Water Quality Assessment and Pollution Source Identification of the Eastern Poyang Lake Basin Using Multivariate Statistical Methods

Multivariate statistical methods including cluster analysis (CA), discriminant analysis (DA) and component analysis/factor analysis (PCA/FA), were applied to explore the surface water quality datasets including 14 parameters at 28 sites of the Eastern Poyang Lake Basin, Jiangxi Province of China, fr...

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Veröffentlicht in:Sustainability 2016-02, Vol.8 (2), p.133-133
Hauptverfasser: Duan, Weili, He, Bin, Nover, Daniel, Yang, Guishan, Chen, Wen, Meng, Huifang, Zou, Shan, Liu, Chuanming
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container_end_page 133
container_issue 2
container_start_page 133
container_title Sustainability
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creator Duan, Weili
He, Bin
Nover, Daniel
Yang, Guishan
Chen, Wen
Meng, Huifang
Zou, Shan
Liu, Chuanming
description Multivariate statistical methods including cluster analysis (CA), discriminant analysis (DA) and component analysis/factor analysis (PCA/FA), were applied to explore the surface water quality datasets including 14 parameters at 28 sites of the Eastern Poyang Lake Basin, Jiangxi Province of China, from January 2012 to April 2015, characterize spatiotemporal variation in pollution and identify potential pollution sources. The 28 sampling stations were divided into two periods (wet season and dry season) and two regions (low pollution and high pollution), respectively, using hierarchical CA method. Four parameters (temperature, pH, ammonia-nitrogen (NH4-N), and total nitrogen (TN)) were identified using DA to distinguish temporal groups with close to 97.86% correct assignations. Again using DA, five parameters (pH, chemical oxygen demand (COD), TN, Fluoride (F), and Sulphide (S)) led to 93.75% correct assignations for distinguishing spatial groups. Five potential pollution sources including nutrients pollution, oxygen consuming organic pollution, fluorine chemical pollution, heavy metals pollution and natural pollution, were identified using PCA/FA techniques for both the low pollution region and the high pollution region. Heavy metals (Cuprum (Cu), chromium (Cr) and Zinc (Zn)), fluoride and sulfide are of particular concern in the study region because of many open-pit copper mines such as Dexing Copper Mine. Results obtained from this study offer a reasonable classification scheme for low-cost monitoring networks. The results also inform understanding of spatio-temporal variation in water quality as these topics relate to water resources management.
doi_str_mv 10.3390/su8020133
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subjects Chemical oxygen demand
Cluster analysis
Discriminant analysis
Dry season
Environmental protection
Freshwater resources
Heavy metals
Nutrients
Pesticides
Regions
Rivers
Social change
Statistical methods
Surface water
Sustainability
Water pollution
Water quality
title Water Quality Assessment and Pollution Source Identification of the Eastern Poyang Lake Basin Using Multivariate Statistical Methods
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