In recent years, the employment of artificial neural networks (ANNs) has risen in various engineering fields. ANNs have been applied to a range of geotechnical engineering problems and have shown promising outcomes. The aim of this article is to enhance the effectiveness of estimating unfamiliar intermediate values from existing shear stress data by employing ANNs. Artificial neural network modelling was undertaken through the Regression Learner program that is integrated with the Matlab 2023a software package. This program offers a user-friendly graphical interface for developing AI models absent of the need for any coding. The validation and training of the ANNs were executed by relying on shear box test data which had been conducted at t...
Artificial neural networks (ANN) as new techniques employed for the development of predictive models...
© 2018 IEEE. The principal aim of this study was to develop and verify a new Artificial Intelligence...
This study investigated the relationships between the electrical and selected mechanical properties ...
Abstract- The behaviour of soil at the location of the project and interactions of the earth materia...
Geotechnical structures, design of embankment, earth and rock fill dam, tunnels, and slope stability...
This study presents a novel method for predicting the undrained shear strength (cu) using artificial...
The undrained shear strength of organic soils can be evaluated based on measurements obtained from t...
In engineering practice, due to the high compressibility and very low shear strength of organic soil...
WOS: 000281499100006Laboratory prediction of the unconfined compression strength (UCS) of cohesive s...
WOS: 000257088900004Great efforts are required for determination of the effective stress parameter c...
WOS: 000272710700009In recent years, the Artificial Neural Network (ANN) modelling that has been use...
WOS: 000287419900105Particle shape is one of the most important factors affecting the shear strength...
Because shear strength parameters highly influence the bearing capacity of soils, several researcher...
The main objective of this study is to evaluate and compare the performance of different machine lea...
This study deals with development of artificial neural networks (ANNs) and multiple regression analy...
Artificial neural networks (ANN) as new techniques employed for the development of predictive models...
© 2018 IEEE. The principal aim of this study was to develop and verify a new Artificial Intelligence...
This study investigated the relationships between the electrical and selected mechanical properties ...
Abstract- The behaviour of soil at the location of the project and interactions of the earth materia...
Geotechnical structures, design of embankment, earth and rock fill dam, tunnels, and slope stability...
This study presents a novel method for predicting the undrained shear strength (cu) using artificial...
The undrained shear strength of organic soils can be evaluated based on measurements obtained from t...
In engineering practice, due to the high compressibility and very low shear strength of organic soil...
WOS: 000281499100006Laboratory prediction of the unconfined compression strength (UCS) of cohesive s...
WOS: 000257088900004Great efforts are required for determination of the effective stress parameter c...
WOS: 000272710700009In recent years, the Artificial Neural Network (ANN) modelling that has been use...
WOS: 000287419900105Particle shape is one of the most important factors affecting the shear strength...
Because shear strength parameters highly influence the bearing capacity of soils, several researcher...
The main objective of this study is to evaluate and compare the performance of different machine lea...
This study deals with development of artificial neural networks (ANNs) and multiple regression analy...
Artificial neural networks (ANN) as new techniques employed for the development of predictive models...
© 2018 IEEE. The principal aim of this study was to develop and verify a new Artificial Intelligence...
This study investigated the relationships between the electrical and selected mechanical properties ...