2025 TA PP RASEL AHMAD MADINAL ILMILLAH 1-ABSTRAK
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This study applies supervised machine learning to estimate key geomechanical parameters—static and dynamic
Young’s modulus, Poisson’s ratio, and minimum horizontal stress gradient—using only triple-combo logs from a
shaly sandstone reservoir in the ITB Field, North-West Java. Two predictive strategies were evaluated: a direct
approach using triple-combo logs with predicted compressional and shear sonic logs, and an indirect approach
using only triple-combo logs. Five machine learning algorithms—random forest, XGBoost, LGBM, k-nearest
neighbors, and feedforward neural network—were trained and tested on data from two wells with complete
logging and geomechanical measurements. Direct random forest delivered the best performance across most
targets: compressional sonic log (R² = 0.9173), shear sonic log (R² = 0.9286), dynamic poisson’s ratio (R² =
0.7755), and static poisson’s ratio (R² = 0.7746). Direct XGBoost provided the best prediction for static young’s
modulus (R² = 0.9418) and minimum horizontal stress gradient (R² = 0.9344). Direct LGBM provided the best
prediction of dynamic young’s modulus (R² = 0.9399). Although indirect models showed strong performance,
direct predictions were generally more stable due to predicted sonic log. SHAP analysis revealed that direct
models were dominated by predicted compressional and shear sonic logs inputs, while indirect models rely on
depth, density, resistivity, and porosity, aligning with petrophysical principles. A practical and explainable
machine learning framework is introduced based solely on triple-combo logs, employing both direct and indirect
approaches, and integrates SHAP analysis to ensure petrophysical interpretable geomechanics predictions in datalimited
shaly sandstone reservoirs.
Perpustakaan Digital ITB