PERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN
Permeability is part of the input used to determine the rate of hydrocarbon production, recovery esrimation, optimal well placement, downhole pressure, fluid contact evaluation, etc. More accurate prediction of permeability in uncored depth remains a challenge in the petroleum industry The goal...
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id-itb.:715012023-02-10T14:28:53ZPERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN Samudera Hafwandi, Babas Teknologi minyak, lemak, lilin, gas industri Indonesia Theses Hydraulic Flow Unit, Machine Learning, Permeability, Porosity INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/71501 Permeability is part of the input used to determine the rate of hydrocarbon production, recovery esrimation, optimal well placement, downhole pressure, fluid contact evaluation, etc. More accurate prediction of permeability in uncored depth remains a challenge in the petroleum industry The goal of this study is to predict the permeability value using the machine learning method and then compare it to the permeability prediction results using the hydraulic flow unit (HFU) method. There are six machine learning models used in permeability prediction: Decision Tree, Gradient Boosting, AdaBoost, Random Forest, Support Vector Machines, and K-Nearest Neighbor. These models are used in the scientific domain of petroleum engineering and involve four prediction scenarios, with the best scenario determining permeability is scenario four, which includes all well log data as well as depth and well coordinates. The Random Forest model is the best for predicting permeability after hyperparameter tuning with prediction score of MAE of 0.4842, MSE of 0.4026, and RMSE of 0.6345 Permeability predictions using the HFU method cannot be performed in the "BSH" field at depths without core data due to a lack of facies data that must be validated with rock types that match the depth intervals without core data. However, using machine learning methods, predictions of permeability values at uncored depths can be made by combining existing log data and predicted porosity data. text |
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Teknologi minyak, lemak, lilin, gas industri Samudera Hafwandi, Babas PERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN |
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Permeability is part of the input used to determine the rate of hydrocarbon
production, recovery esrimation, optimal well placement, downhole pressure, fluid
contact evaluation, etc. More accurate prediction of permeability in uncored depth
remains a challenge in the petroleum industry
The goal of this study is to predict the permeability value using the machine learning
method and then compare it to the permeability prediction results using the
hydraulic flow unit (HFU) method. There are six machine learning models used in
permeability prediction: Decision Tree, Gradient Boosting, AdaBoost, Random
Forest, Support Vector Machines, and K-Nearest Neighbor. These models are used
in the scientific domain of petroleum engineering and involve four prediction
scenarios, with the best scenario determining permeability is scenario four, which
includes all well log data as well as depth and well coordinates. The Random Forest
model is the best for predicting permeability after hyperparameter tuning with
prediction score of MAE of 0.4842, MSE of 0.4026, and RMSE of 0.6345
Permeability predictions using the HFU method cannot be performed in the "BSH"
field at depths without core data due to a lack of facies data that must be validated
with rock types that match the depth intervals without core data. However, using
machine learning methods, predictions of permeability values at uncored depths
can be made by combining existing log data and predicted porosity data. |
format |
Theses |
author |
Samudera Hafwandi, Babas |
author_facet |
Samudera Hafwandi, Babas |
author_sort |
Samudera Hafwandi, Babas |
title |
PERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN |
title_short |
PERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN |
title_full |
PERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN |
title_fullStr |
PERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN |
title_full_unstemmed |
PERMEABILITY PREDICTION STUDY USING HYDRAULIC FLOW UNIT AND MACHINE LEARNING METHOD IN |
title_sort |
permeability prediction study using hydraulic flow unit and machine learning method in |
url |
https://digilib.itb.ac.id/gdl/view/71501 |
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1822006607456763904 |