AbstractIn the present study, artificial neural networks method (ANNs) is used to estimate the main parameters which used in design of stable alluvial channels. The capability of ANN models to predict the stable alluvial channels dimensions is investigated, where the flow rate and sediment mean grain size were considered as input variables and wetted perimeter, hydraulic radius, and water surface slope were considered as output variables. The used ANN models are based on a back propagation algorithm to train a multi-layer feed-forward network (Levenberg Marquardt algorithm). The proposed models were verified using 311 data sets of field data collected from 61 manmade canals and drains. Several statistical measures and graphical representati...
The author developed two methods for predicting the discharge capacity of uniform meandering compoun...
Due to the complexity of basins morphometric parameters and the hydroclimatic irregularity of the se...
AbstractThe use of artificial neural networks (ANNs) is becoming increasingly common in the analysis...
AbstractIn the present study, artificial neural networks method (ANNs) is used to estimate the main ...
In the present study, artificial neural networks method (ANNs) is used to estimate the main paramete...
In this research, soft computational models including multiple adaptive spline regression model (MAR...
Artificial neural network (ANN) model is proposed as an alternative to the conventional sediment tr...
AbstractIn this paper, artificial neural networks (ANNs) modeling method with back propagation algor...
This study investigates the abilities of artificial neural networks (ANN) to improve the accuracy of...
Estimates of sediment loads in natural streams are required for a wide spectrum of water resources e...
Real accuracy of several regime relationships for designing stable alluvial channels in Egypt was de...
Regime width of alluvial channels is a vital problem in river morphology and channel design. Many eq...
Regime width of alluvial channels is a vital problem in river morphology and channel design. Many eq...
Previously numerous equations were developed using conventional methods to estimate vegetal drag coe...
This thesis describes the use of artificial neural networks (ANNs) to model the relationship between...
The author developed two methods for predicting the discharge capacity of uniform meandering compoun...
Due to the complexity of basins morphometric parameters and the hydroclimatic irregularity of the se...
AbstractThe use of artificial neural networks (ANNs) is becoming increasingly common in the analysis...
AbstractIn the present study, artificial neural networks method (ANNs) is used to estimate the main ...
In the present study, artificial neural networks method (ANNs) is used to estimate the main paramete...
In this research, soft computational models including multiple adaptive spline regression model (MAR...
Artificial neural network (ANN) model is proposed as an alternative to the conventional sediment tr...
AbstractIn this paper, artificial neural networks (ANNs) modeling method with back propagation algor...
This study investigates the abilities of artificial neural networks (ANN) to improve the accuracy of...
Estimates of sediment loads in natural streams are required for a wide spectrum of water resources e...
Real accuracy of several regime relationships for designing stable alluvial channels in Egypt was de...
Regime width of alluvial channels is a vital problem in river morphology and channel design. Many eq...
Regime width of alluvial channels is a vital problem in river morphology and channel design. Many eq...
Previously numerous equations were developed using conventional methods to estimate vegetal drag coe...
This thesis describes the use of artificial neural networks (ANNs) to model the relationship between...
The author developed two methods for predicting the discharge capacity of uniform meandering compoun...
Due to the complexity of basins morphometric parameters and the hydroclimatic irregularity of the se...
AbstractThe use of artificial neural networks (ANNs) is becoming increasingly common in the analysis...