Postgraduate Program in Environmental Quality, Feevale University, ERS 239, 2755, Novo Hamburgo, Rio Grande do Sul, 93525-075, Brazil.
Environmental Licensing Department, Riograndense Sanitation Company (CORSAN), Caldas Júnior Street, 120, Porto Alegre, Rio Grande do Sul, 90010-260, Brazil.
Environ Monit Assess. 2018 Jun 8;190(7):384. doi: 10.1007/s10661-018-6759-3.
Assessment of surface water quality is an issue of currently high importance, especially in polluted rivers which provide water for treatment and distribution as drinking water, as is the case of the Sinos River, southern Brazil. Multivariate statistical techniques allow a better understanding of the seasonal variations in water quality, as well as the source identification and source apportionment of water pollution. In this study, the multivariate statistical techniques of cluster analysis (CA), principal component analysis (PCA), and positive matrix factorization (PMF) were used, along with the Kruskal-Wallis test and Spearman's correlation analysis in order to interpret a water quality data set resulting from a monitoring program conducted over a period of almost two years (May 2013 to April 2015). The water samples were collected from the raw water inlet of the municipal water treatment plant (WTP) operated by the Water and Sewage Services of Novo Hamburgo (COMUSA). CA allowed the data to be grouped into three periods (autumn and summer (AUT-SUM); winter (WIN); spring (SPR)). Through the PCA, it was possible to identify that the most important parameters in contribution to water quality variations are total coliforms (TCOLI) in SUM-AUT, water level (WL), water temperature (WT), and electrical conductivity (EC) in WIN and color (COLOR) and turbidity (TURB) in SPR. PMF was applied to the complete data set and enabled the source apportionment water pollution through three factors, which are related to anthropogenic sources, such as the discharge of domestic sewage (mostly represented by Escherichia coli (ECOLI)), industrial wastewaters, and agriculture runoff. The results provided by this study demonstrate the contribution provided by the use of integrated statistical techniques in the interpretation and understanding of large data sets of water quality, showing also that this approach can be used as an efficient methodology to optimize indicators for water quality assessment.
地表水质量评估是当前高度重视的问题,特别是在像巴西南部的 Sinos 河这样的受污染河流为处理和分配饮用水提供水源的情况下。多元统计技术可以更好地理解水质的季节性变化,以及水污染的源识别和源分配。在这项研究中,使用了聚类分析(CA)、主成分分析(PCA)和正定矩阵因子分解(PMF)等多元统计技术,并结合 Kruskal-Wallis 检验和 Spearman 相关分析,以解释近两年来(2013 年 5 月至 2015 年 4 月)进行的监测计划产生的水质数据集。水样取自由 Novo Hamburgo 的水和污水服务(COMUSA)运营的市政水处理厂(WTP)的原水入口。CA 允许将数据分为三个时期(秋季和夏季(AUT-SUM);冬季(WIN);春季(SPR))。通过 PCA,可以确定对水质变化贡献最大的参数是 SUM-AUT 中的总大肠菌群(TCOLI)、水位(WL)、水温(WT)和电导率(EC)在 WIN 中,以及 SPR 中的颜色(COLOR)和浊度(TURB)。PMF 应用于完整数据集,通过三个因素实现水污染源分配,这些因素与人为来源有关,如生活污水排放(主要由大肠杆菌(ECOLI)代表)、工业废水和农业径流。本研究的结果表明,综合统计技术在水质大数据的解释和理解中提供了贡献,也表明这种方法可以用作优化水质评估指标的有效方法。