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利用光吸收光谱形状对浮游植物粒径级分进行遥感估算。

Remote estimation of phytoplankton size fractions using the spectral shape of light absorption.

作者信息

Wang Shengqiang, Ishizaka Joji, Hirawake Toru, Watanabe Yuji, Zhu Yuanli, Hayashi Masataka, Yoo Sinjae

出版信息

Opt Express. 2015 Apr 20;23(8):10301-18. doi: 10.1364/OE.23.010301.

Abstract

Phytoplankton size structure plays an important role in ocean biogeochemical processes. The light absorption spectra of phytoplankton provide a great potential for retrieving phytoplankton size structure because of the strong dependence on the packaging effect caused by phytoplankton cell size and on different pigment compositions related to phytoplankton taxonomy. In this study, we investigated the variability in light absorption spectra of phytoplankton in relation to the size structure. Based on this, a new approach was proposed for estimating phytoplankton size fractions. Our approach use the spectral shape of the normalized phytoplankton absorption coefficient (a(ph)(λ)) through principal component analysis (PCA). Values of a(ph)(λ) were normalized to remove biomass effects, and PCA was conducted to separate the spectral variance of normalized a(ph)(λ) into uncorrelated principal components (PCs). Spectral variations captured by the first four PC modes were used to build relationships with phytoplankton size fractions. The results showed that PCA had powerful ability to capture spectral variations in normalized a(ph)(λ), which were significantly related to phytoplankton size fractions. For both hyperspectral a(ph)(λ) and multiband a(ph)(λ), our approach is applicable. We evaluated our approach using wide in situ data collected from coastal waters and the global ocean, and the results demonstrated a good and robust performance in estimating phytoplankton size fractions in various regions. The model performance was further evaluated by a(ph)(λ) derived from in situ remote sensing reflectance (R(rs)(λ)) with a quasi-analytical algorithm. Using R(rs)(λ) only at six bands, accurate estimations of phytoplankton size fractions were obtained, with R(2) values of 0.85, 0.61, and 0.76, and root mean-square errors of 0.130, 0.126, and 0.112 for micro-, nano-, and picophytoplankton, respectively. Our approach provides practical basis for remote estimation of phytoplankton size structure using a(ph)(λ) derived from satellite observations or rapid field instrument measurements in the future.

摘要

浮游植物的大小结构在海洋生物地球化学过程中起着重要作用。浮游植物的光吸收光谱为反演浮游植物大小结构提供了巨大潜力,这是因为它强烈依赖于浮游植物细胞大小所引起的包装效应以及与浮游植物分类学相关的不同色素组成。在本研究中,我们调查了浮游植物光吸收光谱与大小结构相关的变异性。基于此,提出了一种估算浮游植物大小分级的新方法。我们的方法通过主成分分析(PCA)使用归一化浮游植物吸收系数(a(ph)(λ))的光谱形状。a(ph)(λ)的值进行了归一化以消除生物量效应,并进行主成分分析将归一化a(ph)(λ)的光谱方差分离为不相关的主成分(PCs)。前四个PC模式捕获的光谱变化用于建立与浮游植物大小分级的关系。结果表明,主成分分析具有强大的能力来捕获归一化a(ph)(λ)中的光谱变化,这些变化与浮游植物大小分级显著相关。对于高光谱a(ph)(λ)和多波段a(ph)(λ),我们的方法均适用。我们使用从沿海水域和全球海洋收集的广泛现场数据评估了我们的方法,结果表明在估算不同区域的浮游植物大小分级方面具有良好且稳健的性能。通过准分析算法从现场遥感反射率(R(rs)(λ))导出的a(ph)(λ)进一步评估了模型性能。仅使用六个波段的R(rs)(λ),就获得了浮游植物大小分级的准确估计值,微型、纳米级和微微型浮游植物的决定系数(R(2))值分别为0.85、0.61和0.76,均方根误差分别为0.130、0.126和0.112。我们的方法为未来利用卫星观测或快速现场仪器测量得出的a(ph)(λ)对浮游植物大小结构进行遥感估计提供了实际依据。

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