Optical Modeling of Spectral Backscattering and Remote Sensing Reflectance From Emiliania huxleyi Blooms

被引:15
|
作者
Neukermans, Griet [1 ]
Fournier, Georges [2 ]
机构
[1] Sorbonne Univ, CNRS, Lab Oceanog Villefranche, Paris, France
[2] DRDC, Valcartier Res Lab, Valcartier, PQ, Canada
关键词
coccolithophores; optical model; coccolith morphology; backscattering coefficient; backscattering efficiency; size distribution; ocean color remote sensing; hyperspectral; LIGHT-ABSORPTION; COCCOLITHOPHORE BLOOMS; SCATTERING; PARTICLES; PRYMNESIOPHYCEAE; PHYTOPLANKTON; COCCOSPHERES; MORPHOLOGY; GULF;
D O I
10.3389/fmars.2018.00146
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
In this study we develop an analytical model for spectral backscattering and ocean color remote sensing of blooms of the calcifying phytoplankton species Emiliania huxleyi. Blooms of this coccolithophore species are ubiquitous and particularly intense in temperate and subpolar ocean waters. We first present significant improvements to our previous analytical light backscattering model for E. huxleyi coccoliths and coccospheres by accounting for the elliptical shape of coccoliths and the multi-layered coccosphere architecture observed on detailed imagery of E. huxleyi liths and coccospheres. Our new model also includes a size distribution function that closely matches measured E. huxleyi size distributions. The model for spectral backscattering is then implemented in an analytical radiative transfer model to evaluate the variability of spectral remote sensing reflectance with respect to changes in the size distribution of the coccoliths and during a hypothetical E. huxleyi bloom decay event in which coccospheres shed their liths. Our modeled remote sensing reflectance spectra reproduced well the bright milky turquoise coloring of the open ocean typically associated with the final stages of E. huxleyi blooms, with peak reflectance at a wavelength of 0.49 mu m. Our results also show that the magnitude of backscattering from coccoliths when attached to or freed from the coccosphere does not differ much, contrary to what is commonly assumed, and that the spectral shape of backscattering is mainly controlled by the size and morphology of the coccoliths, suggesting that they may be estimated from spectral backscattering.
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页数:20
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