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The use of artificial neural networks to analyze and predict alongshore sediment transport
2010
Nonlinear Processes in Geophysics
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 (ε rms =0.43) outperforms the commonly
doi:10.5194/npg-17-395-2010
fatcat:6loo64woxjhc7b4jgpmgb34h3y