Production prediction for fracture-vug carbonate reservoirs using electric imaging logging data

被引:0
|
作者
XIE Fang [1 ]
ZHANG Chengsen [2 ]
LIU Ruilin [1 ]
XIAO Chengwen [2 ]
机构
[1] Geophysics and Oil Institute, Yangtze University
[2] Research Institute of Exploration and Development,Tarim Oilfield Company,PetroChina
关键词
Tarim Basin; Ordovician; carbonate; fracture-vug carbonate reservoir; electric imaging logging; conduit flow model; production index; production prediction;
D O I
暂无
中图分类号
TE151 [油气田测量];
学科分类号
082002 ;
摘要
Considering the fluid flow non-darcy characteristics in fracture-vug carbonate reservoirs, a new multi-scale conduit flow model production prediction method for fracture-vug carbonate reservoirs was presented using image segmentation technique of electric imaging logging data. Firstly, based on Hagen-Poiseuille’s law of incompressible fluid flow and the different cross-sectional areas in single fractures and vugs in carbonate reservoirs, a multi-scale conduit flow model for fracture-vug carbonate reservoir was established, and a multi-scale conduit radial fluid flow equation was deduced. Then, conduit flow production index was introduced. The conduit flow production index was calculated using fracture-vug area extracted from the result of electrical image segmentation. Finally, production prediction of fracture-vug carbonate reservoir was realized by using electric imaging logging data. The method has been applied to Ordovician fracture-vug carbonate reservoirs in the Tabei area, and the predicted results are in good agreement with the oil testing data.
引用
收藏
页码:369 / 376
页数:8
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