Supervised machine learning and its algorithms are a developing trend in the prediction of rockfill material (RFM) mechanical properties. This study investigates supervised learning algorithms—support vector machine (SVM), random forest (RF), AdaBoost, and k-nearest neighbor (KNN) for the prediction of the RFM shear strength. A total of 165 RFM case studies with 13 key material properties for rockfill characterization have been applied to construct and validate the models. The performance of the SVM, RF, AdaBoost, and KNN models are assessed using statistical parameters, including the coefficient of determination (R2), Nash–Sutcliffe efficiency (NSE) coefficient, root mean square error (RMSE), and ratio of the RMSE to the standard deviation...
The paper suggests a method based on machine learning techniques to predict the stress-strain relati...
Predicting the penetration rate is a complex and challenging task due to the interaction between the...
The use of machine learning techniques to predict material strength is becoming popular. However, no...
The shear strength of rockfill materials (RFM) is an important engineering parameter in the design a...
The main objective of this study is to evaluate and compare the performance of different machine lea...
The rock fracture toughness (RFT) is significantly influenced by thermal treatments. Accurate evalua...
The mechanical behavior of the rockfill materials (RFMs) used in a dam’s shell must be evaluated for...
Accurate prediction of compressive strength of rocks relies on the rate-dependent behaviors of rocks...
The need of shear strength measurements of soil in the design phase of geotechnical engineering is a...
This study presents a novel method for predicting the undrained shear strength (cu) using artificial...
The mechanical behavior of the rockfill materials (RFMs) used in a dam’s shell must be evaluated for...
The purpose of this study is the accurate prediction of undrained shear strength using Standard Pene...
Stability with first time or reactivated landslides depends upon the residual shear strength of soil...
Shear strength parameters, including cohesion and friction angle, are among the most crucial factors...
Shear strength parameters, including cohesion and friction angle, are among the most crucial factors...
The paper suggests a method based on machine learning techniques to predict the stress-strain relati...
Predicting the penetration rate is a complex and challenging task due to the interaction between the...
The use of machine learning techniques to predict material strength is becoming popular. However, no...
The shear strength of rockfill materials (RFM) is an important engineering parameter in the design a...
The main objective of this study is to evaluate and compare the performance of different machine lea...
The rock fracture toughness (RFT) is significantly influenced by thermal treatments. Accurate evalua...
The mechanical behavior of the rockfill materials (RFMs) used in a dam’s shell must be evaluated for...
Accurate prediction of compressive strength of rocks relies on the rate-dependent behaviors of rocks...
The need of shear strength measurements of soil in the design phase of geotechnical engineering is a...
This study presents a novel method for predicting the undrained shear strength (cu) using artificial...
The mechanical behavior of the rockfill materials (RFMs) used in a dam’s shell must be evaluated for...
The purpose of this study is the accurate prediction of undrained shear strength using Standard Pene...
Stability with first time or reactivated landslides depends upon the residual shear strength of soil...
Shear strength parameters, including cohesion and friction angle, are among the most crucial factors...
Shear strength parameters, including cohesion and friction angle, are among the most crucial factors...
The paper suggests a method based on machine learning techniques to predict the stress-strain relati...
Predicting the penetration rate is a complex and challenging task due to the interaction between the...
The use of machine learning techniques to predict material strength is becoming popular. However, no...