Delineating Stations along the Coastline of Delta State, Nigeria into Pollution Categories: Multivariate Approach

A. E. Kaine, R. Ikomi, K. Iloba
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Abstract

Aquatic ecosystems disturbance globally are increasing at alarming rate and it has debilitating effects on the ecological balance of the systems. The disturbances experienced by aquatic systems arise mainly from human influences. In this present study, we delineated six stations into pollution categories using multivariate approach (principal component analysis; PCA). The six stations selected were; SW 1- sea water (Benin River mouth/sea), SW2- Benin River (Benin River mouth/sea), SW3- sea water (Escravos River mouth/sea), SW4-River mouth (Escravos River mouth/sea), SW5- sea water (Forcados River mouth/sea) and SW6-River mouth (Forcados River mouth/sea). The PCA we constructed to visualize the relationship between the sampled stations and selected physico-chemical parameters showed that the first PCA component had a variance of 53.29% with an eigenvalue of 6.93 while the second PCA component explained 38.10% with an eigen value of 4.95. SW1 and SW2 were negatively correlated with DO, THC and conductivity, and nitrate, COD, TSS and temperature were negatively correlated with SW5 and SW6. Phosphate, salinity and turbidity were positively correlated with SW3 and SW4. Sulphate, pH and BOD were not associated with any of the stations sampled. Of the six stations we delineated, four were categorized as heavily polluted and they include; SW1, SW2, SW5 and SW6, while SW3 was moderately polluted and SW4 was fairly polluted. This showed that the selected stations within the coastlines of Delta State, Nigeria are heavily impacted by human influences.         
将尼日利亚三角洲州海岸线沿线的站点划分为污染类别:多变量方法
全球水生生态系统的扰动正以惊人的速度增加,并对生态系统的生态平衡产生了破坏性影响。水生系统所经历的干扰主要来自人类的影响。在本研究中,我们使用多变量方法(主成分分析;主成分分析)。选定的六个电台是;sw1 -海水(贝宁河口/海),SW2-贝宁河(贝宁河口/海),SW3-海水(埃斯克拉沃斯河口/海),sw4 -河口(埃斯克拉沃斯河口/海),SW5-海水(福尔卡多斯河口/海)和sw6 -河口(福尔卡多斯河口/海)。构建的主成分分析显示,第一个主成分的方差为53.29%,特征值为6.93;第二个主成分的方差为38.10%,特征值为4.95。SW1和SW2与DO、THC和电导率呈负相关,硝酸盐、COD、TSS和温度与SW5和SW6呈负相关。磷酸盐、盐度和浊度与SW3和SW4呈正相关。硫酸盐、pH值和BOD与任何采样站都没有关联。在我们划定的6个站点中,有4个被列为重度污染,它们包括;SW1、SW2、SW5和SW6, SW3为中度污染,SW4为较重度污染。这表明,尼日利亚三角洲州海岸线内的选定监测站受到人类影响的严重影响。
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