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Utilizing artificial neural network for forecasting groundwater table depths fluctuations

1 Ph. D. Departement of Civil Engineering, Islamic Azad University, Branch of Lahijan, Iran

World Journal of Engineering

ISSN: 1708-5284

Article publication date: 21 January 2013

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Abstract

This study presented the model of predicting the water table fluctuation in flood plain of Sepidroud watershed (North of Iran-Gilan). The model for prediction of water table depth was developed leaning on artificial neural network. The neural network with different numbers of hidden layer neurons was developed by using 4 years (2004-2007) monthly rainfall, potential evapotranspiration and influencing wells as input and water table depth as output. The best model was selected based on mean square error. The results showed that artificial neural network could be used to predict water table depth in aquifer with good convergence and maximum error was 5% approximately.

Keywords

Citation

Mardookhpour, A. (2013), "Utilizing artificial neural network for forecasting groundwater table depths fluctuations", World Journal of Engineering, Vol. 9 No. 6, pp. 509-512. https://doi.org/10.1260/1708-5284.9.6.509

Publisher

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Emerald Group Publishing Limited

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