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首页> 外文期刊>Journal of Geoscience and Environment Protection >Assessment of Spatio-Temporal Variations in Water Quality of Shailmari River, Khulna (Bangladesh) Using Multivariate Statistical Techniques
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Assessment of Spatio-Temporal Variations in Water Quality of Shailmari River, Khulna (Bangladesh) Using Multivariate Statistical Techniques

机译:使用多元统计技术评估库尔纳(孟加拉国)的谢尔马里河水质的时空变化

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Surface water has become one of the most vulnerable resources on the earth due to deterioration of its quality from diverse sources of pollution. Understanding of the spatiotemporal distribution of pollutants and identification of the sources in the river systems is a prerequisite for the protection and sustainable utilization of the water resources. Multivariate statistical techniques such as Principal Component Analysis (PCA) and Factor Analysis (FA) were applied in this study to investigate the temporal and spatial variations of water quality and appoint the major factors of pollution in the Shailmari River system. Water quality data for 14 physicochemical parameters from 11 monitoring sites over the year of 2014 in three sampling seasons were collected and analyzed for this study. Kruskal-Wallis test showed significant (p < 0.01) temporal and spatial variations in all of the water quality parameters of the river water. Principal component analysis (PCA) allowed extracting the contributing parameters affecting the seasonal water quality in the river system. Scatter plots of the PCs showed the tidal and spatial variation within river system and identified parameters controlling the behavior in each case. Factor analysis (FA) further reduced the data and extracted factors which are significantly responsible for water quality variation in the river. The results indicate that the parameters controlling the water quality in different seasons are related with salinity, anthropogenic pollution (sewage disposal, effluents) and agricultural runoff in pre-monsoon; precipitation induced surface runoff in monsoon; and erosion, oxidation or organic pollution (point and non-point sources) in post-monsoon. Therefore, the study reveals the applicability and usefulness of the multivariate statistical methods in assessing water quality of river by identifying the potential environmental factors controlling the water quality in different seasons which might help to better understand, monitor and manage the quality of the water resources.
机译:由于各种污染源导致地表水质量下降,地表水已成为地球上最脆弱的资源之一。了解污染物的时空分布并确定河流系统的来源是保护和可持续利用水资源的前提。本研究采用多变量统计技术,例如主成分分析(PCA)和因子分析(FA)来调查水质的时空变化,并指定谢尔马里河水系的主要污染因素。这项研究收集了2014年三个采样季节的11个监测点的14个理化参数的水质数据。 Kruskal-Wallis检验表明,河水的所有水质参数均存在显着(p <0.01)的时空变化。主成分分析(PCA)允许提取影响河流系统季节性水质的贡献参数。 PC的散点图显示了河流系统内的潮汐和空间变化,并确定了在每种情况下控制行为的参数。因子分析(FA)进一步减少了数据并提取了对河流水质变化有重大影响的因子。结果表明,不同季节控制水质的参数与盐度,人为污染(污水处理,废水)和季风前的农业径流量有关。季风降水引起的地表径流;季风后的侵蚀,氧化或有机污染(点源和非点源)。因此,本研究通过确定控制不同季节水质的潜在环境因素,揭示了多元统计方法在评估河流水质中的适用性和实用性,这可能有助于更好地理解,监测和管理水资源质量。

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