Abstract

Image segmentation remains the most critical step in Digital Rock Physics (DRP) workflows, affecting the analysis of physical rock properties. Conventional segmentation techniques struggle with numerous image artifacts and user bias, which lead to considerable uncertainty. This study evaluates the advantages of using the random forest (RF) algorithm for the segmentation of fractured rocks. The segmentation quality is discussed and compared with two conventional image processing methods (thresholding-based and watershed algorithm) and an encoder–decoder network in the form of convolutional neural networks (CNNs). The segmented images of the RF method were used as the ground truth for CNN training. The images of two fractured rock samples are acquired by X-ray computed tomography scanning (XCT). The skeletonized 3D images are calculated, providing information about the mean mechanical aperture and roughness. The porosity, permeability, flow fields, and preferred flow paths of segmented images are analyzed by the DRP approach. Moreover, the breakthrough curves obtained from tracer injection experiments are used as ground truth to evaluate the segmentation quality of each method. The results show that the conventional methods overestimate the fracture aperture. Both machine learning approaches show promising segmentation results and handle all artifacts and complexities without any prior CT-image filtering. However, the RF implementation has superior inherent advantages over CNN. This method is resource-saving (e.g., quickly trained), does not need an extensive training dataset, and can provide the segmentation uncertainty as a measure for evaluating the segmentation quality. The considerable variation in computed rock properties highlights the importance of choosing an appropriate segmentation method.

Highlights

  • A typical Digital Rock Physics (DRP) workflow consists of three steps: (i) image acquisition and processing, (ii) image segmentation, and (iii) numerical simulations (Andrä et al 2013a, b)

  • The results indicate that the segmented images have around 83–89% intersection over union (IoU) similarity with the ground truth used during the convolutional neural networks (CNNs) training phases

  • We demonstrated the potential of using the random forest (RF) classification for segmentation purposes

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Summary

Introduction

In low-permeable reservoirs, fractures are the dominant pathways for fluid flow and mass transport, which are influenced by fracture properties like aperture distribution. Increasing computational power and advances in interdisciplinary scientific fields such as water resources research allowed DRP to become a key tool in studying fractured media (Andrä et al 2013a, b). This approach is used in many applications, including contaminant transport carbon capture and storage, enhanced oil recovery, tight gas production, reactive flow A typical DRP workflow consists of three steps: (i) image acquisition and processing, (ii) image segmentation (i.e., categorizing each voxel to a specific phase, like pore or matrix), and (iii) numerical simulations (Andrä et al 2013a, b). None of these steps is trivial, and the predictions of numerical simulations heavily depend on the quality of previous steps (Saxena et al 2019)

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