Title of article :
Application of artificial intelligence to characterize naturally fractured zones in Hassi Messaoud Oil Field, Algeria
Author/Authors :
El Ouahed، نويسنده , , Abdelkader Kouider and Tiab، نويسنده , , Djebbar and Mazouzi، نويسنده , , Amine، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Pages :
20
From page :
122
To page :
141
Abstract :
In highly heterogeneous reservoirs classical characterization methods often fail to detect the location and orientation of the fractures. Recent applications of Artificial Intelligence to the area of reservoir characterization have made this challenge a possible practice. Such a practice consists of seeking the complex relationship between the fracture index and some geological and geomechanical drivers (facies, porosity, permeability, bed thickness, proximity to faults, slopes and curvatures of the structure) in order to obtain a fracture intensity map using Fuzzy Logic and Neural Network. aper shows the successful application of Artificial Intelligence tools such as Artificial Neural Network and Fuzzy Logic to characterize naturally fractured reservoirs. A 2D fracture intensity map and fracture network map in a large block of Hassi Messaoud field have been developed using Artificial Neural Network and Fuzzy Logic. as achieved by first building the geological model of the permeability, porosity and shale volume using stochastic conditional simulation. Then by applying some geomechanical concepts first and second structure directional derivatives, distance to the nearest fault, and bed thickness were calculated throughout the entire area of interest. Two methods were then used to select the appropriate fracture intensity index. In the first method well performance was used as a fracture index. In the second method a Fuzzy Inference System (FIS) was built. Using this FIS, static and dynamic data were coupled to reduce the uncertainty, which resulted in a more reliable Fracture Index. The different geological and geomechanical drivers were ranked with the corresponding fracture index for both methods using a Fuzzy Ranking algorithm. Only important and measurable data were selected to be mapped with the appropriate fracture index using a feed forward Back Propagation Neural Network (BPNN). The neural network was then used to obtain a fracture intensity maps throughout the entire area of interest. A mathematical model based on “the weighting method” was then applied to obtain fracture network maps, which led to a better description of the major fracture trends. tained maps were compared and the results show that the proposed approach is a feasible and practical methodology to map the fracture network.
Keywords :
Artificial Intelligence , Reservoir Characterization , Naturally fractured reservoir , Fuzzy Logic , NEURAL NETWORKS , Hassi Messaoud
Journal title :
Journal of Petroleum Science and Engineering
Serial Year :
2005
Journal title :
Journal of Petroleum Science and Engineering
Record number :
2218627
Link To Document :
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