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Monitoring levels of cyanobacterial blooms using the visual cyanobacteria index (VCI) and floating algae index (FAI)

机译:使用视觉蓝藻指数(VCI)和浮藻指数(FAI)监控蓝藻水华的水平

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Cyanobacterial bloom is a growing environmental problem in inland waters. In this study, we propose a method for monitoring levels of cyanobacterial blooms from Landsat/ETM+ images. The visual cyanobacteria index (VCI) is a simple index for in-situ visual interpretation of cyanobacterial blooms levels, by-classifying them into six categories based on aggregation (e.g., subsurface blooms, surface scum). The floating algae index (FAI) and remote sensing reflectance in the red wavelength domain, which can be obtained from Landsat/ETM+ images, were related to the VCI for estimating cyanobacteria bloom levels from the Landsat/ETM+ images. Nine field campaigns were carried out at Lakes Nishiura and Kitaura (Lake Kasumigaura group), Japan, from June to August 2012. We also collected reflectance spectra at 20 stations for different VCI levels on August 3, 2012. The reflectance spectra were recalculated in correspondence to each ETM+ band, and used to calculate the FAI. The FAI values were then used to determine thresholds for classifying cyanobacterial blooms into different VCI levels. These FAI thresholds were validated using three Landsat/ETM+ images. Results showed that FAI values differed significantly at the respective VCI levels except between levels 1 and 2 (subsurface blooms) and levels 5 and 6 (surface scum and hyperscum). This indicated that the FAI was able to detect the high level of cyanobacteria that forms surface scum. In contrast, the Landsat/ETM+ band 3 reflectance could be used as an alternative index for distinguishing surface scum and hyperscum. Application of the thresholds for VCI classifications to three Landsat/ETM+ images showed that the volume of cyanobacterial blooms can be effectively classified into the six VCI levels. (C) 2015 Elsevier B.V. All rights reserved.
机译:蓝藻水华是内陆水域日益严重的环境问题。在这项研究中,我们提出了一种从Landsat / ETM +图像监测蓝藻水华水平的方法。视觉蓝细菌指数(VCI)是用于对蓝藻水华水平进行现场视觉解释的简单指标,可根据聚集将其分为六类(例如地下水华,表面浮渣)。可以从Landsat / ETM +图像获得的红色波长域中的浮藻指数(FAI)和遥感反射率与从Landsat / ETM +图像估计蓝藻水华水平的VCI有关。 2012年6月至2012年8月,在日本的西浦湖和北浦(霞浦浦湖群)进行了9次野战。我们还于2012年8月3日在20个站点采集了不同VCI水平的反射光谱。每个ETM +频段,并用于计算FAI。然后将FAI值用于确定将蓝藻水华分类为不同VCI水平的阈值。这些FAI阈值使用三张Landsat / ETM +图像进行了验证。结果表明,除了1级和2级(地下水华)和5级和6级(表面浮渣和高浮渣)之间,各个VCI等级的FAI值均存在明显差异。这表明FAI能够检测到形成表面浮渣的高水平蓝细菌。相反,Landsat / ETM + 3波段的反射率可以用作区分表面浮渣和高浮渣的替代指标。将VCI分类的阈值应用于三张Landsat / ETM +图像显示,蓝藻水华的数量可以有效地分类为六个VCI水平。 (C)2015 Elsevier B.V.保留所有权利。

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