4.5 Article

An Intelligent Rockburst Prediction Model Based on Scorecard Methodology

期刊

MINERALS
卷 11, 期 11, 页码 -

出版社

MDPI
DOI: 10.3390/min11111294

关键词

rockburst; scorecard; intelligence prediction; interpretability; class weights; machine learning

资金

  1. Fundamental Research Funds for the Central Universities
  2. Youth Teacher International Exchange and Growth Program [QNXM20210004]
  3. National Natural Science Foundation of China [52011530037, 51904019, 51634001]

向作者/读者索取更多资源

This study developed an intelligent rockburst risk prediction model using the scorecard methodology, which has high accuracy and interpretability. The results show that the model has a high accuracy, low false alarm rate, and low missed alarm rate in predicting rockburst in riverside hydropower stations, but increasing hazard sample category weights can lead to a higher false alarm rate.
Rockburst is a serious hazard in underground engineering, and accurate prediction of rockburst risk is challenging. To construct an intelligent prediction model of rockburst risk with interpretability and high accuracy, three binary scorecards predicting different risk levels of rockburst were constructed using ChiMerge, evidence weight theory, and the logistic regression algorithm. An intelligent rockburst prediction model based on scorecard methodology (IRPSC) was obtained by integrating the three scorecards. The effects of hazard sample category weights on the missed alarm rate, false alarm rate, and accuracy of the IRPSC were analyzed. Results show that the accuracy, false alarm rate, and missed alarm rate of the IRPSC for rockburst prediction in riverside hydropower stations are 75%, 12.5%, and 12.5%, respectively. Setting higher hazard sample category weights can reduce the missed alarm rate of IRPSC, but it will lead to a higher false alarm rate. The IRPSC can adaptively adjust the threshold and weight value of the indicator and convert the abstract machine learning model into a tabular form, which overcomes the commonly black box problems of machine learning model, as well as is of great significance to the application of machine learning in rockburst risk prediction.

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