Publication | Closed Access
A real-time intelligent classification model using machine learning for tunnel surrounding rock and its application
33
Citations
36
References
2023
Year
Artificial IntelligenceUnderground InfrastructureEngineeringMachine LearningIntelligent SystemsGeotechnical EngineeringSupport Vector MachineData SciencePhysic Aware Machine LearningPattern RecognitionSvm ClassifierRock Mass RatingRock GradeComputer ScienceUnderground ConstructionEngineering GeologyData ClassificationCivil EngineeringConstruction ManagementClassifier SystemConstruction Engineering
Real-time and accurate prediction of surrounding rock grade is crucial for tunnel dynamic construction and design. However, the internationally accepted semi-quantitative methods (e.g. rock mass rating (RMR), Q, and basic quality (BQ)) cannot provide fast and accurate classification in construction. This study proposed an intelligent surrounding rock classification method and a tunnel information management system, which can predict the surrounding rock grade in real-time and accurately. A database is collected with 286 cases in China, including seven geological parameters and surrounding rock grades. Based on different training parameters, 12 classification models are established using VGGNet, ResNet, and support vector machine (SVM) algorithms. The accuracy of the SVM classifier is 93.02%, which performs better than the VGGNet and ResNet classifiers. Moreover, precision, recall, F-measure, receiver operating characteristic (ROC), and 20-case verification show that the SVM classification model has greater robustness in learning and generalising for small and imbalanced samples. Additionally, a tunnel information management system is developed with cloud technology, which can accurately predict the surrounding rock grade within 10 s. Overall, the achievements of this study can provide valuable references for real-time rock mass classification in traffic tunnels and underground powerhouses.
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