Title of article :
Runoff forecasting by artificial neural network and conventional model
Author/Authors :
Ghumman, A.R. Al Qassim University - Department of Civil Engineering, Saudi Arabia , Ghazaw, Yousry M. Al Qassim University - Department of Civil Engineering, Saudi Arabia , Sohail, A.R. Water Resources Murray–Darling Basin Authority, Australia , Watanabe, K. Saitama University - Technical Development Center - Saitama Package-D, Japan
From page :
345
To page :
350
Abstract :
Rainfall runoff models are highly useful for water resources planning and development. In the present study rainfall–runoff model based on Artificial Neural Networks (ANNs) was developed and applied on a watershed in Pakistan. The model was developed to suite the conditions in which the collected dataset is short and the quality of dataset is questionable. The results of ANN models were compared with a mathematical conceptual model. The cross validation approach was adopted for the generalization of ANN models. The precipitation used data was collected from Meteorological Department Karachi Pakistan. The results confirmed that ANN model is an important alternative to conceptual models and it can be used when the range of collected dataset is short and data is of low standard.
Keywords :
Hub River , ANN models , Mathematical models , Low quality data , Runoff analysis
Journal title :
Alexandria Engineering Journal
Journal title :
Alexandria Engineering Journal
Record number :
2540012
Link To Document :
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