首页> 外文期刊>Journal of marine systems: journal of the European Association of Marine Sciences and Techniques >Stochastic estimation of biogeochemical parameters of a 3D ocean coupled physical-biogeochemical model: Twin experiments
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Stochastic estimation of biogeochemical parameters of a 3D ocean coupled physical-biogeochemical model: Twin experiments

机译:3D海洋耦合物理-生物地球化学模型的生物地球化学参数的随机估计:双实验

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摘要

In a 3D ocean coupled physical-biogeochemical model, implemented on the North Atlantic at 1/4° and including six biogeochemical variables, three parameters (phytoplankton maximal growth rate, phytoplankton mortality rate and zooplankton maximal grazing rate) are assumed to be stochastic and have regional variations. Ensemble simulations (200 members, lasting 30 days during the spring bloom) show that the phytoplankton concentration is sensitive to the parameterization, with strong spatial heterogeneity, combined to a nonlinear and non-Gaussian behavior. Within the Kalman filter theory, parameter estimation can be done, in the framework of optimal estimate with Gaussian assumptions and reduced rank approximation, when the state vector is augmented with the uncertain parameters. Twin data assimilation experiments, using surface phytoplankton as observations, were performed either in the linear framework or introducing a nonlinear local transformation (anamorphosis). The anamorphosis is performed using a piecewise linear change of variables (applied to all biogeochemical quantities) remapping the percentiles of the empirical marginal distribution provided by the ensemble on the percentiles of the Gaussian distribution. Nonlinear parameter estimation performed better than linear estimation: on the 39 estimated parameters, there is a reduction in the variance obtained with the nonlinear analysis, compared to the variance obtained with the linear analysis, except for 2 parameters. The reduction is better than 60% in 80% of these cases. The anamorphosis is also useful to define an objective error norm for the biogeochemical variables.
机译:在北大西洋以1/4°实施并包含六个生物地球化学变量的3D海洋耦合物理-生物地球化学模型中,假定三个参数(浮游植物最大生长速率,浮游植物死亡率和浮游动物最大放牧速率)是随机的并且具有区域差异。集合模拟(200名成员,在春季开花期间持续30天)表明,浮游植物的浓度对参数化敏感,具有强烈的空间异质性,并结合了非线性和非高斯行为。在卡尔曼滤波理论中,当状态向量增加不确定参数时,可以在具有高斯假设和降秩近似的最佳估计框架内完成参数估计。使用表面浮游植物作为观测的双数据同化实验,是在线性框架中进行的,或引入了非线性局部变换(变形)。使用变量的分段线性变化(适用于所有生物地球化学量)执行变形,将集合提供的经验边际分布的百分位数重新映射到高斯分布的百分位数上。非线性参数估计的效果要好于线性估计:在39个估计参数上,与非线性分析相比,除2个参数外,与线性分析相比,方差有所减少。在80%的情况下,减少率优于60%。变形也可用于定义生物地球化学变量的客观误差范数。

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