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Application of Multivariate Statistical Techniques in Determining the Spatial Temporal Water Quality Variation of Ganga and Yamuna Rivers Present in Uttarakhand State, India

机译:多元统计技术在确定印度北阿坎德邦州恒河和亚穆纳河时空水质变化的应用中

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Primary monitoring of 18 water quality parameters for rivers Ganga and Yamuna of Uttarakhand State was carried out to study the seasonal variation of these parameters, identify potential sources of pollution, and clustering of monitoring stations with similar characteristics. Wilcoxon signed-rank test, Paired t test and multivariate statistical techniques-principal component analysis (PCA) and cluster analysis (CA) were used to analyse the collected data. Separate analyses were conducted for summer and winter periods. The Wilcoxon signed-rank test and paired t test revealed seasonal variability in the data set with high pollution levels during summer period as compared to winter period. The CA grouped 15 monitoring stations of river Ganga and 5 monitoring stations of river Yamuna into 2 clusters of similar characteristics. The PCA resulted in the identification of four major sources of pollution for river Ganga, and three for river Yamuna. The findings of the study provide useful information in interpretation of complex datasets and for water quality assessment, identification of pollution sources/factors and understanding of temporal and spatial variations of water quality for effective river water quality management.
机译:对北阿坎德邦州恒河和亚穆纳河的18个水质参数进行了初步监测,以研究这些参数的季节变化,识别潜在污染源以及对具有相似特征的监测站进行聚类。使用Wilcoxon符号秩检验,配对t检验和多元统计技术-主成分分析(PCA)和聚类分析(CA)来分析收集的数据。在夏季和冬季分别进行了分析。 Wilcoxon符号秩检验和配对t检验揭示了夏季与冬季相比高污染水平的数据集的季节性变化。 CA将15个恒河监测站和5个Yamuna河监测站分为两个具有相似特征的集群。 PCA确定了恒河的四个主要污染源和亚穆纳河的三个主要污染源。研究结果为复杂数据集的解释和水质评估,污染源/因子的识别以及水质时空变化的认识提供了有用的信息,以进行有效的河流水质管理。

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