Abstract

Monitoring water quality is one of the high priorities for the protection of water resources. Many different approaches are used to analyse and interpret the variables that determine the variance of water quality observed in various sources. Statistical methods, especially multivariate statistical techniques, constitute an important part of these approaches. In this study, ten water quality parameters, which were measured for twelve months from seven stations determined on Filyos River, were evaluated by carrying out principal component analysis (PCA) and cluster analysis (CA) from multivariate statistical methods. In addition, dominant quality parameters designating the quality of the water source were determined. According to PCA results, 4 principal components contained the key variables and accounted for 69.49% of total variance of surface water quality from Filyos River. Dominant water quality parameters were observed to be temperature, EC, DO and pH. While the study revealed that the river is exposed to agricultural pollution alongside with the water quality character generated by the climatic conditions, it also suggested that multivariate statistical methods are useful tools in evaluating complex data sets such as water quality data, and monitoring the quality of water resources.

Highlights

  • Monitoring water quality is one of the highest priorities of environmental conservation policy (Simeonov et al, 2002)

  • It we can say that water quality in Filyos River has temporal and spatial dependence due to ongoing natural and anthropogenic processes in the basin (Gonzalez et al, 2014)

  • When average values of water quality parameters compared with Water Pollution Control Regulation of Turkey, it is found that Filyos River partially suffers from oPO43, NH4+ and NO2pollution

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Summary

Introduction

Monitoring water quality is one of the highest priorities of environmental conservation policy (Simeonov et al, 2002). Nowadays, surface water quality constitutes one of the most significant determinants in resource management. For this reason, monitoring water quality is a must in terms of water source management. Employing accurate methods in monitoring quality parameters is just as important. Water quality can be defined as characterization of some parameters which represent a water composition in a specific place and time. Multivariate analysis methods such as discriminant analysis, factor analysis, cluster analysis and principal component analysis are widely used in understanding spatial and temporal dissimilarities in water quality (Zeng and Rasmussen, 2005; Shrestha and Kazama, 2007)

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