Groundwater quality assessment using artificial neural network: A case study of Bahabad plain, Yazd, Iran

Authors

  • Ali Talebi Faculty of Natural Resources, Yazd University, Yazd, Iran
  • Lida Rafati Faculty of Natural Resources, Yazd University, Yazd, Iran
  • Zohreh Kheradpisheh Environmental Health Faculty, Shahid Sadoughi University of Medical Sciences. Yazd, Iran
Abstract:

Groundwater quality management is the most important issue in many arid and semi-arid countries, including Iran.Artificial neural network (ANN) has an extensive range of applications in water resources management. In this study,artificial neural network was developed using MATLAB R2013 software package, and Cl, EC, SO4 and NO3 qualitativeparameters were estimated and compared with the measured values, in order to evaluate the influence of key inputparameters. The number of neurons in the hidden layer was obtained by the trial-and-error method. For this purpose, datafrom 260 water samples of 13 wells in Bahabad plain were collected during 2003- 2013. The results show that theperformance of ANN model was more accurate for Cl (R=0.96), EC(R=0.98), and SO4(R=0.95), using back-propagationalgorithms according to the best chosen input parameters. It was observed that the use of ANN model for NO3 was notvery accurate, perhaps this was because of the different water sources or the impact of other parameters; thus, this result isin contrast with the study of Diamantopoulou et al. (2005). However, this study confirms that the number of neurons inthe hidden layer cannot be found using a specific formula (double the number of inputs plus one) for all parameters butcan be obtained using a trial-and-error method.

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Journal title

volume 20  issue 1

pages  65- 71

publication date 2015-01-01

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