Title of article :
Rainfall-Runoff Forecasting with Wavelet-Neural Network Approach:A Case Study of Kızılırmak River
Author/Authors :
TERZİ, Özlem Süleyman Demirel Üniversitesi - Teknoloji Fakültesi - İnşaat Mühendisliği Bölümü, TURKEY , BARAK, Melike Süleyman Demirel Üniversitesi - Teknoloji Fakültesi - İnşaat Mühendisliği Bölümü, TURKEY
From page :
546
To page :
557
Abstract :
The models have been developed by using the wavelet transform technique (W) and artificial neural networks (ANN)methods for the forecasting of runoff which is an important factor in the planning of water resources. The rainfall data of Sivas meteorological station were used to develop the runoff forecasting models for Söğütlühan runoff station on Kızılırmak River. Firstly, the ANN models were developed by using the measured original rainfall series. Then, the measured rainfall data was decomposed into sub-series by the wavelet transform. The wavelet-artificial neural network (D-ANN) models were developed by using the rainfall sub-series. When the developed models were compared with the measured values, it was shown that the D-ANN models have better performance than the ANN models obtained withthe original rainfall series.
Keywords :
Rainfall , Runoff , Wavelet transform , Artificial neural networks , Kızılırmak river
Journal title :
Journal of Agricultural Sciences
Journal title :
Journal of Agricultural Sciences
Record number :
2678095
Link To Document :
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