Title of article :
Bedload transport predictions based on field measurement data by combination of artificial neural network and genetic programming
Author/Authors :
Zangeneh Sirdari، Zahra نويسنده River Engineering and Urban Drainage Research Centre (REDAC),University of Sains Malaysia, Engineering Campus,Penang,Malaysia , , Ghani، Ab. نويسنده River Engineering and Urban Drainage Research Centre (REDAC),University of Sains Malaysia, Engineering Campus,Penang,Malaysia , , Zangeneh Sirdari، Nasim نويسنده Islamic Azad University, Garmsar Branch,Garmsar,Iran ,
Issue Information :
فصلنامه با شماره پیاپی سال 2015
Pages :
10
From page :
85
To page :
94
Abstract :
Bedload transport is an essential component of river dynamics and estimation of its rate is important to many aspects of river management. In this study, measured bedload by Helley Smith sampler was used to estimate the bedload transport of Kurau River in Malaysia. An artificial neural network, genetic programming and a combination of genetic programming and a neural network were used to estimate the bedload carried in Kurau River, based on bedload transport measurement data and hydraulic variables. A statistical analysis was carried out to validate methods by computing RMSE, MARE and inequality ratio (U). In general, the ability of the artificial neural network combined with genetic programming with R2 equal to 0.95, RMSE equal to 0.1 as a precipitation predictive tool for predicting the bedload transport rate was observed as being acceptable.
Keywords :
bedload transport , Genetic programming , Kurau River , Artificial neural network
Journal title :
Pollution
Serial Year :
2015
Journal title :
Pollution
Record number :
2397072
Link To Document :
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