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Estimation of Blast-Induced Peak Particle Velocity through the Improved Weighted Random Forest Technique

Biao He, Sai Hin Lai, Ahmed Salih Mohammed, Mohanad Muayad Sabri Sabri, Dmitrii Vladimirovich Ulrikh

2022Applied Sciences18 citationsDOIOpen Access PDF

Abstract

Blasting is one of the primary aspects of the mining operations, and its environmental effects interfere with the safety of lives and property. Therefore, it is essential to accurately estimate the environmental impact of blasting, i.e., peak particle velocity (PPV). In this study, a regular random forest (RF) model was developed using 102 blasting samples that were collected from an open granite mine. The model inputs included six parameters, while the output is PPV. Then, to improve the performance of the regular RF model, five techniques, i.e., refined weights based on the accuracy of decision trees and the optimization of three metaheuristic algorithms, were proposed to enhance the predictive capability of the regular RF model. The results showed that all refined weighted RF models have better performance than the regular RF model. In particular, the refined weighted RF model using the whale optimization algorithm (WOA) showed the best performance. Moreover, the sensitivity analysis results revealed that the powder factor (PF) has the most significant impact on the prediction of the PPV in this project case, which means that the magnitude of the PPV can be managed by controlling the size of the PF.

Topics & Concepts

Random forestRock blastingSensitivity (control systems)Particle swarm optimizationComputer scienceEnvironmental scienceAlgorithmStatisticsMathematicsEngineeringGeotechnical engineeringArtificial intelligenceElectronic engineeringRock Mechanics and ModelingMineral Processing and GrindingTunneling and Rock Mechanics
Estimation of Blast-Induced Peak Particle Velocity through the Improved Weighted Random Forest Technique | Litcius