2023
DOI: 10.1038/s41598-023-36096-2
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Stacked ensemble machine learning for porosity and absolute permeability prediction of carbonate rock plugs

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 … Show more

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Cited by 22 publications
(10 citation statements)
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“…To be clear, the meta-classifier learns from the predictions made by the base classifiers rather than the original input data [ 32 , 33 ]. The goal of the meta-learner is to combine these predictions effectively, considering the strengths and weaknesses of each base classifier, in order to make the final ensemble classification [ 34 ]. Stacking delivers superior performance compared to boosting and bagging when it is maximumly optimized [ 35 ].…”
Section: Review Of Literaturementioning
confidence: 99%
“…To be clear, the meta-classifier learns from the predictions made by the base classifiers rather than the original input data [ 32 , 33 ]. The goal of the meta-learner is to combine these predictions effectively, considering the strengths and weaknesses of each base classifier, in order to make the final ensemble classification [ 34 ]. Stacking delivers superior performance compared to boosting and bagging when it is maximumly optimized [ 35 ].…”
Section: Review Of Literaturementioning
confidence: 99%
“…The application of meta-learning in ensemble models for tasks like time series forecasting, energy consumption prediction, and network traffic classification has shown promising outcomes in enhancing model generalizability and robustness [ 57 ]. The stacking ensemble approach, which consolidates predictions from multiple machine learning models into a single meta-learner model, has proven particularly effective in accelerating predictions and enhancing overall performance [ 58 ]. By utilizing meta-learning techniques in ensemble models, researchers can achieve improved performance by amalgamating predictions from multiple models, ultimately leading to more robust and accurate outcomes across a wide array of applications [ 59 ].…”
Section: Related Workmentioning
confidence: 99%
“…It outperforms conventional inversion methods and traditional machine learning for porosity inference in handling these challenging scenarios. Neural networks that make DL models can be scaled up to adapt to diverse scenarios, including multi-output regressions, resulting in enhanced performance (Feng et al, 2020;Kalule et al, 2023).…”
Section: Deep Learning Inversionmentioning
confidence: 99%