In this study, we employed various machine learning-based techniques in predicting factor of safety against slope failures. Different regression methods namely, multi-layer perceptron (MLP), Gaussian process regression (GPR), multiple linear regression (MLR), simple linear regression (SLR), support vector regression (SVR) were used. Traditional methods of slope analysis (e.g., first established in the first half of the twentieth century) used widely as engineering design tools. Offering more progressive design tools, such as machine learning-based predictive algorithms, they draw the attention of many researchers. The main objective of the current study is to evaluate and optimize various machine learning-based and multilinear regression mo...
With the advent of technology and the introduction of computational intelligent methods, the predict...
This paper presents a comparison study between methods of deep learning as a new category of slope s...
Slope stability assessment is a critical concern in construction projects. This study explores the u...
Over the years, machine learning, which is a well-known method in artificial intelligent (AI) field ...
Slope stability is the most important stage in the stabilization process for different scale slopes,...
In this paper, the authors investigated the applicability of combining machine-learning-based models...
Featured Application: The presented paper conducted a comparative analysis based on well-known MLP, ...
Slope engineering is a type of complex system engineering that is mostly involved in water conservan...
Geomechanical analysis plays a major role in providing a safe working environment in an active mine....
Artificial Neural Network (ANN) such as backpropagation learning algorithm has been successfully use...
Landslide disaster risk reduction necessitates the investigation of different geotechnical causal fa...
Slope failures lead to large casualties and catastrophic societal and economic consequences, thus po...
Uttarkashi region is highly prone to landslides because of its geological structure. The exact occur...
66-74Uttarkashi region is highly prone to landslides because of its geological structure. The exact ...
AbstractThis paper examines the capability of a least square support vector machine (LSSVM) model fo...
With the advent of technology and the introduction of computational intelligent methods, the predict...
This paper presents a comparison study between methods of deep learning as a new category of slope s...
Slope stability assessment is a critical concern in construction projects. This study explores the u...
Over the years, machine learning, which is a well-known method in artificial intelligent (AI) field ...
Slope stability is the most important stage in the stabilization process for different scale slopes,...
In this paper, the authors investigated the applicability of combining machine-learning-based models...
Featured Application: The presented paper conducted a comparative analysis based on well-known MLP, ...
Slope engineering is a type of complex system engineering that is mostly involved in water conservan...
Geomechanical analysis plays a major role in providing a safe working environment in an active mine....
Artificial Neural Network (ANN) such as backpropagation learning algorithm has been successfully use...
Landslide disaster risk reduction necessitates the investigation of different geotechnical causal fa...
Slope failures lead to large casualties and catastrophic societal and economic consequences, thus po...
Uttarkashi region is highly prone to landslides because of its geological structure. The exact occur...
66-74Uttarkashi region is highly prone to landslides because of its geological structure. The exact ...
AbstractThis paper examines the capability of a least square support vector machine (LSSVM) model fo...
With the advent of technology and the introduction of computational intelligent methods, the predict...
This paper presents a comparison study between methods of deep learning as a new category of slope s...
Slope stability assessment is a critical concern in construction projects. This study explores the u...