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Water Quality Modelling Using Multivariate Statistical Analysis and Remote Sensing in South Florida

机译:南佛罗里达州使用多元统计分析和遥感进行水质建模

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摘要

The overall objective of this dissertation research is to understand the spatiotemporal dynamics of water quality parameters in different water bodies of South Florida. Two major approaches (multivariate statistical techniques and remote sensing) were used in this study. Multivariate statistical techniques include cluster analysis (CA), principal component analysis (PCA), factor analysis (FA), discriminant analysis (DA), absolute principal component score-multiple linear regression (APCS-MLR) and PMF receptor modeling techniques were used to assess the water quality and identify and quantify the potential pollution sources affecting the water quality of three major rivers of South Florida. For this purpose, a 15-year (2000--2014) data set of 12 water quality variables, and about 35,000 observations were used. Agglomerative hierarchical CA grouped 16 monitoring sites into three groups (low pollution, moderate pollution, and high pollution) based on their similarity of water quality characteristics. DA, as an important data reduction method, was used to assess the water pollution status and analysis of its spatiotemporal variation. PCA/FA identified potential pollution sources in wet and dry seasons, respectively, and the effective mechanisms, rules, and causes were explained. The APCS-MLR and PMF models apportioned their contributions to each water quality variable.;Also, the bio-physical parameters associated with the water quality of the two important water bodies of Lake Okeechobee and Florida Bay were investigated based on remotely sensed data. The principal objective of this part of the study is to monitor and assess the spatial and temporal changes of water quality using the application of integrated remote sensing, GIS data, and statistical techniques. The optical bands in the region from blue to near infrared and all the possible band ratios were used to explore the relation between the reflectance of a waterbody and observed data. The developed MLR models appeared to be promising for monitoring and predicting the spatiotemporal dynamics of optically active and inactive water quality characteristics in Lake Okeechobee and Florida Bay. It is believed that the results of this study could be very useful to local authorities for the control and management of pollution and better protection of water quality in the most important water bodies of South Florida.
机译:本研究的总体目标是了解南佛罗里达州不同水体中水质参数的时空动态。在这项研究中使用了两种主要方法(多元统计技术和遥感)。多元统计技术包括聚类分析(CA),主成分分析(PCA),因子分析(FA),判别分析(DA),绝对主成分评分-多元线性回归(APCS-MLR)和PMF受体建模技术评估水质,确定并量化影响南佛罗里达州三大河流水质的潜在污染源。为此目的,使用了15年(2000--2014年)的12个水质变量的数据集,并使用了约35,000个观测值。聚集的分层CA根据水质特征的相似性将16个监视站点分为三类(低污染,中污染和高污染)。 DA是一种重要的数据减少方法,用于评估水污染状况并分析其时空变化。 PCA / FA分别确定了在潮湿和干燥季节的潜在污染源,并解释了有效的机制,规则和原因。 APCS-MLR和PMF模型将其对每个水质变量的贡献进行分配。此外,还基于遥感数据研究了与奥基乔比湖和佛罗里达湾两个重要水体的水质相关的生物物理参数。本部分研究的主要目的是利用综合遥感,GIS数据和统计技术的应用,监测和评估水质的时空变化。使用从蓝色到近红外区域的光学波段以及所有可能的波段比率来探索水体反射率与观测数据之间的关系。发达的MLR模型对于监测和预测奥基乔比湖和佛罗里达湾的旋光和非旋光水质特征的时空动态似乎很有希望。人们认为,这项研究的结果对于地方当局在南佛罗里达州最重要的水域进行污染的控制和管理以及更好地保护水质可能非常有用。

著录项

  • 作者

    Hajigholizadeh, Mohammad.;

  • 作者单位

    Florida International University.;

  • 授予单位 Florida International University.;
  • 学科 Civil engineering.;Environmental engineering.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 274 p.
  • 总页数 274
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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