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Dual Artificial Neural Network for Rainfall-Runoff Forecasting
Author(s) -
Pallavi Mittal,
Swaptik Chowdhury,
Sangeeta Roy,
Nikhil Bhatia,
Roshan Srivastav
Publication year - 2012
Publication title -
journal of water resource and protection
Language(s) - English
Resource type - Journals
eISSN - 1945-3108
pISSN - 1945-3094
DOI - 10.4236/jwarp.2012.412118
Subject(s) - artificial neural network , surface runoff , dual (grammatical number) , environmental science , stream flow , computer science , hydrology (agriculture) , meteorology , drainage basin , machine learning , engineering , geography , ecology , cartography , art , literature , biology , geotechnical engineering
One of the principal issues related to hydrologic models for prediction of runoff is the estimation of extreme values (floods). It is well understood that unless the models capture the dynamics of rainfall-runoff process, the improvement in prediction of such extremes is far from reality. In this paper, it is proposed to develop a dual (combined and paralleled) artificial neural network (D-ANN), which aims to improve the models performance, especially in terms of extreme values. The performance of the proposed dual-ANN model is compared with that of feed forward ANN (FF-ANN) model, the later being the most common ANN model used in hydrologic literature. The forecasting exercise is carried out for hourly river flow data of Kolar Basin, India. The results of the comparison indicate that the D-ANN model performs better than the FF-ANN model

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