2023
DOI: 10.3390/eng4030110
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Water Saturation Prediction in the Middle Bakken Formation Using Machine Learning

Ilyas Mellal,
Abdeljalil Latrach,
Vamegh Rasouli
et al.

Abstract: Tight reservoirs around the world contain a significant volume of hydrocarbons; however, the heterogeneity of these reservoirs limits the recovery of the original oil in place to less than 20%. Accurate characterization is therefore needed to understand variations in reservoir properties and their effects on production. Water saturation (Sw) has always been challenging to estimate in ultra-tight reservoirs such as the Bakken Formation due to the inaccuracy of resistivity-based methods. While machine learning (… Show more

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Cited by 2 publications
(1 citation statement)
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“…Ongoing NDCS efforts have enabled the acquisition of advanced logging data, including comprehensive core analysis encompassing routing core analysis, special core analysis, and geomechanical studies. When calibrated with core data, integrated multimineral analysis becomes a valuable tool for discerning mineralogical, porosity, and permeability variations across the formation [17][18][19][20]. This information can be further utilized for regional-scale reservoir evaluation.…”
Section: Introductionmentioning
confidence: 99%
“…Ongoing NDCS efforts have enabled the acquisition of advanced logging data, including comprehensive core analysis encompassing routing core analysis, special core analysis, and geomechanical studies. When calibrated with core data, integrated multimineral analysis becomes a valuable tool for discerning mineralogical, porosity, and permeability variations across the formation [17][18][19][20]. This information can be further utilized for regional-scale reservoir evaluation.…”
Section: Introductionmentioning
confidence: 99%