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Multivariate statistical and trend analyses of surface water quality in the central Indian River Lagoon area, Florida

机译:佛罗里达州中部印度河泻湖区地表水水质的多变量统计和趋势分析

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摘要

The Indian River Lagoon (IRL) estuary system is of concern to environmental scientists, because its water quality has been deteriorating in the past several decades. To understand spatial variability and temporal changes of surface water quality in the central IRL area, cluster analysis, principle component analysis, and nonparametric trend analysis were conducted for a dataset of 27,648 observations, collected for twelve parameters of surface water quality over the period of 1998-2013 at twelve monitoring stations. The cluster analysis separated the data into four groups, which are closely related to the locations of the monitoring stations. The principal component analysis was applied to each of the four groups to determine the important water quality parameters. In each group, five principal components explain 75-85% of the total data variance, and the components include the following water quality parameters: nutrient species (nitrogen and phosphorus), physicochemical parameters (salinity, specific conductivity, pH, and DO), and erosion factors (total suspended solids and turbidity). Statistically significant trends in these water quality parameters were detected by applying the Mann-Kendall trend test, and abrupt trend shifts were detected by applying the sequential Mann-Kendall trend test. The trends and trend shifts are attributed to land use changes, projects of lagoon restoration, and the 2006 drought conditions in the study area. The results of this study can be of direct use to management projects for improving surface water quality at the central IRL area.
机译:印度河泻湖(IRL)河口系统受到环境科学家的关注,因为其水质在过去几十年中一直在恶化。为了了解IRL中部地区地表水水质的空间变异性和时间变化,对1998年以来27648项观测数据进行了聚类分析,主成分分析和非参数趋势分析,收集了12个地表水水质参数-2013年在十二个监测站。聚类分析将数据分为四个组,这四个组与监视站的位置密切相关。将主成分分析应用于四组中的每一组,以确定重要的水质参数。在每组中,五个主要成分解释了总数据差异的75%至85%,这些成分包括以下水质参数:营养物质(氮和磷),理化参数(盐度,比电导率,pH和DO),和侵蚀因素(总悬浮固体和浊度)。通过应用Mann-Kendall趋势检验可检测出这些水质参数的统计上显着趋势,而通过应用顺序Mann-Kendall趋势检验可检测到突变趋势。趋势和趋势转移归因于研究区域的土地利用变化,泻湖修复项目以及2006年的干旱状况。这项研究的结果可直接用于改善IRL中部地区地表水水质的管理项目。

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