Evaluation of Water Quality Monitoring Networks Using Principal Component Analysis: A case of Gediz River Basin
Abstract
The water quality needs to be monitored at regular intervals, throughout
representatively located gauging stations, for sustainable development of water
resources. However, it is not possible to monitor all quality parameters all
the time and points for a river basin studied, and water quality monitoring
that does not address specific, clear and realistic objectives will cause time,
labor and money losses. At this point, Principal Component Analysis (PCA) would
provide a regional insight into principal pollutants, contaminants dominates
others and effective monitoring locations. It will help to evaluate surface
water quality in regional scale as well as monitoring network. This study aims
to analyze regional water quality and monitoring network in the Gediz River
Basin, by focusing on the variance structure of the observations on principal
pollutants that observed throughout the river basin. The 11 quality parameters
monitored in 13 monitoring stations on the Gediz River Basin were used in the
analyses. PCA is applied i) to determine principal pollutants and contaminants
dominate over others (parameter-based analysis), ii) to find out effective
monitoring locations for principal pollutants (station based analysis). The
results reveal the tributaries of the river with different quality
characteristics, and the importance of an objective based monitoring for
effective water quality management.
Keywords
References
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Details
Primary Language
English
Subjects
Engineering
Journal Section
Research Article
Authors
Barış Yılmaz
*
Manisa Celal Bayar University, Manisa Vocational School, Dept. of Construction, Manisa, Turkey
Türkiye
Ceyhun Özçelik
Muğla Sıtkı Koçman University, Dept. of Civil Engineering, Muğla, Turkey
Türkiye
Publication Date
March 30, 2018
Submission Date
November 21, 2017
Acceptance Date
March 16, 2018
Published in Issue
Year 2018 Volume: 14 Number: 1
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