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Water Quality Assessment Using Multivariate Statistical Techniques: A Case Study of Yangling Section, Weihe River, China

机译:基于多元统计技术的水质评价-以渭河杨凌段为例

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摘要

Multivariate statistical techniques, including cluster analysis (CA), principal component analysis (PCA), factor analysis (FA) and discriminant analysis (DA), were applied for the evaluation of temporal and seasonal variations and interpretation of a complex water quality data set at Yangling Section of Weihe River. Hierarchical cluster analysis grouped 12 months into three clusters, i.e., C1 (relatively highly polluted months), C2 (moderate polluted months) and C3 (less polluted months), based on the similarity of water quality characteristics. Factor analysis/principal component analysis, tested to the data sets of the three groups obtained from cluster analysis, identified 9, 6 and 7 latent factors explaining more than 76, 69 and 62% of the total variance in the data sets of C1, C2 and C3, respectively. The varifactors obtained indicate that parameters responsible for variation are mainly related to temperature and DO (natural), COD_(Mn), turbidity, NH_4~+, TN, pH and TOC (point source: domestic wastewater) in C1; temperature, DO and EC (natural), COD_(Mn), TN, pH, and TOC in C2; and temperature, DO and EC (natural), COD_(Mn), pH and TOC (point source: domestic wastewater and industrial effluents), turbidity and TN (non-point source: agriculture and soil erosion) in C3. However, discriminant analysis showed no significant data reduction, as it used 8 parameters (turbidity, EC, NH_4~+, DO, TN, pH, temperature and TOC) affording more than 81% correct assignations in temporal analysis, while 8 parameters (COD_(Mn), turbidity, EC, DO, TN, pH, temperature, TOC) affording more than 88% correct assignations in seasonal analysis. Thus, this research illustrated the necessity and usefulness of multivariate statistical techniques for analysis and interpretation of large complex water quality data sets, identification of possible pollution sources/factors and information about variation in water quality for effective river water quality management.
机译:多元统计技术,包括聚类分析(CA),主成分分析(PCA),因子分析(FA)和判别分析(DA),被用于评估时间和季节变化以及对复杂水质数据集的解释。渭河杨凌段。基于水质特征的相似性,分层聚类分析将12个月分为三个聚类,即C1(相对高污染月份),C2(中度污染月份)和C3(低污染月份)。对从聚类分析获得的三组数据进行测试的因素分析/主要成分分析,确定了9、6和7个潜在因素,这些潜在因素解释了C1,C2数据集中总方差的76%,69%和62%以上和C3分别。得出的变量因子表明,导致变量变化的参数主要与C1中的温度和DO(自然),COD_(Mn),浊度,NH_4〜+,TN,pH和TOC(点源:生活污水)有关。 C2中的温度,DO和EC(自然),COD_(Mn),TN,pH和TOC; C3中的温度,DO和EC(天然),COD_(Mn),pH和TOC(点源:生活废水和工业废水),浊度和TN(非点源:农业和土壤侵蚀)。但是,判别分析显示没有明显的数据减少,因为它使用了8个参数(浊度,EC,NH_4〜+,DO,TN,pH,温度和TOC),在时间分析中提供了超过81%的正确分配,而8个参数(COD_ (Mn),浊度,EC,DO,TN,pH,温度,TOC)在季节性分析中提供了超过88%的正确分配。因此,本研究说明了使用多元统计技术分析和解释大型复杂水质数据集,识别可能的污染源/因子以及有关水质变化信息以进行有效河水管理的必要性和实用性。

著录项

  • 来源
    《Nature environment and pollution technology》 |2014年第2期|225-234|共10页
  • 作者

    Xiuquan Xu; Jianen Gao;

  • 作者单位

    Institute of Soil and Water Conservation, CAS & MWR, University of Chinese Academy of Sciences, Yangling-712100,China;

    Institute of Soil and Water Conservation, CAS & MWR, College of Natural Resources and Environment, College of Water Resources and Architectural Engineering, Institute of Soil and Water Conservation, Northwest A&F University, Yangling-712100, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Water quality assessment; Multivariate statistical; techniques; Weihe river;

    机译:水质评估;多元统计;技术;渭河;

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