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Stacked ensemble machine learning for porosity and absolute permeability prediction of carbonate rock plugs

Ramanzani Kalule, Hamid Ait Abderrahmane, Waleed AlAmeri, Mohamed Sassi

2023Scientific Reports71 citationsDOIOpen Access PDF

Abstract

This study employs a stacked ensemble machine learning approach to predict carbonate rocks' porosity and absolute permeability with various pore-throat distributions and heterogeneity. Our dataset consists of 2D slices from 3D micro-CT images of four carbonate core samples. The stacking ensemble learning approach integrates predictions from several machine learning-based models into a single meta-learner model to accelerate the prediction and improve the model's generalizability. We used the randomized search algorithm to attain optimal hyperparameters for each model by scanning over a vast hyperparameter space. To extract features from the 2D image slices, we applied the watershed-scikit-image technique. We showed that the stacked model algorithm effectively predicts the rock's porosity and absolute permeability.

Topics & Concepts

Generalizability theoryPorosityHyperparameterArtificial intelligenceEnsemble learningPermeability (electromagnetism)CarbonateComputer scienceMachine learningAlgorithmGeologyPattern recognition (psychology)Materials scienceMathematicsStatisticsGeotechnical engineeringChemistryMembraneMetallurgyBiochemistryHydrocarbon exploration and reservoir analysisEnhanced Oil Recovery TechniquesHydraulic Fracturing and Reservoir Analysis
Stacked ensemble machine learning for porosity and absolute permeability prediction of carbonate rock plugs | Litcius