AbstractThis paper examines the capability of a least square support vector machine (LSSVM) model for slope stability analysis. LSSVM is firmly based on the theory of statistical learning, using regression and classification techniques. The Factor of Safety (FS) of the slope has been modelled as a regression problem, whereas the stability status (s) of the slope has been modelled as a classification problem. Input parameters of LSSSVM are: unit weight (γ), cohesion (c), angle of internal friction (ϕ), slope angle (β), height (H) and pore water pressure coefficient (ru). The developed LSSVM also gives a probabilistic output. Equations have also been developed for the slope stability analysis. A comparative study has been carried out between ...
In coastal engineering, empirical formulas grounded on experimental works regarding the stability of...
Featured Application: The presented paper conducted a comparative analysis based on well-known MLP, ...
This paper examines the potential of least-square support vector machine (LSVVM) in the prediction o...
AbstractThis paper examines the capability of a least square support vector machine (LSSVM) model fo...
Artificial Neural Network (ANN) such as backpropagation learning algorithm has been successfully use...
In this paper, the authors investigated the applicability of combining machine-learning-based models...
Slope stability is the most important stage in the stabilization process for different scale slopes,...
The stability evaluation of earth slopes is a common practice in geotechnical designs. To account fo...
Slope engineering is a type of complex system engineering that is mostly involved in water conservan...
In this study, we employed various machine learning-based techniques in predicting factor of safety ...
The slope stability analysis is routinely performed by engineers to estimate the stability of river ...
Slope stability analysis is one of the most important problems in geotechnical engineering. The deve...
Over the years, machine learning, which is a well-known method in artificial intelligent (AI) field ...
The safety problem of the slope has always been an important subject in engineering geology, which h...
An infrastructure development in landscape and clearing of more vegetated areas have provided huge c...
In coastal engineering, empirical formulas grounded on experimental works regarding the stability of...
Featured Application: The presented paper conducted a comparative analysis based on well-known MLP, ...
This paper examines the potential of least-square support vector machine (LSVVM) in the prediction o...
AbstractThis paper examines the capability of a least square support vector machine (LSSVM) model fo...
Artificial Neural Network (ANN) such as backpropagation learning algorithm has been successfully use...
In this paper, the authors investigated the applicability of combining machine-learning-based models...
Slope stability is the most important stage in the stabilization process for different scale slopes,...
The stability evaluation of earth slopes is a common practice in geotechnical designs. To account fo...
Slope engineering is a type of complex system engineering that is mostly involved in water conservan...
In this study, we employed various machine learning-based techniques in predicting factor of safety ...
The slope stability analysis is routinely performed by engineers to estimate the stability of river ...
Slope stability analysis is one of the most important problems in geotechnical engineering. The deve...
Over the years, machine learning, which is a well-known method in artificial intelligent (AI) field ...
The safety problem of the slope has always been an important subject in engineering geology, which h...
An infrastructure development in landscape and clearing of more vegetated areas have provided huge c...
In coastal engineering, empirical formulas grounded on experimental works regarding the stability of...
Featured Application: The presented paper conducted a comparative analysis based on well-known MLP, ...
This paper examines the potential of least-square support vector machine (LSVVM) in the prediction o...