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Water Quality Monitoring Using Remote Sensing and an Artificial Neural Network

机译:利用遥感和人工神经网络进行水质监测

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摘要

In remotely located watersheds or large waterbodies, monitoring water quality parameters is often not feasible because of high costs and site inaccessibility. A cost-effective remote sensing-based methodology was developed to predict water quality parameters over a large and logistically difficult area. Landsat spectral data were used as a proxy, and a neural network model was developed to quantify water quality parameters, namely chlorophyll-a, turbidity, and phosphorus before and after ecosystem restoration and during the wet and dry seasons. The results demonstrate that the developed neural network model provided an excellent relationship between the observed and simulated water quality parameters. These correlated for a specific region in the greater Florida Everglades at R~2>0.95 in 1998-1999 and in 2009-2010 (dry and wet seasons). Moreover, the root mean square error values for phosphorus, turbidity, and chlorophyll-a were below 0.03 mg LT~(-1), 0.5 NTU, and 0.17 mg m~(-3), respectively, at the neural network training and validation phases. Using the developed methodology, the trends for temporal and spatial dynamics of the selected water quality parameters were investigated. In addition, the amounts of phosphorus and chlorophyll-a stored in the water column were calculated demonstrating the usefulness of this methodology to predict water quality parameters in complex ecosystems.
机译:在偏远流域或大型水体中,由于高昂的成本和难以进入的站点,通常无法监测水质参数。开发了一种具有成本效益的基于遥感的方法,以预测大面积和后勤困难地区的水质参数。使用Landsat光谱数据作为代理,并开发了一个神经网络模型来量化生态系统恢复前后以及在干燥和潮湿季节的水质参数,即叶绿素a,浊度和磷。结果表明,开发的神经网络模型在观察到的和模拟的水质参数之间提供了极好的关系。在1998-1999年和2009-2010年(旱季和湿季),这与大佛罗里达大沼泽地的特定区域相关,R〜2> 0.95。此外,在神经网络训练和验证中,磷,浊度和叶绿素a的均方根误差值分别低于0.03 mg LT〜(-1),0.5 NTU和0.17 mg m〜(-3)。阶段。使用开发的方法,研究了所选水质参数的时空动态趋势。此外,计算了水柱中存储的磷和叶绿素-a的量,表明该方法可用于预测复杂生态系统中的水质参数。

著录项

  • 来源
    《Water, Air, and Soil Pollution》 |2012年第8期|p.4875-4887|共13页
  • 作者单位

    Science Department, Everglades Foundation,18001 Old Cutler Road,Miami, FL 33157, USA,Department of Earth and Environment,Florida International University,Miami, FL 33199, USA;

    Science Department, Everglades Foundation,18001 Old Cutler Road,Miami, FL 33157, USA;

    Science Department, Everglades Foundation,18001 Old Cutler Road,Miami, FL 33157, USA;

    Department of Earth and Environment,Florida International University,Miami, FL 33199, USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    ecological restoration; landsat TM; neural network; remote sensing;

    机译:生态恢复;landsat TM;神经网络;遥感;
  • 入库时间 2022-08-17 13:40:41

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