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CT&F - Ciencia, Tecnología y Futuro
Print version ISSN 0122-5383On-line version ISSN 2382-4581
Abstract
AYALA MARIN, Carlos-Andrés and GARCIA-YELA, Christiann-Camilo. METHODOLOGY TO DESIGN OF SYNTHETIC SONIC LOG (SSL) USING ARTIFICIAL NEURAL NETWORKS. COLORADO FIELD APPLICATION. C.T.F Cienc. Tecnol. Futuro [online]. 2010, vol.4, n.2, pp.21-31. ISSN 0122-5383.
A method that allows the creation of the Synthetic Sonic Log (SSL) was developed from the Spontaneous Potential (SP) logs, the resistivity logs of the flushed zone (SN), and the resistivity zone of the uninvaded zone (ILD), using Artificial Neural Networks (ANN). The SSL was obtained with the created tool called Generation of Synthetic Sonic Logs (GSSL). The results obtained are presented hereinafter: in the Colorado 70 well, 90% of the generated SSL data present errors of less than 10%; in the Colorado 72 well; 53% of the SSL data obtained with the tool are below 5% error, in the Colorado 75 well, 80% of the SSL data present errors of less than 10%, and finally, the SSL generated for the Colorado 38 well follows the behavior of the original Sonic Logs of the well in an accurate manner. From the foregoing we conclude that the quality of the created tool is good and that the deviations are minimal in the times of transit of synthetic sonic profile.
Keywords : petrophysical properties; sonic logs; neural networks; spontaneous potential; porosity; permeability; saturation.