首页> 外文期刊>Journal of African Earth Sciences >Multivariate analysis of ground water characteristics of Ajali sandstone formation: A case study of Udi and Nsukka LGAs of Enugu State of Nigeria
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Multivariate analysis of ground water characteristics of Ajali sandstone formation: A case study of Udi and Nsukka LGAs of Enugu State of Nigeria

机译:阿贾里砂岩地层地下水特征的多元分析:以尼日利亚埃努古州乌迪和纳苏卡LGAs为例

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摘要

Multivariate statistical techniques were applied for the evaluation and interpretation of borehole characteristics of the Ajali sandstone geological formation of Enugu state of Nigeria to determine the latent structure of the borehole characteristics and to classify 9 borehole parameters from 33 locations into borehole groups of similar characteristics. Two chemometric data mining techniques used were, Cluster Analysis (CA) and Principal Component Analysis (PCA). PCA identified the borehole parameters responsible for variation in the borehole characteristic of the study area. Out of the nine parameters examined, the PCA identified borehole depth, borehole casing, static water level and dynamic water level as the most significant parameters responsible for variation in borehole characteristics. Hierarchical Cluster Analysis also grouped the 33 borehole locations into three clusters. The CA grouping of the borehole parameters showed similar trend with PCA hence validating the grouping of variations in the borehole characteristics in the geological zone. The results of the study indicate that PCA and CA are useful in offering reliable classification of the borehole characteristic of the study area. (C) 2017 Elsevier Ltd. All rights reserved.
机译:应用多元统计技术对尼日利亚Enugu州Ajali砂岩地质构造的井眼特征进行评估和解释,以确定井眼特征的潜在结构,并将来自33个位置的9个井眼参数分类为相似特征的井眼组。使用了两种化学计量学数据挖掘技术,即聚类分析(CA)和主成分分析(PCA)。 PCA确定了导致研究区域的井眼特征发生变化的井眼参数。在检查的9个参数中,PCA将井眼深度,井眼套管,静态水位和动态水位确定为导致井眼特征变化的最重要参数。层次聚类分析还将33个钻孔位置分为三个聚类。井眼参数的CA分组显示与PCA相似的趋势,因此验证了地质区域中井眼特征变化的分组。研究结果表明,PCA和CA可用于对研究区域的井眼特征进行可靠的分类。 (C)2017 Elsevier Ltd.保留所有权利。

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