics disciplines, including geodynamics, natural and controlled-source seismology, oil, gas and mineral exploration, petrophysics and reservoir geophysics. The journal covers those aspects of engineering that are closely related to geophysics, or on the targets and problems that geophysics addresses. Typically, this is engineering focused on the subsurface, particularly petroleum engineering, rock mechanics, geophysical software engineering, drilling technology, remote sensing, instrumentation and sensor design.
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