ABSTRACT
Monthly stream flow forecasting can provide crucial information on hydrological applications including water resource management and flood mitigation systems. In this statistical study, time series and artificial intelligence methods were evaluated according to implementation of each time-series technique to find an effective tool for stream flow prediction in flood forecasting. This paper explores the application of water level, rainfall data and input time series into three different models; linear regression (LR), auto-regressive integrated moving average (ARIMA) and artificial neural networks (ANN). The performances of the models were compared based on the maximum coefficient of determination (R2) and minimum root means square error (RMSE). Based on the results the ANN model presents the most accurate measurement, with the R2 value of 0.868 and 18% RMSE. The present study suggests that ANN is the best model due to its ability to recognise times series patterns and to understand non-linear relationships.
Acknowledgements
The authors wish to acknowledge and thank the following; Department of Irrigation and Drainage (DID), World Wildlife Foundation (WWF) and Ministry of Country and Town Planning (MCTP) for their cooperation for the information and secondary data supplied. The authors also offer thanks to lecturers in the faculty of Environmental Study, UPM for the guidance and assistance during this study period.
Disclosure statement
No potential conflict of interest was reported by the authors.