典型文献
Real-time prediction of rock mass classification based on TBM operation big data and stacking technique of ensemble learning
文献摘要:
Real-time prediction of the rock mass class in front of the tunnel face is essential for the adaptive adjustment of tunnel boring machines (TBMs).During the TBM tunnelling process,a large number of operation data are generated,reflecting the interaction between the TBM system and surrounding rock,and these data can be used to evaluate the rock mass quality.This study proposed a stacking ensemble classifier for the real-time prediction of the rock mass classification using TBM operation data.Based on the Songhua River water conveyance project,a total of 7538 TB M tunnelling cycles and the corre-sponding rock mass classes are obtained after data preprocessing.Then,through the tree-based feature selection method,10 key TBM operation parameters are selected,and the mean values of the 10 selected features in the stable phase after removing outliers are calculated as the inputs of classifiers.The pre-processed data are randomly divided into the training set (90%) and test set (10%) using simple random sampling.Besides stacking ensemble classifier,seven individual classifiers are established as the com-parison.These classifiers include support vector machine (SVM),k-nearest neighbors (KNN),random forest (RF),gradient boosting decision tree (GBDT),decision tree (DT),logistic regression (LR) and multi-layer perceptron (MLP),where the hyper-parameters of each classifier are optimised using the grid search method.The prediction results show that the stacking ensemble classifier has a better perfor-mance than individual classifiers,and it shows a more powerful learning and generalisation ability for small and imbalanced samples.Additionally,a relative balance training set is obtained by the synthetic minority oversampling technique (SMOTE),and the influence of sample imbalance on the prediction performance is discussed.
文献关键词:
中图分类号:
作者姓名:
Shaokang Hou;Yaoru Liu;Qiang Yang
作者机构:
State Key Laboratory of Hydroscience and Engineering,Tsinghua University,Beijing,100084,China
文献出处:
引用格式:
[1]Shaokang Hou;Yaoru Liu;Qiang Yang-.Real-time prediction of rock mass classification based on TBM operation big data and stacking technique of ensemble learning)[J].岩石力学与岩土工程学报(英文版),2022(01):123-143
A类:
TBMs,Songhua,generalisation
B类:
Real,prediction,rock,mass,classification,operation,big,data,stacking,technique,ensemble,learning,front,face,essential,adaptive,adjustment,boring,machines,During,tunnelling,large,number,generated,reflecting,interaction,between,system,surrounding,these,can,used,evaluate,quality,This,study,proposed,real,using,Based,River,water,conveyance,project,total,cycles,corre,sponding,classes,obtained,after,preprocessing,Then,through,tree,selection,method,key,parameters,selected,mean,values,features,stable,phase,removing,outliers,calculated,inputs,classifiers,processed,randomly,divided,into,training,set,test,simple,Besides,seven,individual,established,com,parison,These,include,support,vector,nearest,neighbors,KNN,forest,RF,gradient,boosting,decision,GBDT,logistic,regression,LR,multi,layer,perceptron,MLP,where,hyper,each,optimised,grid,search,results,that,better,than,shows,more,powerful,ability,small,imbalanced,samples,Additionally,relative,by,synthetic,minority,oversampling,SMOTE,influence,performance,discussed
AB值:
0.51045
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