Daily river flow forecasting in a semi-arid region using twodatadriven

Authors

  • Ahad Tavasoli Range and Watershed Management Dept., Hormozgan University, Bandarabas, Iran
  • Ahmad Nohegar Programming and Environment Management Dept., Environment Faculty, University of Tehran, Tehran, Iran
  • Arash Malekian Faculty of Natural Resources, University of Tehran, Karaj, Iran
  • Hanieh Asadi Watershed Management Dept., Trabiat Modares University, Noor, Iran
  • Mahdi Safari Faculty of Agriculture, Engineering, Bahonar Kerman University, Kerman, Iran
Abstract:

Rainfall-runoff relationship is very important in many fields of hydrology such as water supply and water resourcemanagement and there are many models in this field. Among these models, the Artificial Neural Network (ANN) wasfound suitable for processing rainfall-runoff and opened various approaches in hydrological modeling. In addition,ANNs are quick and flexible approaches which provide very promising results, and are cheaper and simpler toimplement than their physically based models. Therefore, this study evaluated the use of ANN models to forecastdaily flows in Bar watershed, a semi-arid region in the northwest Razavi Khorasan Province of Iran. Two differentneural network models, the multilayer perceptron (MLP) and the radial basis neural network (RBF), were developedand their abilities to predict run off were compared for a period of fifty-five years from 1951 to 2006. The bestperformance was achieved based on statistical criteria such as RMSE, RE and SSE. It was found that MLP showed agood generalization of the rainfall-runoff relationship and is better than RBF. In addition, 1-day antecedent runoffaffected river flow, such that the statistical criteria decreased but the 5-day antecedent rainfall remained unaffected.Furthermore, considering MLP, RE and RMSE, the best model produced the values 46.21 and 0.75 while the RBFmodel recorded 177.60 and 0.82, respectively.

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Journal title

volume 20  issue 1

pages  11- 21

publication date 2015-01-01

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