ELECTROFACIES CHARACTERIZATION USING SELF-ORGANIZING MAPS

The characterization of electrofacies is essential for reservoir modeling. However, this is a process that dependends on many variables, with errors and associated noise that interfere on visual interpretation. In order to minimize uncertainties, this paper proposes the use of the artificial neural...

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Veröffentlicht in:Revista brasileira de geofisica 2012-09, Vol.30 (3)
Hauptverfasser: Kuroda, Michelle Chaves, Vidal, Alexandre Campane, Leite, Emilson Pereira, Drummond, Rodrigo Duarte
Format: Artikel
Sprache:eng
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Zusammenfassung:The characterization of electrofacies is essential for reservoir modeling. However, this is a process that dependends on many variables, with errors and associated noise that interfere on visual interpretation. In order to minimize uncertainties, this paper proposes the use of the artificial neural network called Auto-Maps Organizing, which is a computational algorithm inspired on the brain function that maps and groups similar information. The petrophysical data used, referes to Namorado Field on Campos Basin, of which were studied the neutron porosity, gamma ray, density and sonic profiles, to classify the field’s reservoirs lithology. From the resultsit was possible to define the reservoir geometry and to detail its features with more accuracy.
ISSN:0102-261X
1809-4511
DOI:10.22564/rbgf.v30i3.186