The stability of underground entry-type excavations will directly affect the working environment and the safety of staff. Empirical critical span graphs and traditional statistics learning methods can not meet the requirements of high accuracy for stability assessment of entry-type excavations. Therefore, this study proposes a new prediction method based on machine learning to scientifically adjust the critical span graph. Accordingly, the particle swarm optimization (PSO) algorithm is used to optimize the core parameters of the gradient boosting decision tree (GBDT), abbreviated as PSO-GBDT. Moreover, the classification performance of eight other classifiers including GDBT, k-nearest neighbors (KNN), two kinds of support vector machines (S...
Predicting the penetration rate is a complex and challenging task due to the interaction between the...
Estimating surface settlement induced by excavation construction is an indispensable task in tunneli...
Rockburst is a dynamic rock mass failure occurring during underground mining under unfavorable stres...
The stability of underground entry-type excavations will directly affect the working environment and...
AbstractIn this paper, field construction data from the Singapore Metro Line project were used to st...
Machine learning (ML) algorithms have been gradually used in predicting tunneling-induced settlement...
The fast and accurate classification of surrounding rock mass is the basis for tunnel design and con...
The mining industry relies heavily on empirical analysis for design and prediction. An empirical des...
This study predicted soil classification using data gathered during the operation of an earth-pressu...
The aim of this study is to predict the performance of tunnel boring machines (TBMS) using particle ...
In this paper, Artificial Neural Networks (ANN) have been utilized to predict the stability of a pla...
Due to the rapid development of the urban metro system, the situation of new excavation work being c...
This paper proposes a novel grey wolf optimization-extreme learning machine model, namely, the GWO-E...
In the construction of rock tunnels, the penetration rate of the tunnel boring machine (TBM) is infl...
Stability analyses of underground rock excavations are often performed using traditional determinist...
Predicting the penetration rate is a complex and challenging task due to the interaction between the...
Estimating surface settlement induced by excavation construction is an indispensable task in tunneli...
Rockburst is a dynamic rock mass failure occurring during underground mining under unfavorable stres...
The stability of underground entry-type excavations will directly affect the working environment and...
AbstractIn this paper, field construction data from the Singapore Metro Line project were used to st...
Machine learning (ML) algorithms have been gradually used in predicting tunneling-induced settlement...
The fast and accurate classification of surrounding rock mass is the basis for tunnel design and con...
The mining industry relies heavily on empirical analysis for design and prediction. An empirical des...
This study predicted soil classification using data gathered during the operation of an earth-pressu...
The aim of this study is to predict the performance of tunnel boring machines (TBMS) using particle ...
In this paper, Artificial Neural Networks (ANN) have been utilized to predict the stability of a pla...
Due to the rapid development of the urban metro system, the situation of new excavation work being c...
This paper proposes a novel grey wolf optimization-extreme learning machine model, namely, the GWO-E...
In the construction of rock tunnels, the penetration rate of the tunnel boring machine (TBM) is infl...
Stability analyses of underground rock excavations are often performed using traditional determinist...
Predicting the penetration rate is a complex and challenging task due to the interaction between the...
Estimating surface settlement induced by excavation construction is an indispensable task in tunneli...
Rockburst is a dynamic rock mass failure occurring during underground mining under unfavorable stres...