Cyanobacteria detection in Guarapiranga Reservoir (São Paulo State, Brazil) using Landsat TM and ETM+ images

Q3 Environmental Science
I. Ogashawara, E. Alcântara, J. Stech, J. Tundisi
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引用次数: 8

Abstract

Algae bloom is one of the major consequences of the eutrophication of aquatic systems, including algae capable of producing toxic substances. Among these are several species of cyanobacteria, also known as blue-green algae, that have the capacity to adapt themselves to changes in the water column. Thus, the horizontal distribution of cyanobacteria harmful algae blooms (CHABs) is essential, not only to the environment, but also for public health. The use of remote sensing techniques for mapping CHABs has been explored by means of bio-optical modeling of phycocyanin (PC), a unique inland waters cyanobacteria pigment. However, due to the small number of sensors with a spectral band of the PC absorption feature, it is difficult to develop semi-analytical models. This study evaluated the use of an empirical model to identify CHABs using TM and ETM+ sensors aboard Landsat 5 and 7 satellites. Five images were acquired for applying the model. Besides the images, data was also collected in the Guarapiranga Reservoir, in Sao Paulo Metropolitan Region, regarding the cyanobacteria cell count (cells/mL), which was used as an indicator of CHABs biomass. When model values were analyzed excluding calibration factors for temperate lakes, they showed a medium correlation (R2=0.81, p=0.036), while when the factors were included the model showed a high correlation (R2=0.96, p=0.003) to the cyanobacteria cell count. The empirical model analyzed proved useful as an important tool for policy makers, since it provided information regarding the horizontal distribution of CHABs which could not be acquired from traditional monitoring techniques.
利用Landsat TM和ETM+图像检测巴西圣保罗州瓜拉皮兰加水库蓝藻
藻华是水生系统富营养化的主要后果之一,包括能够产生有毒物质的藻类。其中有几种蓝藻,也被称为蓝绿藻,它们有能力适应水柱的变化。因此,蓝藻有害藻华(CHABs)的水平分布不仅对环境,而且对公众健康至关重要。通过对独特的内陆蓝藻色素藻蓝蛋白(PC)的生物光学建模,探索了利用遥感技术绘制CHABs的方法。然而,由于具有PC吸收特征的光谱带的传感器数量较少,因此很难建立半解析模型。本研究利用Landsat 5号和7号卫星上的TM和ETM+传感器评估了利用经验模型识别chab的效果。应用该模型获得了5幅图像。除图像外,还收集了圣保罗市Guarapiranga水库的蓝藻细胞计数(细胞/mL)数据,该数据被用作CHABs生物量的指标。当排除温带湖泊的校正因子时,模型值与蓝藻细胞计数呈中等相关性(R2=0.81, p=0.036),当包括校正因子时,模型值与蓝藻细胞计数呈高相关性(R2=0.96, p=0.003)。所分析的经验模型证明是决策者的一个重要工具,因为它提供了传统监测技术无法获得的关于CHABs水平分布的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Revista Ambiente e Agua
Revista Ambiente e Agua Environmental Science-Environmental Science (all)
CiteScore
1.80
自引率
0.00%
发文量
48
审稿时长
22 weeks
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