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Neural network-based estimates of Southern Ocean net community production from in situ O_2 / Ar and satellite observation: a methodological study

机译:基于神经网络的原位O_2 / Ar和卫星观测对南大洋网群落产量的估计:一种方法学研究

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摘要

Southern Ocean organic carbon export plays an important role in the global carbon cycle, yet its basin-scale climatology and variability are uncertain due to limited coverage of in situ observations. In this study, a neural network approach based on the self-organizing map (SOM) is adopted to construct weekly gridded (1° ×1°) maps of organic carbon export for the Southern Ocean from 1998 to 2009. The SOM is trained with in situ measurements of O_2 / Ar-derived net community production (NCP) that are tightly linked to the carbon export in the mixed layer on timescales of one to two weeks and with six potential NCP predictors: photosynthetically available radiation (PAR), particulate organic carbon (POC), chlorophyll (Chl), sea surface temperature (SST), sea surface height (SSH), and mixed layer depth (MLD). This nonparametric approach is based entirely on the observed statistical relationships between NCP and the predictors and, therefore, is strongly constrained by observations.
机译:南大洋有机碳出口在全球碳循环中起着重要作用,但由于实地观测的覆盖面有限,其盆地规模的气候和变化性尚不确定。在这项研究中,采用基于自组织图(SOM)的神经网络方法,构建了1998年至2009年南大洋每周一次的有机碳出口网格化(1°×1°)分布图。 O_2 / Ar来源的净社区生产(NCP)的原位测量与混合层中的碳出口紧密相关,时间为一到两周,并具有六个潜在的NCP预测因子:光合有效辐射(PAR),有机微粒碳(POC),叶绿素(Chl),海面温度(SST),海面高度(SSH)和混合层深度(MLD)。这种非参数方法完全基于NCP和预测变量之间观察到的统计关系,因此受到观察的强烈限制。

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