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Carbon-based phytoplankton size classes retrieved via ocean color estimates of the particle size distribution

机译:通过海洋的粒径分布估计值检索的碳基浮游植物尺寸类别

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摘要

Owing to their important roles in biogeochemical cycles, phytoplankton functional types (PFTs) have been the aim of an increasing number of ocean color algorithms. Yet, none of the existing methods are based on phytoplankton carbon (C) biomass, which is a fundamental biogeochemical and ecological variable and the "unit of accounting" in Earth system models. We present a novel bio-optical algorithm to retrieve size-partitioned phytoplankton carbon from ocean color satellite data. The algorithm is based on existing methods to estimate particle volume from a power-law particle size distribution (PSD). Volume is converted to carbon concentrations using a compilation of allometric relationships. We quantify absolute and fractional biomass in three PFTs based on size - picophytoplankton (0.5-2 mu m in diameter), nanophytoplankton (2-20 mu m) and microphytoplankton (20-50 mu m). The mean spatial distributions of total phytoplankton C biomass and individual PFTs, derived from global SeaWiFS monthly ocean color data, are consistent with current understanding of oceanic ecosystems, i.e., oligotrophic regions are characterized by low biomass and dominance of picoplankton, whereas eutrophic regions have high biomass to which nanoplankton and microplankton contribute relatively larger fractions. Global climatological, spatially integrated phytoplankton carbon biomass standing stock estimates using our PSD-based approach yield similar to 0.25 Gt of C, consistent with analogous estimates from two other ocean color algorithms and several state-of-the-art Earth system models. Satisfactory in situ closure observed between PSD and POC measurements lends support to the theoretical basis of the PSD-based algorithm. Uncertainty budget analyses indicate that absolute carbon concentration uncertainties are driven by the PSD parameter N-o which determines particle number concentration to first order, while uncertainties in PFTs' fractional contributions to total C biomass are mostly due to the allometric coefficients. The C algorithm presented here, which is not empirically constrained a priori, partitions biomass in size classes and introduces improvement over the assumptions of the other approaches. However, the range of phytoplankton C biomass spatial variability globally is larger than estimated by any other models considered here, which suggests an empirical correction to the N-o parameter is needed, based on PSD validation statistics. These corrected absolute carbon biomass concentrations validate well against in situ POC observations.
机译:由于其在生物地球化学循环中的重要作用,浮游植物功能类型(PFT)已成为越来越多的海洋颜色算法的目标。但是,现有方法均未基于浮游植物碳(C)生物量,这是基本的生物地球化学和生态变量,也是地球系统模型中的“核算单位”。我们提出了一种新颖的生物光学算法,可从海洋彩色卫星数据中检索按大小划分的浮游植物碳。该算法基于现有方法,可根据幂律粒度分布(PSD)估算颗粒体积。体积是通过使用等距关系的汇编转换为碳浓度的。我们根据大小-浮游植物(直径0.5-2微米),纳米浮游植物(2-20微米)和浮游植物(20-50微米)的大小对三种PFT中的绝对和分数生物量进行定量。从全球SeaWiFS月度海洋颜色数据得出的总浮游植物C生物量和单个PFT的平均空间分布与当前对海洋生态系统的了解是一致的,即贫营养区的特征是低生物量和浮游植物的优势,而富营养区的特征是纳米浮游生物和微浮游生物对生物质的贡献相对较大。使用我们基于PSD的方法进行的全球气候,空间整合的浮游植物碳生物量固定存量估算值类似于0.25 Gt的C,与来自其他两种海洋颜色算法和几种最新地球系统模型的相似估算值一致。在PSD和POC测量之间观察到的满意的原位闭合特性为基于PSD的算法的理论基础提供了支持。不确定性预算分析表明,绝对碳浓度的不确定性由PSD参数N-o驱动,该参数将颗粒数浓度确定为一阶,而PFT对总C生物量的分数贡献中的不确定性主要归因于异速系数。这里介绍的C算法不受经验的先验约束,将生物量划分为大小级别,并引入了对其他方法假设的改进。但是,全球浮游植物C生物量空间变异性的范围大于此处考虑的任何其他模型所估计的范围,这表明需要基于PSD验证统计数据对N-o参数进行经验校正。这些校正后的绝对碳生物量浓度可以很好地验证原位POC观察结果。

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