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Digital Rock Segmentation for Petrophysical Analysis With Reduced User Bias Using Convolutional Neural Networks

Yufu Niu, Peyman Mostaghimi, Mehdi Shabaninejad, Paweł Świętojański, Ryan T. Armstrong

2020Water Resources Research102 citationsDOIOpen Access PDF

Abstract

Abstract Pore‐scale digital images are usually obtained from microcomputed tomography data that has been segmented into void and grain space. Image segmentation is a crucial step in the process of digital rock analysis that can influence pore‐scale characterization studies and/or the numerical simulation of petrophysical properties. This is concerning since all segmentation methods have user‐selected parameters that result in biases. Convolutional neural networks (CNNs) provide a way forward since once trained, CNN can provide consistent and reliable image segmentation with no user‐defined inputs. In this paper, a CNN is used to segment digital sandstone data, and various ground truth data sets are tested. The ground truth images are created based on high‐resolution microcomputed tomography data and corresponding scanning electron microscope data. The results are evaluated in terms of porosity, permeability, and pore size distribution computed from the segmented data. We find that watershed‐based segmentation provides a wide range of possible petrophysical values depending on user‐selected thresholds, whereas CNN provides a smaller variance when trained on scanning electron microscope data. It can be concluded that CNN offers a reliable and consistent way to segment digital sandstone data for petrophysical analyses.

Topics & Concepts

PetrophysicsConvolutional neural networkSegmentationGround truthComputer scienceArtificial intelligencePattern recognition (psychology)Digital imageGeologyComputer visionPorosityImage processingImage (mathematics)Geotechnical engineeringEnhanced Oil Recovery TechniquesHydrocarbon exploration and reservoir analysisHydraulic Fracturing and Reservoir Analysis
Digital Rock Segmentation for Petrophysical Analysis With Reduced User Bias Using Convolutional Neural Networks | Litcius