Abstract

Accurate prediction of short-term rockburst has a significant role in improving the safety of workers in mining and geotechnical projects. The rockburst occurrence is nonlinearly correlated with its influencing factors that guarantee imprecise predicting results by employing the traditional methods. In this study, three approaches including including t-distributed stochastic neighbor embedding (t-SNE), K-means clustering, and extreme gradient boosting (XGBoost) were employed to predict the short-term rockburst risk. A total of 93 rockburst patterns with six influential features from micro seismic monitoring events of the Jinping-II hydropower project in China were used to create the database. The original data were randomly split into training and testing sets with a 70/30 splitting ratio. The prediction practice was followed in three steps. Firstly, a state-of-the-art data reduction mechanism t-SNE was employed to reduce the exaggeration of the rockburst database. Secondly, an unsupervised machine learning, i.e., K-means clustering, was adopted to categorize the t-SNE dataset into various clusters. Thirdly, a supervised gradient boosting machine learning method i.e., XGBoost was utilized to predict various levels of short-term rockburst database. The classification accuracy of XGBoost was checked using several performance indices. The results of the proposed model serve as a great benchmark for future short-term rockburst levels prediction with high accuracy.

Highlights

  • Rockburst is an abrupt and violent failure of the rock mass that results in personnel injury and economic loss in underground rock excavations [1,2]

  • The accuracy for the overall testing dataset was 88 percent, indicating that the XGBoost combined with t-distributed stochastic neighbor embedding (t-stochastic neighbor embedding (SNE)) and K-means clustering performed well in this study

  • The robustness of the obtained framework research work developed t-SNE+K-means clustering+XGBoost to predict the was authenticated by analyzing theand outcomes for the framework using different predict rockburst levels efficiently accurately

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Summary

Introduction

Rockburst is an abrupt and violent failure of the rock mass that results in personnel injury and economic loss in underground rock excavations [1,2]. Rockburst has been a serious threat to many engineering projects (i.e., mining and geotechnical) around the globe. In China, with the extensive depth of underground coal mines and underground rock excavations [5], the rockburst hazard is becoming more severe and frequent for rock engineering [3,4]. Rockburst has been widely reported in several countries around the globe. In Canada, rockburst cases are reported in more than 15 mines [6]. From 1936 to 1993, the United States documented more than 172 rockburst cases in which more than 78 fatalities and 158 injuries occurred [6,7]

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