Prediction of nitrate concentration in Danube River water by using artificial neural networks

Author:

Stamenković Lidija J.1,Mrazovac Kurilić Sanja2,Presburger Ulniković Vladanka2

Affiliation:

1. The Academy of Applied Technical and Preschool Studies, Section Vranje, Filipa Filipovića 20, Vranje 17500, Serbia

2. Faculty of Ecology and Environmental Protection, University ‘Union-Nikola Tesla’, Cara Dušana 62-64, Belgrade 11000, Serbia

Abstract

Abstract This paper describes the development of a model based on artificial neural networks (ANN) which aims to predict the concentration of nitrates in river water. Another 26 water quality parameters were also monitored and used as input parameters. The models were trained and tested with data from ten monitoring stations on the Danube River, located in its course through Serbia, for the period from 2011 to 2016. Multilayer perceptron (MLP), standard three-layer network is used to develop models and two input variable selection techniques are used to reduce the number of input variables. The obtained results have shown the ability of ANN to predict the nitrate concentration in both developed models with a value of mean absolute error of 0.53 and 0.42 mg/L for the test data. Also, the application of IVS has contributed to reduce the number of input variables and to increase the performance of the model, especially in the case of variance inflation factor (VIF) analysis where the estimation of multicollinearity among variables and the elimination of excessive variables significantly influenced the prediction abilities of the ANN model, r – 0.91.

Publisher

IWA Publishing

Subject

Water Science and Technology

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