首页> 外文会议>IEEE International Conference on Networking, Sensing and Control;ICNSC 2013;International Conference on Networking, Sensing and Control >Intercomparisons between Empirical Models with Data Fusion Techniques for Monitoring Water Quality in a Large Lake
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Intercomparisons between Empirical Models with Data Fusion Techniques for Monitoring Water Quality in a Large Lake

机译:大型湖泊水质的数据融合技术与数据融合技术之间的离法

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Lake Erie has a history of algal blooms, due to eutrophic conditions attributed to urban and agricultural activities. Blue-green algae or cyanobacteria thrive in these eutrophic conditions, since they require little energy for cell maintenance and growth. Microcystis are a type of blue-green algae of particular concern, because they produce microcystin, a potent hepatotoxin. Microcystin not only presents a threat to the ecosystem, but it threatens commercial fishing operations and water treatment plants using the lake as a water source. In this paper, we have proposed an early warning system using Integrated Data Fusion and Machine-learning (IDFM) techniques to determine microcystin concentrations and distribution by measuring the surface reflectance of the water body using satellite sensors. The fine spatial resolution of Landsat is fused with the high temporal resolution of MODIS to create a synthetic image possessing both high temporal and spatial resolution. As a demonstration, the spatiotemporal distribution of microcystin within western Lake Erie is reconstructed using the band data from the fused products and applied machine-learning techniques. Analysis of the results through statistical indices confirmed that the Genetic Programming (GP) model has potential accurately estimating microcystin concentrations in the lake (R~2 = 0.5699).
机译:由于城市和农业活动归因于富营养的条件,伊利湖拥有藻类盛开的历史。蓝绿藻或蓝藻在这些营养不良的条件下茁壮成长,因为它们需要很少的能量进行细胞维持和生长。微囊杆菌是一种特别令人担忧的蓝绿藻,因为它们产生微囊藻,浓郁的肝毒素。微囊虫不仅对生态系统呈现威胁,而且威胁着使用湖泊作为水源的商业捕鱼运营和水处理厂。在本文中,我们提出了一种利用集成数据融合和机器学习(IDFM)技术的预警系统,以通过使用卫星传感器测量水体的表面反射来确定微囊藻浓度和分布。 Landsat的精细空间分辨率与MODIS的高时间分辨率融合,以创建具有高时间和空间分辨率的合成图像。作为示范,使用来自融合产品的频带数据和应用的机器学习技术来重建西湖伊利中微囊藻的时空分布。通过统计指标分析结果证实,遗传编程(GP)模型具有潜在的准确估算湖中的微囊藻浓度(R〜2 = 0.5699)。

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