An artificial neural network (ANN) was developed to predict the depth-integrated alongshore suspended sediment transport rate using 4 input variables (water depth, wave height and period, and alongshore velocity). The ANN was trained and validated using a dataset obtained on the intertidal beach of Egmond aan Zee, the Netherlands. Rootmean- square deviation between observations and predictions was calculated to show that, for this specific dataset, the ANN ("rms=0.43) outperforms the commonly used Bailard (1981) formula ("rms=1.63), even when this formula is calibrated ("rms=0.66). Because of correlations between input variables, the predictive quality of the ANN can be improved further by considering only 3 out of the 4 available input var...
This study investigates the performance of artificial neural networks in predicting the incipient se...
Predictions of long-shore sediment transport rate (LSTR) are a vital task for coastal engineers in t...
Water current modelling and prediction techniques along coastal inlets have attracted growing concer...
An artificial neural network (ANN) was developed to predict the depth-integrated alongshore suspende...
Correct estimation of bar volumes, wave height, wave period and median sediment diameter is crucial ...
Prediction of sediment load are required in a wide spectrum of problem such as design of the dead vo...
In order to understand the features of coastal zone and to utilize the coastal areas, it is necessar...
The amount of sand moving parallel to a coastline forms a prerequisite for many harbor design projec...
The main purpose of the study is to establish an effective model which includes nonlinear relations ...
The paper describes the training, validation, testing, and application of models of artificial neura...
Information on suspended sediment load is crucial to water management and environmental protection. ...
Estimates of sediment loads in natural streams are required for a wide spectrum of water resources e...
Estimation of sediment concentration in rivers is very important for water resources projects planni...
The methods available for sediment concentration and flux estimation are largely empirical, with sed...
Rijkswaterstaat and the Dutch contractors have many years of experience in the removal of silt and s...
This study investigates the performance of artificial neural networks in predicting the incipient se...
Predictions of long-shore sediment transport rate (LSTR) are a vital task for coastal engineers in t...
Water current modelling and prediction techniques along coastal inlets have attracted growing concer...
An artificial neural network (ANN) was developed to predict the depth-integrated alongshore suspende...
Correct estimation of bar volumes, wave height, wave period and median sediment diameter is crucial ...
Prediction of sediment load are required in a wide spectrum of problem such as design of the dead vo...
In order to understand the features of coastal zone and to utilize the coastal areas, it is necessar...
The amount of sand moving parallel to a coastline forms a prerequisite for many harbor design projec...
The main purpose of the study is to establish an effective model which includes nonlinear relations ...
The paper describes the training, validation, testing, and application of models of artificial neura...
Information on suspended sediment load is crucial to water management and environmental protection. ...
Estimates of sediment loads in natural streams are required for a wide spectrum of water resources e...
Estimation of sediment concentration in rivers is very important for water resources projects planni...
The methods available for sediment concentration and flux estimation are largely empirical, with sed...
Rijkswaterstaat and the Dutch contractors have many years of experience in the removal of silt and s...
This study investigates the performance of artificial neural networks in predicting the incipient se...
Predictions of long-shore sediment transport rate (LSTR) are a vital task for coastal engineers in t...
Water current modelling and prediction techniques along coastal inlets have attracted growing concer...