Publication | Open Access
Forecasting flows in Apalachicola River using neural networks
110
Citations
15
References
2004
Year
HydrometeorologyForecasting MethodologyHydrological PredictionEngineeringWater ResourcesAnn ModelCivil EngineeringFlood ForecastingHydrologic EngineeringRiver FlowNeural NetworksForecastingHydrological ModelingHydrologyArtificial Neural NetworkIntelligent ForecastingWater Quality Forecasting
Abstract Forecasting river flow is important to water resources management and planning. In this study, an artificial neural network (ANN) model was successfully developed to forecast river flow in Apalachicola River. The model used a feed‐forward, back‐propagation network structure with an optimized conjugated training algorithm. Using long‐term observations of rainfall and river flow during 1939–2000, the ANN model was satisfactorily trained and verified. Model predictions of river flow match well with the observations. The correlation coefficients between forecasting and observation for daily, monthly, quarterly and yearly flow forecasting are 0·98, 0·95, 0·91 and 0·83, respectively. Results of the forecasted flow rates from the ANN model were compared with those from a traditional autoregressive integrated moving average (ARIMA) forecasting model. Results indicate that the ANN model provides better accuracy in forecasting river flow than does the ARIMA model. Copyright © 2004 John Wiley & Sons, Ltd.
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