Journal of Environmental Accounting and Management
Assessment of the Water Quality of Karun River Catchment Using Artificial Neural Networks-self-Organizing Maps and K-Means Algorithm
Journal of Environmental Accounting and Management 9(1) (2021) 43--58 | DOI:10.5890/JEAM.2021.03.005
Mehdi Ahmadmoazzam$^{1,2}$, Yaser Tahmasebi Birgani$^{1,3}$ , Mohsen Molla-Norouzi$^{4,5}$, Maryam Dastoorpour$^6$
$^1$ Department of Environmental Health Engineering, Ahvaz Jundishapur University of Medical Sciences, Ahvaz,
Iran
$^2$ Student Research Committee, Ahvaz Jundishapur University of Medical Sciences, Ahvaz, IR Iran
$^3$ Environmental Technologies Research Center, Ahvaz Jundishapur University of Medical Sciences, Ahvaz, Iran
$^4$ MSc in environmental health engineering, Shahid Beheshti University of Medical Sciences, School of
public health, department of environmental health engineering
$^5$ Ministry of Energy, Tehran Province Water and Wastewater Company
$^6$ Assistant Professor of Epidemiology, Air Pollution and Respiratory Diseases Research Center, Ahvaz
Jundishapur University of Medical Sciences, Ahvaz, Iran
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Abstract
Analyzing the water quality status is one of the most important issues to
control the pollution discharged to the river. This helps to obtain the
effective environmental management. However, the conventional water quality
indices cannot accurately indicate the water quality status, particularly in
the presence of the various water quality parameters. In this study 15,
water quality parameters of Karun River were categorized based on the
similar variation pattern by Self-Organizing Map (SOM) for a 6-year period
between 2013 and 2018. Data were then clustered using the k-means
nonhierarchical algorithm for determination of the spatio-seasonal pattern
of Karun River's water quality and discrimination of the sources of water
pollution all along Karun River catchment. The results indicated the
dissimilar variation patterns of some water quality parameters which were
might due to the different sources of pollutions around the Karun River
catchment. Moreover, data clustering by k-means specified 5 different groups
collected data. Spatio-seasonal assessment identified the critical stations
in the Karun River during a 6-year period. The result of the applied
methodology showed an integration of SOM and k-means algorithms gives an
insight into the similarities of water quality parameters and analysis of
the water quality conditions in critical locations. Therefore, it can be
used as a tool for efficient decision making in environmental management.
Acknowledgments
The present study was financially supported by Ahvaz Jundishapur University
of Medical Sciences (Grant no: ETRC-9601). The authors are sincerely
grateful to the Khuzestan Water and Power Authority for providing the
required data of Karun River. The authors have declared no conflicts of
interest.
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