Estimating Manning’s roughness coefficient ( n ) is one of the essential factors in predicting the discharge in a stream. Present research work is focused on prediction of Manning’s n in meandering compound channels by using the Group Method of Data Handling Neural Network (GMDH-NN) approach. The width ratio ( α ) , relative depth ( β ) , sinuosity ( s ) , Channel bed slope ( S o ) , and meander belt width ratio ( ω ) are specified as input parameters for the development of the model. The performance of GMDH-NN is evaluated with two different machine learning techniques, namely the support vector regression (SVR) and multivariate adaptive regression spline (MAR...
In this research, soft computational models including multiple adaptive spline regression model (MAR...
Flow in meandering channel is quite ubiquitous for natural flow systems such as in rives. Rivers gen...
Accurate prediction of discharge in compound open channel is extremely essential for river engineeri...
Estimating Manning’s roughness coefficient ( n ) is one of the essential factors in pr...
Ubiquitous flow bedforms such as ripples in rivers and coastal environments can affect transport con...
An accurate prediction of roughness coefficient is of substantial importance for river management. T...
Accurate prediction of Manning’s roughness coefficient is essential for the computation of conveyanc...
Almost every river found in nature are meandering rivers. So to understand the behaviour of the rive...
The author developed two methods for predicting the discharge capacity of uniform meandering compoun...
Although many researchers have studied the flow hydraulics in compound channels, there are still man...
An-artificial neural network (ANN) model was developed to predict the longitudinal dispersion coeffi...
AbstractEstimating the discharge coefficient using hydraulic and geometrical specifications is one o...
Regime width of alluvial channels is a vital problem in river morphology and channel design. Many eq...
Laboratory experimentations concerning stage-discharge and bed shear stress distribution have been c...
The main objective of the present work is to predict the longitudinal dispersion coefficient in natu...
In this research, soft computational models including multiple adaptive spline regression model (MAR...
Flow in meandering channel is quite ubiquitous for natural flow systems such as in rives. Rivers gen...
Accurate prediction of discharge in compound open channel is extremely essential for river engineeri...
Estimating Manning’s roughness coefficient ( n ) is one of the essential factors in pr...
Ubiquitous flow bedforms such as ripples in rivers and coastal environments can affect transport con...
An accurate prediction of roughness coefficient is of substantial importance for river management. T...
Accurate prediction of Manning’s roughness coefficient is essential for the computation of conveyanc...
Almost every river found in nature are meandering rivers. So to understand the behaviour of the rive...
The author developed two methods for predicting the discharge capacity of uniform meandering compoun...
Although many researchers have studied the flow hydraulics in compound channels, there are still man...
An-artificial neural network (ANN) model was developed to predict the longitudinal dispersion coeffi...
AbstractEstimating the discharge coefficient using hydraulic and geometrical specifications is one o...
Regime width of alluvial channels is a vital problem in river morphology and channel design. Many eq...
Laboratory experimentations concerning stage-discharge and bed shear stress distribution have been c...
The main objective of the present work is to predict the longitudinal dispersion coefficient in natu...
In this research, soft computational models including multiple adaptive spline regression model (MAR...
Flow in meandering channel is quite ubiquitous for natural flow systems such as in rives. Rivers gen...
Accurate prediction of discharge in compound open channel is extremely essential for river engineeri...