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Assessment of the water self-purification capacity on a river affected by organic pollution: application of chemometrics in spatial and temporal variations

机译:评估受有机污染影响的河流中水的自净能力:化学计量学在时空变化中的应用

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摘要

Water pollution caused by organic matter is a major global problem which requires continuous evaluation. Multi-variate statistical analysis was applied to assess spatial and temporal changes caused by natural and anthropogenic phenomena along Potrero de los Funes River. Cluster analysis (CA), principal component analysis (PCA) and analysis of variance (ANOVA) were applied to a data set collected throughout a period of 3 years (2010-2012), which monitored 22 physical, chemical and biological parameters. Content of dissolved oxygen in water and biochemical oxygen demand in a watercourse are indicators of pollution caused by organic matter. For this reason, the Streeter-Phelps model was used to evaluate the water self-purification capacity. Hierarchicalcluster analysis grouped the sampling sites based on the similarity of water quality characteristics. PCA resulted in two latent factors explaining 75.2 and 17.6 % of the total variance in water quality data sets. Multidimensional ANOVA suggested that organic pollution is mainly due to domestic wastewater run-offs and anthropogenic influence as a consequence of increasing urbanization and tourist influx over the last years. Besides, Streeter-Phelps parameters showed a low reaeration capacity before dam with low concentration of dissolved oxygen. Furthermore, self-purification capacity loss was correlated with the decrease of the Benthic Index. This measurement suggested that biological samplings complement the physical-chemical analysis of water quality.
机译:由有机物引起的水污染是一个主要的全球性问题,需要不断评估。应用多变量统计分析来评估由Potrero de los Funes河沿岸的自然和人为现象引起的时空变化。将聚类分析(CA),主成分分析(PCA)和方差分析(ANOVA)应用于在3年内(2010-2012年)收集的数据集,该数据集监视22个物理,化学和生物学参数。水中溶解氧的含量和河道中生化需氧量是有机物污染的指标。因此,使用Streeter-Phelps模型评估水的自净能力。层次聚类分析根据水质特征的相似性对采样点进行分组。 PCA得出两个潜在因素,分别解释了水质数据集中总变异的75.2和17.6%。多维方差分析表明,有机污染主要是由于过去几年中城市化程度的提高和游客涌入的结果,导致了生活污水径流和人为影响。此外,Streeter-Phelps参数显示出大坝前的溶解能力低,溶解氧浓度低。此外,自我净化能力的丧失与底栖指数的降低有关。该测量结果表明,生物采样补充了水质的物理化学分析。

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