Author/Authors :
Kamran, Muhammad Department of Mining Engineering - Bandung Institute of Technology - Kota Bandung, Indonesia
Abstract :
Drillability is one of the significant issues in rock engineering. The drilling
rate index (DRI) is an important tool in analyzing the drillability of rocks.
Several efforts have been made by the researchers to correlate and evaluate
DRI of rocks. The ensemble learning methods including the decision tree (DT),
adaptive boosting (AdaBoost), and random forest (RF) are employed in this
research work in order to predict DRI of rocks. A drillability database with
four parameters is compiled in this work. A relationship between the input
parameters and DRI is established using the simple regression analysis. In
order to train the model, different mechanical properties of rocks incorporating
the uniaxial compressive strength (UCS), Brazilian tensile strength (BTS),
brittleness test (S20), and sievers’ J-miniature drill value (Sj) are taken as the
input variables. The original DRI database is randomly divided into the
training and test sets with an 80/20 sampling method. Various algorithms are
developed, and consequently, several approaches are followed in order to
predict DRI of the rock samples. The model performance has revealed that RF
predicts DRI with a high accuracy rate. Besides, the Monte Carlo simulations
exhibit that this approach is more reliable in predicting the probability
distribution of DRI. Therefore, the proposed model can be practiced for the
stability risk management and the investigative design of DRI
Keywords :
Drilling rate index , Ensemble learning , Prediction , Drillability Probability