Although many researchers have studied the flow hydraulics in compound channels, there are still many complicated problems in determination of their flow rating curves. Many different methods have been presented for these channels but extending them for all types of compound channels with different geometrical and hydraulic conditions is certainly difficult. In this study, by aid of nearly 400 laboratory and field data sets of geometry and flow rating curves from 30 different straight compound sections and using artificial neural networks (ANNs), flow discharge in compound channels was estimated. 13 dimensionless input variables including relative depth, relative roughness, relative width, aspect ratio, bed slope, main channel side slopes, ...
Prediction of side flow from a main channel through lateral orifices mainly for irrigation and envir...
Since many years ago, flow measurement has become a fundamental issue in hydraulic engineering. One ...
This research aims at flow in compound channels using physical modelling, are important for understa...
Accurate prediction of discharge in compound open channel is extremely essential for river engineeri...
Each river in the world is unique. Some are gently curved, others are meander, and some others are r...
Most natural streams or rivers exhibit a compound or two-stage geometry consisting of a main channel...
The computation of total flow in a flooded river is very crucial work in designing economical flood ...
The author developed two methods for predicting the discharge capacity of uniform meandering compoun...
This paper presents numerical analysis for prediction of depth-averaged velocity distribution of com...
Prediction and modeling of hydraulic phenomenon is an important part of hydraulic engineering activi...
An-artificial neural network (ANN) model was developed to predict the longitudinal dispersion coeffi...
A sharp-crested circular side orifice is a crucial element when it comes to diverting flow from prim...
AbstractEstimating the discharge coefficient using hydraulic and geometrical specifications is one o...
Almost every river found in nature are meandering rivers. So to understand the behaviour of the rive...
Estimating Manning’s roughness coefficient ( n ) is one of the essential factors in pr...
Prediction of side flow from a main channel through lateral orifices mainly for irrigation and envir...
Since many years ago, flow measurement has become a fundamental issue in hydraulic engineering. One ...
This research aims at flow in compound channels using physical modelling, are important for understa...
Accurate prediction of discharge in compound open channel is extremely essential for river engineeri...
Each river in the world is unique. Some are gently curved, others are meander, and some others are r...
Most natural streams or rivers exhibit a compound or two-stage geometry consisting of a main channel...
The computation of total flow in a flooded river is very crucial work in designing economical flood ...
The author developed two methods for predicting the discharge capacity of uniform meandering compoun...
This paper presents numerical analysis for prediction of depth-averaged velocity distribution of com...
Prediction and modeling of hydraulic phenomenon is an important part of hydraulic engineering activi...
An-artificial neural network (ANN) model was developed to predict the longitudinal dispersion coeffi...
A sharp-crested circular side orifice is a crucial element when it comes to diverting flow from prim...
AbstractEstimating the discharge coefficient using hydraulic and geometrical specifications is one o...
Almost every river found in nature are meandering rivers. So to understand the behaviour of the rive...
Estimating Manning’s roughness coefficient ( n ) is one of the essential factors in pr...
Prediction of side flow from a main channel through lateral orifices mainly for irrigation and envir...
Since many years ago, flow measurement has become a fundamental issue in hydraulic engineering. One ...
This research aims at flow in compound channels using physical modelling, are important for understa...