Evaluation of machine learning methods for rock mass classification

被引:0
|
作者
Allan Erlikhman Medeiros Santos
Milene Sabino Lana
Tiago Martins Pereira
机构
[1] Federal University of Ouro Preto – UFOP,Graduate Program in Mineral Engineering
[2] Federal University of Ouro Preto – UFOP,Statistics Department
来源
关键词
Machine learning algorithms; Geomechanical database; Multivariate database; Open pit mine;
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学科分类号
摘要
Solutions in geotechnics have been optimizing with the aid of machine learning methods. The aim of this paper is to apply different machine learning algorithms in order to achieve rock mass classification. It is demonstrated that RMR classification system can be obtained using only variables which are closely related to rock mass quality, instead of all RMR variables, without missing significant accuracy. The different machine learning algorithms used are the naïve Bayes, random forest, artificial neural networks and support vector machines. The variables to calculate RMR, selected by factor analysis, are: rock strength, rock weathering, spacing, persistence and aperture of discontinuities and presence of water. The machine learning models were trained and tested thirty times, with random subsampling, using two-thirds of the total database for training sample. The models presented average accuracy greater than 0.81, which was calculated from the confusion matrix, using the proportion of true positives and true negatives in the test sample. Significant values of efficiency, precision and reproducibility rates were achieved. The study shows the application of machine learning algorithms allows obtaining the RMR classes, even with a small number of variables. In addition, the results of the evaluation metrics of the developed algorithms show that the methodology can be applied to new database, working as a valuable way to achieve rock mass classification.
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页码:4633 / 4642
页数:9
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