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Measurement of Cyanobacterial Bloom Magnitude using Satellite Remote Sensing

机译:使用卫星遥感测量蓝藻绽放幅度

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Cyanobacterial harmful algal blooms (cyanoHABs) are a serious environmental, water quality and public health issue worldwide because of their ability to form dense biomass and produce toxins. Models and algorithms have been developed to detect and quantify cyanoHABs biomass using remotely sensed data but not for quantifying bloom magnitude, information that would guide water quality management decisions. We propose a method to quantify seasonal and annual cyanoHAB magnitude in lakes and reservoirs. The magnitude is the spatiotemporal mean of weekly or biweekly maximum cyanobacteria biomass for the season or year. CyanoHAB biomass is quantified using a standard reflectance spectral shape-based algorithm that uses data from Medium Resolution Imaging Spectrometer (MERIS). We demonstrate the method to quantify annual and seasonal cyanoHAB magnitude in Florida and Ohio (USA) respectively during 2003-2011 and rank the lakes based on median magnitude over the study period. The new method can be applied to Sentinel-3 Ocean Land Color Imager (OLCI) data for assessment of cyanoHABs and the change over time, even with issues such as variable data acquisition frequency or sensor calibration uncertainties between satellites. CyanoHAB magnitude can support monitoring and management decision-making for recreational and drinking water sources.
机译:蓝藻有害藻类盛开(Cyanohohabs)是全球性的严重环境,水质和公共卫生问题,因为它们能够形成致密的生物量并产生毒素。已经开发了模型和算法以使用远程感测的数据来检测和量化Cyanohabs生物量,而不是用于量化绽放幅度,引导水质管理决策的信息。我们提出了一种在湖泊和水库中量化季节性和年度Cyanohohab幅度的方法。该幅度是本周或季节或两周的季节性或季节或年度最大的蓝藻的时空均值。使用基于标准的反射谱形状的算法量化Cyanohab生物量,该算法使用来自中分辨率成像光谱仪(Meris)的数据。我们展示了在2003 - 2011年期间分别在佛罗里达州和俄亥俄州(美国)在佛罗里达州和俄亥俄州(美国)的方法,并根据研究期间的中值幅度排列湖泊。新方法可以应用于Sentinel-3海洋土地彩色成像仪(OLCI)数据,用于评估Cyanohabs和随时间的变化,即使是诸如卫星之间的可变数据采集频率或传感器校准不确定性之类的问题。 Cyanohab幅度可以支持娱乐和饮用水来源的监测和管理决策。

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