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Multivariate Spatial and Temporal Analysis to Study the Variation of Physico-Chemical Parameters in Litani River, Lebanon

机译:多变量空间和时间分析研究黎巴嫩利列尼河山脉物理化学参数变异

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Water quality of Litani River was deteriorated due to rapid population growth and industrial and agricultural activity. Multivariate analysis of spatio-temporal variation of water quality is useful to improve the projects of water quality management and treatment of the river. In this work, analysis of samples from different locations at different seasons was investigated. The spatio-temporal variation of physico-chemical parameters of the water was determined. A total of 11 water quality parameters were monitored over 12 months during 2018 at 3 sites located in different areas of the river. Multivariate statistical techniques were used to study the spatio-temporal evolution of the studied parameters and the correlation between the different factors. Principal Component Analysis (PCA) was applied to the responsible factors for water quality variations during wet and dry periods. The multivariate analysis of variance (MANOVA) was also applied to the same factors and gives the best results for both spatial and temporal analysis. A black point of agricultural, industrial and sewage water pollution was identified in Jeb-Jennine station from the high concentrations of ammonia, sulfate and phosphate. This difference was proved by the major changes in the values of the parameters from one station to the other. Jeb-Jennine represents a main pollution area in the river. The high ammonia, sulfate and phosphate concentrations result from the important agricultural, industrial and sewage water pollution in the area. A high bacterial activity was highlighted in Jeb-Jennine and Quaroun stations because of the presence of the high nitrite concentrations in the two locations. All parameters are highly affected by climate factors, especially temperature and precipitation. TDS, salinity, electrical conductivity and the concentrations of all pollutants increase during wet season affected by the runoff. Other factors can affect the water quality of the river for example geographical features of the region and seasonal human activity like tourism. The correlation between different parameters was evaluated using PCA statistical method. This correlation is not stable, and evolves between wet and dry season.
机译:由于人口迅速增长和工业和农业活动,利尼河的水质恶化。水质的时空变化的多变量分析对于改善水质管理项目和河流治疗的工程有用。在这项工作中,研究了不同季节不同地点的样本的分析。确定了水的物理化学参数的时空变化。在2018年,在河流不同地区的3个地点,每年有11个月的11个月监测11个水质参数。多变量统计技术用于研究所研究参数的时空演化和不同因素之间的相关性。主要成分分析(PCA)应用于潮湿和干燥时期的水质变化的负责因子。变差分析(MANOVA)也适用于相同的因素,并给出空间和时间分析的最佳效果。在JEB-jennine站,从高浓度的氨,硫酸盐和磷酸盐中鉴定了一个农业,工业和污水污染的黑点。通过从一个站到另一个站的参数值的主要变化证明了这种差异。 Jeb-jennine代表了河里的主要污染区域。高氨,硫酸盐和磷酸盐浓度是该地区的重要农业,工业和污水污染。由于两个位置中存在高亚硝酸盐浓度,在JEB-JENNINE和QUAROUS站中突出了高细菌活性。所有参数受到气候因素,尤其是温度和降水的影响。在受径流影响的潮湿季节期间,TDS,盐度,导电性和所有污染物的浓度增加。其他因素可以影响河流的水质,例如该地区的地域特征,以及旅游等季节性活动。使用PCA统计方法评估不同参数之间的相关性。这种相关性不稳定,潮湿和干燥季节之间的发展。

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