Iteration 1E – improving the electrofacies database 195 Iteration 1F – porosity constrained to IP cube 199
6. Conclusions and Recommendations for Future Research
6.3. Recommendations for future research directions
The procedures presented in this work could be extended and improved in future research studies:
Extend the methodology to other regions of the Norne field and also to other reservoirs;
Change the pilot wells configuration according to new data sources, such 4D seismic data, namely pressure, saturation and seismic impedance maps, obtained from petro-elastic modeling and from 4D seismic inversion methods. Integrate the pilot wells
application with other modeling techniques, such the object or multi-point geostatistics modeling methods. Both actions contribute to avoid the introduction of bias that may result from the application of the pilot wells technique.
In this study the pilot wells were manually placed. Further research should attempt for a semi-automatic or entirely automatic process.
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