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首页> 外文期刊>Desalination and water treatment >Multivariate statistical and geostatistical techniques for assessing groundwater salinization in Sfax, a coastal region of eastern Tunisia
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Multivariate statistical and geostatistical techniques for assessing groundwater salinization in Sfax, a coastal region of eastern Tunisia

机译:突尼斯东部沿海地区斯法克斯(Sfax)评估地下水盐碱化的多元统计和地统计学技术

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摘要

In this study, we investigate the ability to combine a multivariate statistical analysis with the cokriging method to point out the groundwater salinization in the coastal Sfax aquifer (eastern Tunisia). First, multivariate statistical analysis such as principal component analysis (PCA) and cluster analysis were performed on 75 water samples. PCA identifies three main processes influencing groundwater chemistry which are seawater intrusion, water-rock interaction, and contamination by nitrates, these three factors accounted for 76% of total variance of the groundwater. Furthermore, cokriging is applied to take into account spatial dependence between the studied variables. Five variables were processed: concentration of sulfates, chlorides, sodium and the sodium adsorption ratio, as primary variables, and the more numerous data for total dissolved solid, as auxiliary variables. The generated spatial variability maps highlighted the high-risk zone of groundwater contamination of the superficial aquifer of Sfax. The effectiveness of the high estimation capability of the cokriging is demonstrated by cross-validation. Compared with ordinary kriging for a single variable, cokriging can provide an improvement of the uncertainty in terms of reducing the mean-squared error and mean error.
机译:在这项研究中,我们研究了将多元统计分析与Cokriging方法相结合以指出沿海Sfax含水层(突尼斯东部)地下水盐碱化的能力。首先,对75个水样进行了多元统计分析,例如主成分分析(PCA)和聚类分析。 PCA确定了影响地下水化学的三个主要过程,即海水入侵,水-岩石相互作用和硝酸盐污染,这三个因素占地下水总变化的76%。此外,应用协同克里格法来考虑研究变量之间的空间依赖性。处理了五个变量:作为主要变量的硫酸盐,氯化物,钠的浓度和钠吸附比的浓度,作为辅助变量的总溶解固体的更多数据。生成的空间变异性图突出显示了斯法克斯表层含水层的地下水污染高风险区。通过交叉验证证明了cokriging的高估计能力的有效性。与针对单个变量的普通克里金法相比,共克里金法在减少均方误差和均值误差方面可以提高不确定性。

著录项

  • 来源
    《Desalination and water treatment》 |2014年第12期|1980-1989|共10页
  • 作者单位

    Laboratoire' eau, energie et environnement', Ecole nationale d'Ingenieurs de Sfax, route de soukra Route Soukra BP 1173, Sfax 3038, Tunisia;

    Laboratoire' eau, energie et environnement', Ecole nationale d'Ingenieurs de Sfax, route de soukra Route Soukra BP 1173, Sfax 3038, Tunisia;

    Laboratoire' eau, energie et environnement', Ecole nationale d'Ingenieurs de Sfax, route de soukra Route Soukra BP 1173, Sfax 3038, Tunisia;

    Laboratoire' eau, energie et environnement', Ecole nationale d'Ingenieurs de Sfax, route de soukra Route Soukra BP 1173, Sfax 3038, Tunisia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Groundwater quality; Principal component analysis; Cluster analysis; Geostatistics; Cokriging; Cross-validation;

    机译:地下水水质;主成分分析;聚类分析;地统计学共鸣交叉验证;

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