2020
DOI: 10.1016/j.marpetgeo.2019.104156
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Depositional conditioning of three dimensional training images: Improving the reproduction and representation of architectural elements in sand-dominated fluvial reservoir models

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Cited by 11 publications
(6 citation statements)
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“…However, the reservoir performance of ice‐contact deltas can be negatively affected by meso‐scale heterogeneities which are directly linked to the depositional processes taking place at the ice margin (e.g. Mitten et al ., 2020). Evidence for ice overriding, bulldozing and mixing by ice‐margin oscillations are clearly visible in delta morphology (Fig.…”
Section: Discussionmentioning
confidence: 99%
“…However, the reservoir performance of ice‐contact deltas can be negatively affected by meso‐scale heterogeneities which are directly linked to the depositional processes taking place at the ice margin (e.g. Mitten et al ., 2020). Evidence for ice overriding, bulldozing and mixing by ice‐margin oscillations are clearly visible in delta morphology (Fig.…”
Section: Discussionmentioning
confidence: 99%
“…It is also worth noting that whilst many have investigated lithological layering, few, if any, have considered realistic geological features or facies modelling which are typically incorporated into reservoir modelling in conventional geothermal 2023)) or petroleum applications (e.g. Abdelmaksoud et al (2019); Mitten et al (2020)) and impact the hydraulic/thermal subsurface characteristics. It is difficult to quantify the impact such systems could have on the performance of a DBHE; however, it is likely in highly heterogeneous systems which could correspond to variable thermal properties, degree of fluid saturation or groundwater flow would be most influential on results.…”
Section: Impact Of Geological Parametersmentioning
confidence: 99%
“…Most methods for object instance segmentation require all training instances to be labeled with a segmentation mask [34]. Image training is frequently used to decide what heterogeneity should be included in a multipoint statistical reservoir model [35]. In this study, the training image is built based on two different objects, namely plastic bottles and plastic bags.…”
Section: Training Image Samplesmentioning
confidence: 99%