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首页> 外文期刊>Toxins >Harmful Algal Bloom Characterization at Ultra-High Spatial and Temporal Resolution Using Small Unmanned Aircraft Systems
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Harmful Algal Bloom Characterization at Ultra-High Spatial and Temporal Resolution Using Small Unmanned Aircraft Systems

机译:使用小型无人飞机系统以超高空间和时间分辨率进行有害藻华表征

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摘要

Harmful algal blooms (HABs) degrade water quality and produce toxins. The spatial distribution of HAbs may change rapidly due to variations wind, water currents, and population dynamics. Risk assessments, based on traditional sampling methods, are hampered by the sparseness of water sample data points, and delays between sampling and the availability of results. There is a need for local risk assessment and risk management at the spatial and temporal resolution relevant to local human and animal interactions at specific sites and times. Small, unmanned aircraft systems can gather color-infrared reflectance data at appropriate spatial and temporal resolutions, with full control over data collection timing, and short intervals between data gathering and result availability. Data can be interpreted qualitatively, or by generating a blue normalized difference vegetation index (BNDVI) that is correlated with cyanobacterial biomass densities at the water surface, as estimated using a buoyant packed cell volume (BPCV). Correlations between BNDVI and BPCV follow a logarithmic model, with r2-values under field conditions from 0.77 to 0.87. These methods provide valuable information that is complimentary to risk assessment data derived from traditional risk assessment methods, and could help to improve risk management at the local level.
机译:有害藻华(HAB)降低水质并产生毒素。由于风,水流和种群动态的变化,HAbs的空间分布可能会迅速变化。基于传统采样方法的风险评估受到水样数据点稀疏以及采样和结果可用性之间的延迟的困扰。需要在与特定地点和时间的本地人类和动物相互作用相关的时空分辨率下进行本地风险评估和风险管理。小型无人飞机系统可以在适当的时空分辨率下收集彩色红外反射率数据,并且可以完全控制数据收集的时间,并且可以缩短数据收集与结果可用性之间的间隔。数据可以定性解释,也可以通过生成蓝色归一化植被指数(BNDVI)来确定,该指数与水面蓝藻生物量密度相关,如使用浮力堆积细胞体积(BPCV)所估计的那样。 BNDVI和BPCV之间的相关性遵循对数模型,在野外条件下(0.77至0.87)具有r 2 值。这些方法提供了宝贵的信息,这些信息是对传统风险评估方法衍生的风险评估数据的补充,可以帮助改善本地风险管理。

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