Prediction and Assessment of Rock Burst Using Various Meta-heuristic Approaches - Mining, Metallurgy & Exploration (2021)

- Organization:
- Society for Mining, Metallurgy & Exploration
- Pages:
- 7
- File Size:
- 977 KB
- Publication Date:
- Mar 17, 2021
Abstract
One of the utmost severe mining catastrophes in underground hard rock mines is rock burst phenomena. It can lead to damage to
mine openings and equipment as well as trigger accidents or even threat to life as well. Due to this, a number of researchers are
forced to study some easy-to-use alternative methods to predict the rock burst occurrence. Nevertheless, due to the extremely
multifaceted relation between mechanical, geological and geometric factors of the mines, the conventional prediction methods
are not able to produce accurate results. With the expansion of machine learning methods, a revolution in the rock burst
occurrence has become imaginable. In present study, three machine learning methods, namely XGBoost, decision tree and
support vector machine, are utilized to predict the occurrence of rock burst in various underground projects. A total of 134 rock
burst events were gathered together from various published literatures comprising maximum tangential stress (MTS), elastic
energy index (EEI), uniaxial compressive strength and uniaxial tensile stress (UTS) that have been used to develop various
machine learning models. The performance of machine learning methods is evaluated based on the accuracy, sensitivity and
specificity of the rock burst prediction.
Citation
APA:
(2021) Prediction and Assessment of Rock Burst Using Various Meta-heuristic Approaches - Mining, Metallurgy & Exploration (2021)MLA: Prediction and Assessment of Rock Burst Using Various Meta-heuristic Approaches - Mining, Metallurgy & Exploration (2021). Society for Mining, Metallurgy & Exploration, 2021.