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Assessment of surface water quality of Ain Zada dam (Algeria) using multivariate statistical techniques

机译:使用多元统计技术评估Ain Zada大坝(阿尔及利亚)的地表水水质

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Multivariate statistical techniques, such as cluster analysis (CA), principal component analysis (PCA), factor analysis (FA) and discriminant analysis, have been applied for the assessment of temporal variations of surface water quality in Ain Zada dam, Algeria, for 10 years by monitoring 16 parameters. The different parameters indicate that the data are homogeneous. As against this record an annual variation is more important than the monthly change in connection with climate change. The facies of these waters is Cl-Na especially in connection with human actions. Values of the Water Quality Index classified the surface water as medium to good quality. The Pearson correlation analysis revealed a significant positive relationship between salinity and all variables and negative relationship between water volume of dam and all variables. The CA in R mode grouped the 16 variables into 4 clusters of similar water quality characteristics and in Q mode, 160 sampling are grouped into 2 statistically groups where total dissolve solids and capacity seem to be major distinguishing factors between variables and years. The CA has classified the data into two groups, one formed by the dry years and the other formed by wet years. The PCA and the FA applied to the datasets have resulted in two significant factors which represent 69.92% of total variance. The first factor as salinization factor explained 58.68% of the total variance. The second factor, can be called organic pollution factor, explained 11.24% of the total variance. The results of discriminant analysis showed only 11 parameters were necessary in the temporal variations analysis, affording more than 90% correct assignations.
机译:多元统计技术,例如聚类分析(CA),主成分分析(PCA),因子分析(FA)和判别分析,已被用于评估阿尔及利亚Ain Zada大坝的地表水水质随时间变化10年通过监视16个参数。不同的参数表明数据是同质的。与该记录相反,与气候变化有关的年度变化比每月变化更为重要。这些水的相特别是与人类行为有关的是Cl-Na。水质指数的值将地表水分类为中等至良好质量。皮尔逊相关分析显示,盐度与所有变量之间存在显着的正相关关系,而大坝水量与所有变量之间存在负相关关系。在R模式下,CA将16个变量分为4个具有相似水质特征的簇,在Q模式下,将160个采样分为2个统计学组,其中总溶解固体和容量似乎是变量和年份之间的主要区别因素。 CA将数据分为两组,一组由干旱年份组成,另一组由潮湿年份组成。应用于数据集的PCA和FA产生了两个重要因素,占总方差的69.92%。第一个因素是盐化因子,解释了总方差的58.68%。第二个因子可以称为有机污染因子,占总方差的11.24%。判别分析的结果表明,在时间变化分析中仅需要11个参数,可提供90%以上的正确分配。

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