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Assessment of temporal and spatial variations in water quality using multivariate statistical methods: a case study of the Xin'anjiang River, China

机译:利用多元统计方法评估水质时空变化:以中国新安江为例

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摘要

This study evaluated the temporal and spatial variations of water quality data sets for the Xin'anjiang River through the use of multivariate statistical techniques, including cluster analysis (CA), discriminant analysis (DA), correlation analysis, and principal component analysis (PCA). The water samples, measured by ten parameters, were collected every month for three years (2008-2010) from eight sampling stations located along the river. The hierarchical CA classified the 12 months into three periods (First, Second and Third Period) and the eight sampling sites into three groups (Groups 1, 2 and 3) based on seasonal differences and various pollution levels caused by physicochemical properties and anthropogenic activities. DA identified three significant parameters (temperature, pH and E.coli) to distinguish temporal groups with close to 76% correct assignment. The DA also discovered five parameters (temperature, electricity conductivity, total nitrogen, chemical oxygen demand and total phosphorus) for spatial variation analysis, with 80.56% correct assignment. The non-parametric correlation coefficient (Spearman R) explained the relationship between the water quality parameters and the basin characteristics, and the GIS made the results visual and direct. The PCA identified four PCs for Groups 1 and 2, and three PCs for Group 3. These PCs captured 68.94%, 67.48% and 70.35% of the total variance of Groups 1, 2 and 3, respectively. Although natural pollution affects the Xin'anjiang River, the main sources of pollution included agricultural activities, industrial waste, and domestic wastewater.
机译:本研究使用多元统计技术,包括聚类分析(CA),判别分析(DA),相关分析和主成分分析(PCA),评估了新安江水质数据集的时空变化。 。在十年中(2008年至2010年),每月从沿河的八个采样站收集通过十个参数测量的水样。根据季节差异和由理化性质和人为活动引起的各种污染水平,分级CA将12个月分为三个时期(第一,第二和第三时期),八个采样点分为三组(1、2和3组)。 DA识别了三个重要参数(温度,pH和大肠杆菌),以接近76%的正确分配来区分时间组。 DA还发现了用于空间变化分析的五个参数(温度,电导率,总氮,化学需氧量和总磷),正确分配率为80.56%。非参数相关系数(Spearman R)解释了水质参数与流域特征之间的关系,而GIS使结果直观可见。 PCA确定了第1组和第2组的四台PC,第3组的三台PC。这些PC分别捕获了第1、2和3组的总方差的68.94%,67.48%和70.35%。尽管自然污染影响新安江,但主要污染源包括农业活动,工业废物和生活废水。

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