E. Anokhina, G. Erokhin, A. Kamyshnikov, R. Simonov
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Use of Geostatistical Algorithms for Complex Interpretation of Well Data and Prediction of Reservoir Distribution Zones
Summary The prospects for the oil and gas potential of the Pre-Jurassic complex in one field in Western Siberia are associated with the weathering crust. To solve the problem of identifying highly productive zones, a complex interpretation of information on the material composition of rocks and the results of clustering of APS and gamma-ray log data was performed