Petroleum Science >2011, Issue 1: 34-42 DOI: https://doi.org/10.1007/s12182-011-0112-6
Petrophysical and capillary pressure properties of the upper Triassic Xujiahe Formation tight gas sandstones in western Sichuan, China Open Access
文章信息
作者:Ye Sujuan,Lü Zhengxiang and Li Rong
作者单位:
Exploration and Production Research Institute, Sinopec Southwest Company, Sichuan 610081, China;Exploration and Production Research Institute, Sinopec Southwest Company, Sichuan 610081, China;Chengdu Institute of Geology and Mineral Resources, Sichuan 610081, China
投稿时间:2010-08-15
引用方式:Ye, S., Lü, Z. & Li, R. Pet. Sci. (2011) 8: 34. https://doi.org/10.1007/s12182-011-0112-6
文章摘要
The tight sandstones of the Upper Triassic Xujiahe Formation (T3x) constitute important gas reservoirs in western Sichuan. The Xujiahe sandstones are characterized by low to very low porosity (av. 5.22% and 3.62% for the T3x4 and T3x2 sandstones, respectively), extremely low permeability (av. 0.060 mD and 0.058 mD for the T3x4 and T3x2 sandstones, respectively), strong heterogeneity, micronano pore throat, and poor pore throat sorting. As a result of complex pore structure and the occurrence of fractures, weak correlations exist between petrophysical properties and pore throat size, demonstrating that porosity or pore throat size alone does not serve as a good permeability predictor. Much improved correlations can be obtained between permeability and porosity when pore throat radii are incorporated. Correlations between porosity, permeability, and pore throat radii corresponding to different saturations of mercury were established, showing that the pore throat radius at 20% mercury saturation (R20) is the best permeability predictor. Multivariate regression analysis and artifi cial neural network (ANN) methods were used to establish permeability prediction models and the unique characteristics of neural networks enable them to be more successful in predicting permeability than the multivariate regression model. In addition, four petrophysical rock types can be identifi ed based on the distributions of R20, each exhibiting distinct petrophysical properties and corresponding to different fl ow units.
关键词
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Western Sichuan, upper Triassic Xujiahe Formation, tight sandstones, permeability,porosity, pore throat radius, regression analysis, artificial neural network