Water pollution has become a growing threat to human society and natural ecosystems in the recent decades. Assessment of seasonal changes in water quality is important for evaluating temporal variations of river pollution. In this study, seasonal variations of chemical characteristics of surface water for the Chehelchay watershed in northeast of Iran was investigated. Various multivariate statistical techniques, including multivariate analysis of variance, discriminant analysis, principal component analysis and factor analysis were applied to analyze river water quality data set containing 12 parameters recorded during 13 years within 1995-2008. The results showed that river water quality has significant seasonal changes. Discriminant analy...
Evaluating the quality of river water is a critical process due to pollution and variations of natur...
The analysis and interpretation the spatiotemporal patterns of river water quality are a critical el...
In this study, multivariate statistical techniques, such as discriminant, factor /principal componen...
Water pollution has become a growing threat to human society and natural ecosystems in the recent de...
In this study, spatial and seasonal variations of water quality in Haraz River Basin were evaluated ...
Nonpoint source (NPS) pollution is a major surface water contaminant commonly caused by agricultural...
Multivariate statistical techniques were applied for evaluation of temporal/ spatial variations and ...
Abstract Monitoring water quality of surface water resources is the key concern in determining the p...
Discriminant analysis (DA) and principal component analysis (PCA), as multivariate statistical techn...
PubMed ID: 19242812In the study, discriminant analysis (DA) was applied to water quality data set mo...
The chemometric techniques were applied for evaluation of the seasonal variation of water qualities ...
This study is focused on water quality of Melen River (Turkey) and evaluation of 26 physical and che...
This study estimated spatial and seasonal variation of water quality to understand characteristics o...
Multivariate statistical techniques have been widely utilized to assess water quality and evaluate a...
Abstract Rivers are critical to agriculture, industry, and the needs of humans and wildlife. This st...
Evaluating the quality of river water is a critical process due to pollution and variations of natur...
The analysis and interpretation the spatiotemporal patterns of river water quality are a critical el...
In this study, multivariate statistical techniques, such as discriminant, factor /principal componen...
Water pollution has become a growing threat to human society and natural ecosystems in the recent de...
In this study, spatial and seasonal variations of water quality in Haraz River Basin were evaluated ...
Nonpoint source (NPS) pollution is a major surface water contaminant commonly caused by agricultural...
Multivariate statistical techniques were applied for evaluation of temporal/ spatial variations and ...
Abstract Monitoring water quality of surface water resources is the key concern in determining the p...
Discriminant analysis (DA) and principal component analysis (PCA), as multivariate statistical techn...
PubMed ID: 19242812In the study, discriminant analysis (DA) was applied to water quality data set mo...
The chemometric techniques were applied for evaluation of the seasonal variation of water qualities ...
This study is focused on water quality of Melen River (Turkey) and evaluation of 26 physical and che...
This study estimated spatial and seasonal variation of water quality to understand characteristics o...
Multivariate statistical techniques have been widely utilized to assess water quality and evaluate a...
Abstract Rivers are critical to agriculture, industry, and the needs of humans and wildlife. This st...
Evaluating the quality of river water is a critical process due to pollution and variations of natur...
The analysis and interpretation the spatiotemporal patterns of river water quality are a critical el...
In this study, multivariate statistical techniques, such as discriminant, factor /principal componen...