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Evaluation of Groundwater Quality at an Industrial Park Site Zone Using Statistical Analyses: A Case Study in Taiwan

机译:利用统计分析评估工业园区地下水质量的评价:台湾案例研究

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Multivariate statistical analysis explains the huge and complicated current situation of the original data efficiently, concisely, and explicitly. It simplifies the original data into representative factors, or bases on the similarity between data to cluster and identify clustering outcome. In this study, the statistical software SPSS 12.0 was used to perform the multivariate statistical analysis to evaluate characteristics of groundwater quality at an industrial park site located in Kaohsiung, Taiwan. Results from the principal component analysis (PCA) and factor analyses (FA) show that seven principal components could be compiled from 20 groundwater quality indicators obtained from groundwater analyses, which included background factor, salt residua factor, hardness factor, ethylene chloride factor, alkalinity factor, organic pollutant factor, and chloroform factor. Among the seven principal components, the major influencing components were salinization factor and acid-base factor. Results show that the seven principal component factors were able to represent 89.6% of the total variability for 20 different groundwater quality indicators. Groundwater monitoring wells were classified into seven groups according to the partition of homogeneity and similarity using the two-phase cluster analysis (CA). The clustering results indicate that chlorides such as 1,1-dichloroethylene, 1,1-dichloroethane, and cis-1,2-dichloroethylene had the highest concentrations among the clusters. This indicates that groundwater at nearby areas may be polluted by chlorinated organic compounds. Results from the correlation analysis by Fisher coefficient formula show that the cluster results of seven groups of groundwater wells had 100 and 80% accuracies using discriminant and cross-validation analyses, respectively. This implies that high accuracy can be obtained when discriminant and cluster analyses are applied for data evaluation.
机译:多变量统计分析解释了有效,简明扼要地明确地解释了原始数据的巨大和复杂的当前情况。它将原始数据简化为代表性因子,或基于数据与群集的相似性并识别群集结果的基础。在这项研究中,统计软件SPSS 12.0用于进行多元统计分析,以评估位于台湾高雄的工业园区地下水质量的特征。主要成分分析(PCA)和因子分析(FA)结果表明,可以从地下水分析中获得的20个地下水质量指标编制七个主要成分,其中包括背景系数,盐残留因子,硬度因子,氯化乙烷因子,碱度因子,有机污染物因子和氯仿系数。在七个主要成分中,主要影响组分是盐渍化因子和酸碱因素。结果表明,七个主要成分因子能够为20种不同地下水质量指标的总变异性的89.6%。使用两相聚类分析(CA)根据均匀性和相似性分区,地下水监测孔分为七组。聚类结果表明,氯化物如1,1-二氯乙烯,1,1-二氯乙烷和顺式-1,2-二氯乙烯在簇中具有最高浓度。这表明附近区域的地下水可能被氯化有机化合物污染。 Fisher系数公式的相关分析结果表明,七组地下水孔的簇结果分别具有100%和80%的精度,使用判别和交叉验证分析。这意味着当判别和聚类分析应用于数据评估时,可以获得高精度。

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