首页> 外文期刊>River Research and Applications >WATER QUALITY ASSESSMENT AND APPORTIONMENT OF POLLUTION SOURCES OF TIGRIS RIVER (TURKEY) USING MULTIVARIATE STATISTICAL TECHNIQUES—A CASE STUDY
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WATER QUALITY ASSESSMENT AND APPORTIONMENT OF POLLUTION SOURCES OF TIGRIS RIVER (TURKEY) USING MULTIVARIATE STATISTICAL TECHNIQUES—A CASE STUDY

机译:多种统计技术的提格里斯河(土耳其)水质评估与污染源分配-以案例研究为例

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摘要

The Tigris is one of the most important transboundary rivers in western Asia and originates in the Toros mountains of the Eastern Anatolia region of Turkey, Multivariate statistical techniques, such as cluster analysis (CA), principal component analysis (PCA) and factor analysis (FA), were applied for the evaluation of temporal/spatial variations and the interpretation of a water quality data set for the Tigris River, which was obtained during 1 year of monitoring. This study presents the usefulness of multivariate statistical techniques for the evaluation and interpretation of complex water quality data sets and apportionment of pollution sources/factors to obtain better information about water quality and the design of a monitoring network for the effective management of water resources. Hierarchical CA grouped 12 months into two periods (the first and second periods) and classified seven monitoring sites into three groups, that is, less polluted sites, medium polluted sites and highly polluted sites, based on similarities in the water quality characteristics. PCA/FA identified five factors in the data structure, which explained 77.5% of the total variance of the data set. This allowed us to group the selected parameters according to common features and to evaluate the influence of each group on the overall variation in water quality. Varifactors obtained from the factor analysis indicated that the parameters responsible for water quality variation were mainly related to soluble salts (natural), organic pollution and nutrients (anthropogenic).
机译:底格里斯河是西亚最重要的跨界河流之一,起源于土耳其东安纳托利亚地区的托罗斯山区,采用多元统计技术,例如聚类分析(CA),主成分分析(PCA)和因子分析(FA) )用于评估时间/空间变化,并解释了在监测的1年中获得的底格里斯河水质数据集。这项研究提出了多元统计技术在评估和解释复杂水质数据集以及分配污染源/因子以获取有关水质的更好信息以及设计用于有效管理水资源的监测网络方面的有用性。分层CA将12个月分为两个时期(第一和第二个时期),并根据水质特征的相似性将七个监测点分为三类,即污染较少的地点,中等污染的地点和污染严重的地点。 PCA / FA确定了数据结构中的五个因素,这解释了数据集总方差的77.5%。这使我们能够根据共同特征对所选参数进行分组,并评估每组对水质总体变化的影响。从因子分析获得的变量表明,造成水质变化的参数主要与可溶性盐(天然),有机污染和营养素(人为)有关。

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