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A multivariate statistical approach to the integration of different land-uses, seasons, and water quality as water resources management tool

机译:多元统计方法,将不同的土地利用,季节和水质整合为水资源管理工具

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The externalities generated by disorderly urbanization and lack of proper planning becomes one of the main factors that must be considered in water resource management. To address the multiple uses of water and avoid conflicts among users, decision-making must integrate these factors into quality and quantity aspects. The water quality index (WQI), using the correlation matrix and the multivariate principal component analysis (PCA) and cluster analysis (CA) techniques were used to analyze the surface water quality, considering urban, rural, and industrial regions in an integrated way, even with data gaps. The results showed that the main parameters that impacted the water quality index were dissolved oxygen, elevation, and total phosphorus. The results of PCA analysis showed 86.25% of the variance in the data set, using physicochemical and topographic parameters. In the cluster analysis, the dissolved oxygen, elevation, total coliforms, E. coli, total phosphorus, total nitrogen, and temperature parameters showed a significant correlation between the data's dimensions. In the industrial region, the characteristic parameter was the organic load, in the rural region were nutrients (phosphorus and nitrogen), and in the urban region was E. coli (an indicator of the pathogenic organisms' presence). In the classification of the samples, there was a predominance of "Good" quality, however, samples classified as "Acceptable" and "Bad" occurred during the winter and spring months (dry season) in the rural and industrial regions. Water pollution is linked to inadequate land use and occupation and population density in certain regions without access to sanitation services.
机译:城市化无序和缺乏适当规划而产生的外部性成为水资源管理中必须考虑的主要因素之一。为了解决水资源的多种用途并避免用户之间的冲突,决策必须将这些因素纳入质量和数量方面。结合相关矩阵,多元主成分分析(PCA)和聚类分析(CA)技术,使用水质指数(WQI)来分析地表水水质,综合考虑城市,农村和工业区,即使有数据缺口。结果表明,影响水质指数的主要参数是溶解氧,海拔和总磷。 PCA分析的结果显示,使用理化和地形参数,数据集中的变异率为86.25%。在聚类分析中,溶解氧,海拔,大肠菌群,大肠杆菌,总磷,总氮和温度参数显示出数据尺寸之间的显着相关性。在工业地区,特征参数是有机负荷,在农村地区是营养物(磷和氮),在城市地区是大​​肠杆菌(病原生物存在的指标)。在样品分类中,“质量”质量占优势,但是,在农村和工业区的冬季和春季(干燥季节),样品分为“合格”和“不良”。水污染与某些地区无法获得卫生服务的土地使用,占领和人口密度不足有关。

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