Seismic prediction of shale oil lithofacies associations based on sedimentary facies patterns: A case study of the shahejie formation in the Huanghekou Sag. [PDF]
Zhao H, Wang H, Wang G, Wan L.
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The primary porosity heterogeneity characteristics of braided river sandbody and implications for predicting the current physical properties heterogeneities. [PDF]
Yan Y, Zhang L, Luo X.
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Multiscale microscopic pore structure characterization and storage-flow coupling mechanisms in ultra-low permeability tight sandstone reservoirs. [PDF]
Li CL +5 more
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Impact of tectonic and stratigraphic evolution of Shushan Basin on hydrocarbon accumulation, north Western Desert, Egypt. [PDF]
Fagelnour M, Farouk S, Sarhan MA.
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Depositional environment of the late Paleocene-early Eocene Sinjar Formation, Iraq: Implications from facies analysis, mineralogical and geochemical proxies. [PDF]
Al-Taee NT +4 more
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Research on Influencing Factors and an Evaluation Method for the Breakthrough Pressure of CO<sub>2</sub> Geological Storage Caprock: A Case Study of the Chang 4 + 5 Member in the Ansai Area. [PDF]
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The Influence of Sedimentary Microfacies Distribution on Fishbone Wells Steam Stimulation Effect
Petroleum Science and Technology, 2013The nonuniform distribution of the sedimentary microfacies has a significant impact on fishbone wells steam stimulation effect. Different location and direction relationships that fishbone wells may have with the sedimentary facies belts and the provenance direction have been designed, and the numerical simulation method has also been applied to the ...
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Sedimentary microfacies of the H8 member in the Su14 3D seismic test area
Mining Science and Technology, 2011The distribution of sedimentary microfacies in the eighth member of the Shihezi formation (the H8 member) in the Su14 3D seismic test area was investigated. A Support Vector Machine (SVM) model was introduced for the first time as a way of predicting sandstone thickness in the study area.
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