Abstract
This research allow to infer that from seismic section and well data it is possible to determine velocity anomalies variations in layers with thicknesses below to the seismic resolution using neuronal networks.
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Cersósimo, D.S., Ravazoli, C., García-Martínez, R. (2006). Identification of Velocity Variations in a Seismic Cube Using Neural Networks. In: Debenham, J. (eds) Professional Practice in Artificial Intelligence. IFIP WCC TC12 2006. IFIP International Federation for Information Processing, vol 218. Springer, Boston, MA . https://doi.org/10.1007/978-0-387-34749-3_2
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