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Water Quality Assessment of River Soan (Pakistan) and Source Apportionment of Pollution Sources Through Receptor Modeling

机译:巴基斯坦苏安河的水质评估和通过受体建模的污染源分配

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The present study was designed to determine the spatiotemporal patterns in water quality of River Soan using multivariate statistics. A total of 26 sites were surveyed along River Soan and its associated tributaries during pre- and post-monsoon seasons in 2008. Hierarchical agglomerative cluster analysis (HACA) classified sampling sites into three groups according to their degree of pollution, which ranged from least to high degradation of water quality. Discriminant function analysis (DFA) revealed that alkalinity, orthophosphates, nitrates, ammonia, salinity, and Cd were variables that significantly discriminate among three groups identified by HACA. Temporal trends as identified through DFA revealed that COD, DO, pH, Cu, Cd, and Cr could be attributed for major seasonal variations in water quality. PCA/FA identified six factors as potential sources of pollution of River Soan. Absolute principal component scores using multiple regression method (APCS-MLR) further explained the percent contribution from each source. Heavy metals were largely added through industrial activities (28 %) and sewage waste (28 %), nutrients through agriculture runoff (35 %) and sewage waste (28 %), organic pollution through sewage waste (27 %) and urban runoff (17 %) and macroelements through urban runoff (39 %), and mineralization and sewage waste (30 %). The present study showed that anthropogenic activities are the major source of variations in River Soan. In order to address the water quality issues, implementation of effective waste management measures are needed.
机译:本研究旨在使用多元统计数据确定苏安河水质的时空格局。在2008年的季风前后,在Soan河及其相关支流沿线共调查了26个地点。分层聚集聚类分析(HACA)根据污染程度将抽样地点分为三类,范围从最小到最大。水质高度退化。判别函数分析(DFA)显示,碱度,正磷酸盐,硝酸盐,氨水,盐度和Cd是明显区分由HACA鉴定的三组的变量。通过DFA确定的时间趋势表明,COD,DO,pH,Cu,Cd和Cr可以归因于水质的主要季节性变化。 PCA / FA确定了六个因素是Soan河的潜在污染源。使用多元回归方法(APCS-MLR)的绝对主成分评分进一步解释了每个来源的百分比贡献。通过工业活动(28%)和污水废物(28%),通过农业径流(35%)和污水废物(28%)的养分,通过污水废物(27%)和城市径流的有机污染(17)大量添加了重金属。 %),城市径流(39%),矿化和污水废物(30%)中的大量元素。本研究表明,人为活动是苏安河变化的主要来源。为了解决水质问题,需要采取有效的废物管理措施。

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