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首页> 外文期刊>Iranica Journal of Energy and Environment >Heavy Metals and Water Quality Assessment Using Multivariate Statistical Techniques and Water Quality Index of the Semenyih River, Peninsular Malaysia
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Heavy Metals and Water Quality Assessment Using Multivariate Statistical Techniques and Water Quality Index of the Semenyih River, Peninsular Malaysia

机译:使用多元统计技术和马来西亚半岛Semenyih河水质指数进行重金属和水质评估

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摘要

The present study was carried out to investigate and determine the water quality and the pollution sources affected on??Semenyih River using multivariate statistical techniques and water quality index (WQI). Temperature, pH, dissolved oxygen (DO), conductivity, total dissolved solids (TDS), sulfate (SO4 ), nitrate 2 (NO3), nitrite (NO2), phosphate (PO4 ), turbidity, ammonia-nitrogen (NH3-N), total suspended solids (TSS), 3 chemical oxygen demand (COD), biochemical oxygen demand (BOD), total hardness (TH), oil and grease (O&G), Escherichia coli and total Colifor (TC) as water quality variables and Cd, Cu, Ni, Zn, Fe, Pb, Mn, Cr and Hg as heavy metals variables have been analyzed in the collected water samples during the year 2012 from 8 sampling stations along??Semenyih River. Cluster analysis (CA) categorized 8 stations into three clusters based on the similarity of water quality characteristics and categorized 27 variables analyzed to four clusters to determine the relationship among the variables and their possible sources. Principal component analysis (PCA) determined that 96.63% of the total variance was accounted for five factors which pointed to the variables responsible for deterioration of water quality attributed to anthropogenic activities associated with urbanization, industrialization, agriculture, livestock husbandry and mining activities. In addition, WQI classified the river as clean (Class I) at station 1, slightly polluted (Class II) at stations 2 and 3 and as moderately polluted (Class III) at stations 4-8; in general; however, the river falls into class III and thus is required??extensive treatment before using for domestic purposes. Therefore, this study verified that the multivariate statistical techniques and water quality index are mainly required for interpreting complex data sets for the purpose of analysis of water quality variations.
机译:本研究利用多元统计技术和水质指数(WQI)来调查和确定影响Semenyih河的水质和污染源。温度,pH,溶解氧(DO),电导率,总溶解固体(TDS),硫酸盐(SO4),硝酸盐2(NO3),亚硝酸盐(NO2),磷酸盐(PO4),浊度,氨氮(NH3-N) ,总悬浮固体(TSS),3种化学需氧量(COD),生化需氧量(BOD),总硬度(TH),油脂(O&G),大肠杆菌和总大肠杆菌(TC)作为水质变量和Cd在Semenyih河沿岸的8个采样站对2012年收集的水样中的Cu,Ni,Zn,Fe,Pb,Mn,Cr和Hg中的Cu,Ni,Zn,Fe,Pb,重金属变量进行了分析。聚类分析(CA)根据水质特征的相似性将8个站划分为3个聚类,并将分析的27个变量分类为4个聚类,以确定变量及其可能来源之间的关系。主成分分析(PCA)确定,总方差的96.63%是五个因素,这些因素指出了与城市化,工业化,农业,畜牧业和采矿活动有关的人为活动引起的水质恶化的变量。此外,WQI将河流在1号车站分类为干净(I类),在2号和3号车站分类为轻度污染(II类),在4-8号车站分类为中度污染(III类)。一般来说;但是,这条河属于III类,因此需要进行广泛的处理,然后再用于家庭用途。因此,本研究证明,以分析水质变化为目的,解释复杂数据集主要需要多元统计技术和水质指数。

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