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Remote sensing of coccolithophore blooms in selected oceanic regions using the PhytoDOAS method applied to hyper-spectral satellite data

机译:使用应用于超光谱卫星数据的植物卫生方法,遥感Coccolthophore绽放的植物中的绽放

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In this study temporal variations of coccolithophore blooms are investigated using satellite data. Eight years (from 2003 to 2010) of data of SCIAMACHY, a hyper-spectral satellite sensor on-board ENVISAT, were processed by the PhytoDOAS method to monitor the biomass of coccolithophores in three selected regions. These regions are characterized by frequent occurrence of large coccolithophore blooms. The retrieval results, shown as monthly mean time series, were compared to related satellite products, including the total surface phytoplankton, i.e. total chlorophyll a (from GlobColour merged data) and the particulate inorganic carbon (from MODIS-Aqua). The inter-annual variations of the phytoplankton bloom cycles and their maximum monthly mean values have been compared in the three selected regions to the variations of the geophysical parameters: sea-surface temperature (SST), mixed-layer depth (MLD) and surface wind-speed, which are known to affect phytoplankton dynamics. For each region, the anomalies and linear trends of the monitored parameters over the period of this study have been computed. The patterns of total phytoplankton biomass and specific dynamics of coccolithophore chlorophyll a in the selected regions are discussed in relation to other studies. The PhytoDOAS results are consistent with the two other ocean color products and support the reported dependencies of coccolithophore biomass dynamics on the compared geophysical variables. This suggests that PhytoDOAS is a valid method for retrieving coccolithophore biomass and for monitoring its bloom developments in the global oceans. Future applications of time series studies using the PhytoDOAS data set are proposed, also using the new upcoming generations of hyper-spectral satellite sensors with improved spatial resolution.
机译:在本研究中,使用卫星数据研究了Coccolethophore绽放的时间变化。八年(从2003年到2010年)款Sciamachy数据,一种超光谱卫星传感器在板上的环境中,通过植物毒性方法处理,以在三个选定的区域中监测Coccolithophoores的生物量。这些区域的特征在于频繁发生大型CoCColithophore绽放。与每月平均时间序列显示的检索结果与相关卫星产品相比,包括总表面浮游植物,即总叶绿素A(来自GlobColour合并数据)和颗粒状无机碳(来自Modis-Aqua)。在三个选定的地区比较了地球物理参数的变化中的植物间盛开循环的年间变化及其最大月平均值:海面温度(SST),混合层深度(MLD)和表面风 - 熟食,已知影响浮游植物动态。对于每个区域,已经计算了本研究期间受监测参数的异常和线性趋势。与其他研究讨论了所选区域中的Coccolhophore叶绿素A的总浮游生物生物量和特定动态的模式。 PhytodoAs结果与另外两种海洋颜色产品一致,并支持在比较地球物理变量上报告的Coccolthophore生物量动力学的依赖关系。这表明PhytodoAs是检索Coccolheophore生物量的有效方法,并用于监测其在全球海洋中的绽放发展。建议使用PhytodoAS数据集的时间序列研究的未来应用,同时还使用具有改进的空间分辨率的新推动多种超光谱卫星传感器。

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