聚类和因子分析在巴西Alagoinhas (Bahia, Brazil) Marizal/ s o sebasti含水层系统地下水质量监测中的贡献

Q4 Social Sciences
Maíra Sampaio Da Costa, Maria da Conceição Rabelo Gomes, Sérgio Augusto De Morais Nascimento
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引用次数: 0

摘要

Marizal/ s o sebasti含水层系统是巴伊亚州Alagoinhas市的主要供水系统。然而,人为干预造成了土壤和地下水的污染,增加了相关研究的必要性。多元统计分析是一种广泛使用的工具,有助于地下水水质的调查,同时能够评估一个样本集的不同变量。本研究采用因子分析及多元聚类分析方法。选取对地下水水质影响最大的10个变量,将其分为两个因素。第一个因素包括电导率、盐度、钙、氯化物、硫酸盐、锰和铁,这些都是水盐度的指标。第二个因素包括pH值、碳酸氢盐和磷酸盐,表明人为干预和环境中的碱度。对这两个因素的参数进行多变量聚类分析,得到4个聚类的树状图。本研究表明,多元统计分析是一种有效的监测工具,有助于地下水水质的管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cluster and Factor Analyses as Contributions to the Groundwater Quality Monitoring of the Marizal/São Sebastião Aquifer System, Alagoinhas (Bahia, Brazil)
The Marizal/São Sebastião aquifer system is the main water supply of the municipality of Alagoinhas in the state of Bahia. However, anthropic interventions contribute to soil and groundwater pollution, increasing the need for related research. Multivariate statistical analysis is a widely used tool, helping in the investigation of groundwater quality while being capable of simultaneously evaluating diverse variables of a sample set. In this study, factor analysis and multivariate cluster analysis methodologies were applied. Ten of the most influential variables for groundwater quality were selected and then grouped into two factors. The first factor included electrical conductivity, salinity, calcium, chloride, sulfate, manganese, and iron, which are indicators of water salinity. The second factor encompassed pH, bicarbonate, and phosphate, indicating anthropic interventions and alkalinity in the environment. The multivariate cluster analysis was applied to the parameters of both factors, resulting in dendrograms with four clusters. The present study showed that the multivariate statistical analysis is an efficient tool for monitoring and can contribute to the management of groundwater quality.
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来源期刊
Anuario do Instituto de Geociencias
Anuario do Instituto de Geociencias Social Sciences-Geography, Planning and Development
CiteScore
0.70
自引率
0.00%
发文量
45
审稿时长
28 weeks
期刊介绍: The Anuário do Instituto de Geociências (Anuário IGEO) is an official publication of the Universidade Federal do Rio de Janeiro (UFRJ – CCMN) with the objective to publish original scientific papers of broad interest in the field of Geology, Paleontology, Geography and Meteorology.
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