Characterization of Surface Water Quality along Ismailia Canal, Nile River, Egypt

M. Hamed
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引用次数: 2

Abstract

Ismailia Canal, one of the main branches of the Nile River in Egypt, is considered as one of the most important irrigation and drinking water source for Ismailia, Port Said and Suez governorates. The canal received industrial, municipal and agricultural wastewater which caused deterioration in its water quality. To determine the spatial variability of Ismailia canal water quality and identify the sources of pollution that presently affect the canal water quality, the scope of study was divided into three main parts. In the first part, the assessment of water quality data was monitored at thirty different sampling station along the canal, over the period of two years (2017, 2018), using 30 physicochemical and biological water quality variables and using multivariate statistics of principal components analysis (PCA) to interpret before the step of analyzing the concealed variables that determined the variance of observed water quality of various source points was conducted. In the second part, the major dominant factors responsible for canal water quality variations was driven. In the third part, K-means algorithm was used for cluster characterization analysis.The result of PCA shows that 8 principal components contained the key variables and accounted for 87.34% of total variance of the canal water quality and the dominant water quality parameters were: Lead (Pb), Total Phosphorus (TP), Ammonia (NH3), Turbidity, Fecal Coliform (FC), Iron (Fe) and Aluminum (AL). However, the results from K-Means Algorithm for clustering analysis were based on the dominant parameters concentrations, determined 5 cluster groups and produced cluster centers (prototypes). Referring to the clustering classification, a noted water quality was deteriorating as the cluster number increased from 1 to 5, thus the cluster grouping could be used to identify the physical, chemical and biological processes creating the variations in the canal water quality parameters.This study provides an insight into the various statistical models, when water quality monitoring data are combined with spatial data for characterizing spatial and temporal trends, indicating their important potential for decreasing the costs associated with monitoring. This can also be very useful to international water resource authorities for the control and management of pollution and better protection of surface water quality.
埃及尼罗河伊斯梅利亚运河地表水水质特征研究
伊斯梅利亚运河是埃及尼罗河的主要支流之一,被认为是伊斯梅利亚、塞得港和苏伊士省最重要的灌溉和饮用水源之一。运河接收工业、市政和农业废水,造成水质恶化。为了确定伊斯梅利亚运河水质的空间变异性,确定目前影响运河水质的污染源,研究范围分为三个主要部分。在第一部分中,对运河岸线30个不同采样站的水质数据进行了为期两年(2017年、2018年)的监测评估,利用30个理化和生物水质变量,利用多元统计主成分分析(PCA)进行了解释,然后对决定各源点观测水质方差的隐变量进行了分析。第二部分分析了影响运河水质变化的主要主导因素。第三部分使用K-means算法进行聚类特征分析。主成分分析结果表明,8个主成分包含关键变量,占运河水质总方差的87.34%,优势水质参数为铅(Pb)、总磷(TP)、氨(NH3)、浊度、粪大肠菌群(FC)、铁(Fe)和铝(AL)。然而,K-Means算法聚类分析的结果是基于优势参数浓度,确定5个聚类组并产生聚类中心(原型)。在聚类分类中,当聚类数从1增加到5时,一个注意到的水质逐渐恶化,因此聚类分类可以用来识别造成运河水质参数变化的物理、化学和生物过程。当水质监测数据与空间数据相结合以表征空间和时间趋势时,本研究提供了对各种统计模型的深入了解,表明它们在降低监测相关成本方面具有重要潜力。这对国际水资源当局在控制和管理污染和更好地保护地表水质量方面也非常有用。
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