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A Remote Sensing Algorithm of Column-Integrated Algal Biomass Covering Algal Bloom Conditions in a Shallow Eutrophic Lake

机译:浅层富营养化湖泊中覆盖藻华条件的柱整合藻生物量遥感算法

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Column integrated algal biomass provides a robust indicator for eutrophication evaluation because it considers the vertical variability of phytoplankton. However, most remote sensing-based inversion algorithms of column algal biomass assume a homogenous distribution of phytoplankton within the water column. This study proposes a new remote sensing-based algorithm to estimate column integrated algal biomass incorporating different possible vertical profiles. The field sampling was based on five surveys in Lake Chaohu, a large eutrophic shallow lake in China. Field measurements revealed a significant variation in phytoplankton profiles in the water column during algal bloom conditions. The column integrated algal biomass retrieval algorithm developed in the present study is shown to effectively describe the vertical variation of algal biomass in shallow eutrophic water. The Baseline Normalized Difference Bloom Index (BNDBI) was adopted to estimate algal biomass integrated from the water surface to 40 cm. Then the relationship between 40 cm integrated algal biomass and the whole column algal biomass at various depths was built taking into consideration the hydrological and bathymetry data of each site. The algorithm was able to accurately estimate integrated algal biomass with R 2 = 0.89, RMSE = 45.94 and URMSE = 28.58%. High accuracy was observed in the temporal consistency of satellite images (with the maximum MAPE = 7.41%). Sensitivity analysis demonstrated that the estimated algal biomass integrated from the water surface to 40 cm has the greatest influence on the estimated column integrated algal biomass. This algorithm can be used to explore the long-term variation of algal biomass to improve long-term analysis and management of eutrophic lakes.
机译:柱综合藻类生物量为富营养化评估提供了一个可靠的指标,因为它考虑了浮游植物的垂直变化。但是,大多数基于遥感的柱藻生物量反演算法都假定水柱内浮游植物的分布均匀。这项研究提出了一种新的基于遥感的算法,以估计结合不同可能的垂直剖面的柱整合藻类生物量。田间采样基于对中国大型富营养化浅水湖巢湖的五次调查。实地测量表明,在藻华期间,水柱中浮游植物的分布存在显着变化。结果表明,本研究开发的柱综合藻类生物量检索算法可有效描述浅水富营养化水中藻类生物量的垂直变化。采用基线归一化差异布鲁姆指数(BNDBI)来估计从水面到40厘米的藻类生物量。然后考虑到每个站点的水文和测深数据,建立了40 cm整合藻类生物量与整个深度的柱藻类生物量之间的关系。该算法能够准确估计R 2 = 0.89,RMSE = 45.94和URMSE = 28.58%的综合藻类生物量。在卫星图像的时间一致性中观察到了高精度(最大MAPE = 7.41%)。敏感性分析表明,从水面到40 cm处的藻类生物量估计值对柱中藻类生物量的估计值影响最大。该算法可用于探索藻类生物量的长期变化,以改善对富营养化湖泊的长期分析和管理。

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