Predicting oil saturation from velocities using petrophysical models and artificial neural networks
The degree of oil saturation has been estimated from velocity measurements of unconsolidated sediments at a laboratory scale using a petrophysical model and artificial neural network (ANN) as an inversion tool. Laboratory measurements of velocities, Vp, Vs and their ratio Vp/ Vs as well as the oil saturation levels of unconsolidated materials from an oil field were performed and the data were analyzed. It was observed that the ratio Vp/ Vs increase with an increase in temperature while for all saturation level. Beyond a critical saturation level (Soil-40%), Vp increases with an increase in temperature while Vp/ Vs decreases with an increase in temperature. An ANN is trained with simulated data based on the petrophysical model. The weighting coefficients developed from the training are then used to invert for the unknown oil saturation level given the laboratory measured velocities. Simultaneous use of Vp, Vs and Vp/ Vs as input variables to the network in training the network give more accurate predictions than when say, Vp or Vs is used individually as input attribute in the inversion process. The results show a good match between the predicted and the measured degree of oil saturation. © 2001 Elsevier Science B. V. All rights reserved.
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Related Subject Headings
- Energy
- 4019 Resources engineering and extractive metallurgy
- 4012 Fluid mechanics and thermal engineering
- 3705 Geology
- 0914 Resources Engineering and Extractive Metallurgy
- 0904 Chemical Engineering
- 0403 Geology
Citation
Published In
DOI
ISSN
Publication Date
Volume
Issue
Start / End Page
Related Subject Headings
- Energy
- 4019 Resources engineering and extractive metallurgy
- 4012 Fluid mechanics and thermal engineering
- 3705 Geology
- 0914 Resources Engineering and Extractive Metallurgy
- 0904 Chemical Engineering
- 0403 Geology