Prediction of scouring characteristics is one of the major issues in hydraulic and hydrology engineering. Over the past five decades, numerous empirical formulations (EFs), based on the regression of scouring data observed from laboratory experiments in the field, have been developed to predict scouring characteristics (typically, the equilibrium scour depth); yet, these EFs are sensitive to uncertainty of effective parameters and in some cases could not comprehend the actual internal mechanism between variables. In the last 20 years, Soft Computing (SC) approaches have been increasingly adopted as an alternative for modeling scouring depth surrounding hydraulic structures. In this respect, several SC algorithms are examined as new era of m...
The performance of soft computing techniques to analyse and interpret the experimental data of local...
Local scour depth at complex piers (LSCP) cause expensive costs when constructing bridges. In this s...
This paper uses nonlinear regression, Artificial Neural Network (ANN) and Genetic Programming (GP) a...
Prediction of scouring characteristics is one of the major issues in hydraulic and hydrology enginee...
The problem of accurate prediction of the depth of scour around hydraulic structure (trajectory spil...
Abstract The accurate prediction of the depth of scour around hydraulic structure (trajectory spillw...
This paper presents application of five soft-computing techniques, artificial neural networks, suppo...
AbstractThis paper presents application of five soft-computing techniques, artificial neural network...
This paper presents the results of an investigation on scour around pile groups under steady current...
The main aims and contributions of the present paper are to use new soft computing methods for the s...
Scour depth around bridge abutment is a crucial parameter to design the protective spur dike. Costly...
The determination of scour characteristics in the downstream of sluice gate is highly importantfor d...
In this report a prediction method is developed for scour around monopiles. A soft computing techniq...
The determination of scour characteristics in the downstream of sluice gate is highly important for ...
Preventing plunge pool scouring in hydraulic structures is crucial in hydraulic engineering. Althoug...
The performance of soft computing techniques to analyse and interpret the experimental data of local...
Local scour depth at complex piers (LSCP) cause expensive costs when constructing bridges. In this s...
This paper uses nonlinear regression, Artificial Neural Network (ANN) and Genetic Programming (GP) a...
Prediction of scouring characteristics is one of the major issues in hydraulic and hydrology enginee...
The problem of accurate prediction of the depth of scour around hydraulic structure (trajectory spil...
Abstract The accurate prediction of the depth of scour around hydraulic structure (trajectory spillw...
This paper presents application of five soft-computing techniques, artificial neural networks, suppo...
AbstractThis paper presents application of five soft-computing techniques, artificial neural network...
This paper presents the results of an investigation on scour around pile groups under steady current...
The main aims and contributions of the present paper are to use new soft computing methods for the s...
Scour depth around bridge abutment is a crucial parameter to design the protective spur dike. Costly...
The determination of scour characteristics in the downstream of sluice gate is highly importantfor d...
In this report a prediction method is developed for scour around monopiles. A soft computing techniq...
The determination of scour characteristics in the downstream of sluice gate is highly important for ...
Preventing plunge pool scouring in hydraulic structures is crucial in hydraulic engineering. Althoug...
The performance of soft computing techniques to analyse and interpret the experimental data of local...
Local scour depth at complex piers (LSCP) cause expensive costs when constructing bridges. In this s...
This paper uses nonlinear regression, Artificial Neural Network (ANN) and Genetic Programming (GP) a...