AbstractThis paper presents application of five soft-computing techniques, artificial neural networks, support vector regression, gene expression programming, grouping method of data handling (GMDH) neural network and adaptive-network-based fuzzy inference system, to predict maximum scour hole depth downstream of a sluice gate. The input parameters affecting the scour depth are the sediment size and its gradation, apron length, sluice gate opening, jet Froude number and the tail water depth. Six non-dimensional parameters were achieved to define a functional relationship between the input and output variables. Published data were used from the experimental researches. The results of soft-computing techniques were compared with empirical and...
In this report a prediction method is developed for scour around monopiles. A soft computing techniq...
AbstractsIn the present study, neuro-fuzzy based-group method of data handling (NF-GMDH) as an adapt...
Artificial neural networks (ANN’s) are associated with difficulties like lack of success in a given ...
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...
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...
The determination of scour characteristics in the downstream of sluice gate is highly important for ...
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...
This paper uses nonlinear regression, Artificial Neural Network (ANN) and Genetic Programming (GP) a...
Preventing plunge pool scouring in hydraulic structures is crucial in hydraulic engineering. Althoug...
Prediction of scouring characteristics is one of the major issues in hydraulic and hydrology enginee...
Investigators in the past had noticed that application of a soft computing tool like artificial neur...
The main aims and contributions of the present paper are to use new soft computing methods for the s...
In this report a prediction method is developed for scour around monopiles. A soft computing techniq...
AbstractsIn the present study, neuro-fuzzy based-group method of data handling (NF-GMDH) as an adapt...
Artificial neural networks (ANN’s) are associated with difficulties like lack of success in a given ...
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...
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...
The determination of scour characteristics in the downstream of sluice gate is highly important for ...
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...
This paper uses nonlinear regression, Artificial Neural Network (ANN) and Genetic Programming (GP) a...
Preventing plunge pool scouring in hydraulic structures is crucial in hydraulic engineering. Althoug...
Prediction of scouring characteristics is one of the major issues in hydraulic and hydrology enginee...
Investigators in the past had noticed that application of a soft computing tool like artificial neur...
The main aims and contributions of the present paper are to use new soft computing methods for the s...
In this report a prediction method is developed for scour around monopiles. A soft computing techniq...
AbstractsIn the present study, neuro-fuzzy based-group method of data handling (NF-GMDH) as an adapt...
Artificial neural networks (ANN’s) are associated with difficulties like lack of success in a given ...