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Estimating pore fluid saturation in an oil sands reservoir using ensemble tree machine learning algorithms
Kapoor, Gagan
Date: 2017
Type: Text
Abstract:
This thesis aims to estimate pore fluid saturation values in an oil sands reservoir using ensemble tree based machine learning models. Oil sands reservoirs provide an interesting opportunity to explore a relatively new technique in petrophysical analysis. The specific reservoir used in this study has high heterogeneity with discrete muddy layers that are difficult and time consuming to incorporate into a conventional petrophysical model. In addition, due to strong well control and sufficient well log data, the reservoir is a perfect candidate to test out a data-driven model by using techniques in Machine Learning – a subfield of Artificial Intelligence. Specifically, Random Forests and Extreme Gradient Boosted Trees are
combined, which are two different ways to implement a decision-tree based model structure. The two algorithms have rapidly gained popularity in the machine learning community due to their robustness when dealing with outliers and/or bad data combined with a comparative immunity against over-fitting. The final aim of this thesis is to obtain comparable or superior results to the Modified Simandoux Equation method and analyze the shortcomings and advantages of the two methods in a real petroleum field.