--> Abstract: Classification of Porosity and Permeability Category with Regression Trees, by H. Li, H-C. Chen, and E. A. Mancini; #90924 (1999).
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LI, HAIYAN, HUI-CHUAN CHEN, and ERNEST A. MANCINI, The University of Alabama, Tuscaloosa, AL

Abstract: Classification of Porosity and Previous HitPermeabilityNext Hit Category with Regression Trees

Previous HitPermeabilityNext Hit and porosity are two of the most important petrophysical parameters in reservoir characterization. In a carbonate reservoir, exact porosity/Previous HitpermeabilityNext Hit values are often too difficult to be obtained from the low cost well-log data. Nevertheless, an accurate knowledge of porosity/Previous HitpermeabilityNext Hit category (high, moderate or low) is useful for field development and production strategies. This paper presents a classification method capable of determining the porosity/Previous HitpermeabilityNext Hit category by ft from well-log data.

This paper utilizes regression trees which incorporate regression method, tree structure, and expert knowledge to determine data category. A regression tree can be constructed based on a training well. This well contains the independent variables obtained from well logs and the dependent variables (in terms of desired categories) obtained from core data. The constructed tree is then used to explore the predictive structure of the given data and the interactions between various log signatures (seven well-log measurements are used). Finally a classification method is used to derive the corresponding category of porosity/Previous HitpermeabilityNext Hit.

This paper used the data from seven wells in North Choctaw Ridge Smackover Formation, located in Choctaw County, AL. The proposed method results in a 86.7% accuracy for porosity and 82.8% accuracy for Previous HitpermeabilityNext Hit. Using the same data, a back propagation neural network approach results in a 73.2% accuracy and 62.2% accuracy for porosity and Previous HitpermeabilityNext Hit, respectively. The proposed classification method seems to be more powerful than the popular back propagation neural network in the classification of porosity and Previous HitpermeabilityTop category. 

AAPG Search and Discovery Article #90924©1999 GCAGS Annual Meeting Lafayette, Louisiana