2020
DOI: 10.17721/1728-2713.88.11
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Evaluating the Degree of Complexity of Tight Oil Recovery Based on the Classification of Oils

Abstract: The article discusses the results of the use of cluster analysis in assessing the degree of oil recovery complexity and its impact on the performance indicator. For this purpose, clustering was performed using a fuzzy cluster analysis algorithm. It should be noted that along with the deposits of heavy and highly viscous oils, a large share of hard-to-recover reserves is also confined to conditions with very low reservoir permeability values. Data on viscosity, oil density and oil permeability of in-situ condit… Show more

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Cited by 2 publications
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“…Figure shows that the viscosity of crude oil in the M-1 oilfield is 27362 mPa·s. According to the classification of heavy oil, M-1 crude oil belongs to extra heavy oil. , The viscosity of heavy oil is sensitive to the temperature. With the increase of the temperature, the viscosity of heavy oil decreases obviously at first.…”
Section: Resultsmentioning
confidence: 99%
“…Figure shows that the viscosity of crude oil in the M-1 oilfield is 27362 mPa·s. According to the classification of heavy oil, M-1 crude oil belongs to extra heavy oil. , The viscosity of heavy oil is sensitive to the temperature. With the increase of the temperature, the viscosity of heavy oil decreases obviously at first.…”
Section: Resultsmentioning
confidence: 99%