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Surface water quality evaluation using multivariate methods and a new water quality index in the Indian River Lagoon, Florida

机译:佛罗里达印第安河泻湖使用多元方法和新水质指数进行地表水质量评估

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Appropriate assessment of long-term water quality monitoring data is essential to evaluation of water quality and this often requires use of multivariate techniques. Our objective was to evaluate water quality in the south Indian River Lagoon (IRL), Florida using several multivariate techniques and a comprehensive water quality index (WQI). Clustering was used to cluster the six monitoring stations into three groups, with stations on the same or characteristic-similar canals being in the same group. The first five factors from exploratory factor analysis (EFA) explain around 70% of the total variance and were used to interpret water quality characterized by original constituents for the purpose of data reduction. Nutrient species (phosphorus and nitrogen) were major variables involved in the construction of the principal components (PCs) and factors. Seasonal and spatial differences were observed in compositional patterns of factors and principal water quality constituents. Positive or negative trends were detected for different factor at different monitoring groups identified by clustering during different seasons. The composite WQI was developed based on principal water quality constituents greatly contributing to the construction of factors which were derived from EFA. The WQI showed significant difference among the three clustering groups with the greatest WQI median in group 1 stations (C23S48, C23S97, and C24S49). Medians of WQI were significantly greater in the wet than in the dry season, which implied more natural nutrient water status during the dry than the wet season probably due to the different contribution of nonpoint sources between two seasons.
机译:适当评估长期水质监测数据对于评估水质至关重要,这通常需要使用多元技术。我们的目标是使用几种多元技术和综合水质指数(WQI)来评估佛罗里达州南印度河泻湖(IRL)的水质。使用聚类将六个监测站分为三个组,相同或特征相似的运河上的站位于同一组中。探索性因子分析(EFA)的前五个因子可解释约70%的总方差,并用于解释以原始成分为特征的水质,以简化数据。营养物质(磷和氮)是构成主要成分(PCs)和因子的主要变量。在因素和主要水质成分的组成模式中观察到季节性和空间差异。在不同季节通过聚类确定的不同监测组,检测到不同因素的正趋势或负趋势。基于主要水质成分开发了复合WQI,极大地促进了从EFA得出的因子的构建。在第1组站(C23S48,C23S97和C24S49)中,WQI在WQI中值最大的三个聚类组之间显示出显着差异。湿季WQI的中位数明显高于旱季,这意味着旱季的自然营养水状况比湿季要多,这可能是由于两个季节之间非点源的贡献不同所致。

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