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Groundwater quality analysis using multivariate statistical techniques (case study: Fars province, Iran)

机译:使用多元统计技术进行地下水质量分析(案例研究:伊朗法尔斯省)

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This research investigated the quality of groundwater of 298 wells during 10 years, in Fars province, southern Iran, to survey spatial variation of groundwater quality and also major sources of hydro-chemical components for drinking and agricultural uses. To classify the sampling stations in each year, hierarchical cluster analysis, using the Euclidean distances and "Ward" method, was used. According to the results of cluster analysis, there were three quality groups in groundwater of the research area: first group of 170 wells with type of Ca-HCO3, second group of 98 wells with type of Ca-HCO3, and third group of 30 wells with type of Na-Cl. Hydro-chemical parameters were increased from the first to the third group, and on the basis of Schoeller and USSL diagrams, the water of wells of the third group was considered unsuitable for irrigation and drinking. Principal component (PC) analysis and factor analysis reduced the complex and voluminous data matrix into three main components, accounting for more than 80 % of the total variance. The first PC contained TDS, EC, TH, Na+, Cl-, Mg2+, SO42-, Ca2+, and SAR parameters. Therefore, the first dominant factor was salinity. In PC2, HCO3 and pH were the dominant parameters, which may indicate weathering of silicate minerals. The PC3 contained high loadings for NO22- and NO3-. This factor indicates anthropogenic contaminants that may be caused by improper disposal of domestic wastes or the use of chemical fertilizers in agriculture and leaching of them.
机译:这项研究调查了伊朗南部法尔斯省10年中298口井的地下水水质,以调查地下水水质的空间变化以及饮用水和农业用水化学成分的主要来源。为了对每年的采样站进行分类,使用了基于欧几里德距离和“ Ward”方法的层次聚类分析。根据聚类分析的结果,研究区域的地下水分为三个质量组:第一组为Ca-HCO3类型的170口井,第二组为Ca-HCO3类型的98口井,第三组为30口井与氯化钠的类型。水化学参数从第一组增加到第三组,根据Schoeller和USSL图,第三组井的水被认为不适合灌溉和饮用。主成分(PC)分析和因子分析将复杂而庞大的数据矩阵简化为三个主要成分,占总方差的80%以上。第一台PC包含TDS,EC,TH,Na +,Cl-,Mg2 +,SO42-,Ca2 +和SAR参数。因此,第一个主要因素是盐度。在PC2中,HCO3和pH是主要参数,这可能表明硅酸盐矿物的风化作用。 PC3的NO22-和NO3-含量很高。该因素表明人为污染可能是由于生活垃圾处理不当或在农业中使用化肥以及对其进行淋滤造成的。

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