2016
DOI: 10.1016/j.marpetgeo.2016.07.024
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Permeability estimation based on thin-section image analysis and 2D flow modeling in grain-dominated carbonates

Abstract: Permeability estimation based on image analysis is a good alternative when an intact core-plug is not available for laboratory measurement. While there is much research on permeability estimation from 2D and 3D images or models, accurately estimating permeability for carbonates, a type of rock with substantial heterogeneity, is still challenging. In this study, a method for permeability estimation based on thin-section image analysis and 2D permeability simulation is developed for grain-dominated carbonates ba… Show more

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Cited by 18 publications
(6 citation statements)
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“…Moreover, the deep-learning methods classify the thin-section image pixel by pixel, which is called image semantic segmentation, creating the labeled output image, where every single labeled pixel represents a mineral class or pore [11,12]. After that, the extracted pore information can be used to estimate rock permeability and anisotropy in reservoir simulation, hydrology, and environmental engineering [13][14][15].…”
Section: A Pore Information Extractionmentioning
confidence: 99%
“…Moreover, the deep-learning methods classify the thin-section image pixel by pixel, which is called image semantic segmentation, creating the labeled output image, where every single labeled pixel represents a mineral class or pore [11,12]. After that, the extracted pore information can be used to estimate rock permeability and anisotropy in reservoir simulation, hydrology, and environmental engineering [13][14][15].…”
Section: A Pore Information Extractionmentioning
confidence: 99%
“…The parameters that did not change in the simulation were porosity, permeability, cell geometry, quantity of embedded fluids, injection times, atmospheric pressure, and temperature. The bidimensional image results obtained during the experiment and computational simulation were compared by counting pixels, finding that the displaced fluid was similar in both cases [34,35], where the computational program found a solution singularity, the results of which are shown in Fig. 8.…”
Section: Computational Simulationmentioning
confidence: 99%
“…X-ray CT can achieve wider field of view and very high resolution in 3D space (Ge et al, 2015). Despite the lower resolution in comparison with µxCT and SEM images, the thin section images have other advantages such as a wider range of view, saved time and cheaper availability for petrophysical studies, such as pore microstructure (Desbois et al, 2011;Rabbani et al, 2014a;Borazjani et al, 2016;Gundogar et al, 2016;Rabbani et al, 2016;Xiao et al, 2016), mineral recognition and classification (Hofmann et al, 2013;Asmussen et al, 2015;Izadi et al, 2015;Izadi et al, 2017b), specific surface area (Rabbani and Jamshidi, 2014;Rabbani et al, 2014b), elastic modulus (Arns et al, 2002;Dvorkin et al, 2011;Madonna et al, 2012;Saxena and Mavko, 2016), rock type determination (Mynarczuk, 2010;Mynarczuk et al, 2013;Ge et al, 2015;Mollajan et al, 2016), pore-grain analysis (Rabbani and Jamshidi, 2014;Rabbani et al, 2014b;Song et al, 2016), flowing property (Peng et al, 2016;Wang et al, 2016b). Using thin section images, the interconnected pore structure can be marked out visually as they are filled by color epoxy resin.…”
Section: Petrophysical Characterization Based On Thin Section Analysismentioning
confidence: 99%
“…Recently, the methodology to reconstruct pore network based on 2D thin section was developed for conventional sandstone reservoir using constant coordination number and stereological correction factor (Baveye et al, 2010;Houston et al, 2013a). For carbonate rock, which is a multiple porosity system, a fast but reliable method was proposed by Peng et al (2016), through the relationship of K 2D (estimated by thin section) and K 3D (obtained by micro-CT scan and simulation) that are defined as:…”
Section: Petrophysical Characterization Based On Thin Section Analysismentioning
confidence: 99%