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Boletín de Geología
versión impresa ISSN 0120-0283versión On-line ISSN 2145-8553
Resumen
ORTIZ, Andrés Felipe; HERNANDO HERRERA, Edwar y SANTOS, Nicolás. Porosity prediction from X-ray computed tomography logs (RHOB and PEF) using Artificial Neural Networks (ANN). Bol. geol. [online]. 2020, vol.42, n.3, pp.141-149. Epub 31-Ago-2020. ISSN 0120-0283. https://doi.org/10.18273/revbol.v42n3-2020006.
This work presents a method for rock porosity prediction from the X-ray computed tomography (CT) logs obtained using a double energy approach, bulk density (RHOB) and photoelectric factor (PEF). The proposed method seeks to correlate the known porosity from the Routine Core Analysis (RCAL) with RHOB and PEF high-resolution logs, as the response of these two measurements depends on the volumetric quantity of different rock materials and of the volume of its porous space. Artificial Neural Networks (ANNs) are trained so they can predict porosity from CT logs at a high resolution (0.625 mm). The ANNs validation and regression plots show that porosity predictions are good. High-resolution porosity models linked to CT images could contribute to enhancing the petrophysics model as they allow a more refined identification of intervals of interest due to the detailed measurement.
Palabras clave : CT; Rock images; Well logs; High-resolution logs; Artificial Intelligence.