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Inversion of spectral absorption coefficients to infer phytoplankton size classes, chlorophyll concentration, and detrital matter

机译:光谱吸收系数的反演可推断浮游植物的大小,叶绿素浓度和碎屑物质

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摘要

Measured spectral absorption coefficients were inverted to infer phytoplankton concentration in three size classes (picoplankton, nanoplankton, and microplankton), chlorophyll concentration[Chl], and both magnitude and spectral shape of absorption by colored detrital matter (CDM). Our algorithm allowed us to solve for the nonlinear factor of CDM absorption slope separately from the other linear factors, thus fully utilizing the additive characteristic inherent in absorption coefficients. We validated the inversion with three datasets: two spatially distributed global datasets, the Laboratoire d'Oceanographie de Villefranche dataset and the NASA bio-Optical Marine Algorithm Dataset, and a time series coastal dataset, the Martha's Vineyard Coastal Observatory dataset. Comparison with high performance liquid chromatography analyses showed that the phytoplankton size classes can be retrieved with correlation coefficients (r)> 0.7, root mean square errors of 0.2, and median relative errors of 20% in oceanic waters and with similar performance in coastal waters. Much improved agreement was found for the entire phytoplankton population, with r > 0.90 for[Chl] and absorption coefficients (a(ph)) for all three datasets. The inferred a(CDM) (400) and CDM spectral slope agree within +/- 4% of measurements in both oceanic and coastal waters. The results indicate that the chlorophyll-a specific absorption spectra used as an inversion kernel represent well the global mean states for each of the three phytoplankton size classes. The method can be applied to either bulk or particulate absorption data and is spectrally flexible. (C) 2015 Optical Society of America
机译:将测得的光谱吸收系数进行倒置,以推断出三种大小类别(微浮游生物,纳米浮游生物和微浮游生物)中的浮游植物浓度,叶绿素浓度[Chl]以及有色碎屑(CDM)的吸收量和光谱形状。我们的算法允许我们与其他线性因子分开求解CDM吸收斜率的非线性因子,从而充分利用吸收系数固有的加性特征。我们使用三个数据集验证了该反演:三个空间分布的全局数据集,Villefranche实验室数据集和NASA生物光学海洋算法数据集,以及一个时间序列海岸数据集,Martha葡萄园海岸天文台数据集。与高效液相色谱分析的比较表明,在海洋水域中,浮游植物的大小分类可以以相关系数(r)> 0.7,均方根误差为0.2,中位相对误差为20%来检索,并且在沿海水域中具有相似的性能。整个浮游植物种群的一致性得到了很大改善,[Chl]的r> 0.90,所有三个数据集的吸收系数(a(ph))。推断的a(CDM)(400)和CDM光谱斜率在海洋和沿海水域的测量值的+/- 4%之内一致。结果表明,用作反演内核的叶绿素a特异性吸收光谱很好地代表了三种浮游植物大小类别的全局平均状态。该方法可以应用于大量或颗粒吸收数据,并且在光谱上具有灵活性。 (C)2015年美国眼镜学会

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