Paper Title :Modeling of River Water Quality Parameters Using Artificial Neural Network – A Case Study
Author :Ammar Salman Dawood, Haleem K. Hussain, Aymanalak Hassan
Article Citation :Ammar Salman Dawood ,Haleem K. Hussain ,Aymanalak Hassan ,
(2016 ) " Modeling of River Water Quality Parameters Using Artificial Neural Network – A Case Study " ,
International Journal of Advances in Mechanical and Civil Engineering (IJAMCE) ,
pp. 51-55,
Volume-3,Issue-5
Abstract : In river water quality management, it is very important to use an effective approach to characterize complex water
quality processes. This work is referred to the employment of Neural Network models to predict the water quality parameters
in the Shatt Al Arab River. In the analysis of the models, the most ordinarily used feed forward error back propagation neural
network technique has been utilized. Monthly data sets on turbidity, total hardness, total dissolved solids, and electrical
conductivity have been employed for the analysis. The monthly data of four parameters, for the time period 2007-2012 were
assigned for this analysis. The results present the ability of the suitable ANN models to predict the water quality parameters.
This supplies a very useful tool for estimating the water quality of the Shatt Al Arab River.
Key words- Water quality, ANN, Prediction, Shatt Al Arab River.
Type : Research paper
Published : Volume-3,Issue-5
DOIONLINE NO - IJAMCE-IRAJ-DOIONLINE-5875
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Copyright: © Institute of Research and Journals
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Published on 2016-11-03 |
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