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首页> 外文期刊>Journal of marine systems: journal of the European Association of Marine Sciences and Techniques >Data assimilation with a local Ensemble Kalman Filter applied to a three-dimensional biological model of the Middle Atlantic Bight
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Data assimilation with a local Ensemble Kalman Filter applied to a three-dimensional biological model of the Middle Atlantic Bight

机译:使用本地Ensemble Kalman滤波器进行的数据同化应用于中大西洋海岸线的三维生物模型

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A multivariate sequential data assimilation approach, the Localized Ensemble Kalman Filter (LEnKF), was used to assimilate daily satellite observations of ocean chlorophyll into a three-dimensional physical-biological model of the Middle Atlantic Bight (MAB) for the year 2006. Covariance localization was applied to make the EnKF analysis more effective by removing spurious long-range correlations in the ensemble approximation of the model's covariance. The model is based on the Regional Ocean Modeling System (ROMS) and coupled to a biological nitrogen cycle model, which includes seven state variables: chlorophyll, phytoplankton, nitrate, ammonium, small and large detrital nitrogen, and zooplankton. An ensemble of 20 model simulations, generated by perturbing the biological parameters according to assumed probability distributions, was used. Model fields of chlorophyll, phytoplankton, nitrate and zooplankton were updated at all vertical layers during LEnKF analysis steps, based on their cross-correlations with surface chlorophyll (the observed variable). The performance of the LEnKF scheme, its influence on the model's predictive skill and on surface particulate organic matter concentrations and primary production are investigated. Estimates of surface chlorophyll and particulate organic carbon are improved in the data-assimilative simulation when compared to one without any assimilation, as is the model's predictive skill.
机译:多变量顺序数据同化方法,即局部集成卡尔曼滤波(LEnKF),用于将2006年每天对海洋叶绿素的卫星观测同化为中大西洋海域(MAB)的三维物理生物学模型。2006年。通过消除模型协方差的整体逼近中的虚假长期相关性,应用了EnKF分析以使EnKF分析更有效。该模型基于区域海洋建模系统(ROMS)并耦合到生物氮循环模型,该模型包括七个状态变量:叶绿素,浮游植物,硝酸盐,铵,碎屑和小碎屑氮以及浮游动物。使用了一组20个模型模拟的集合,这些集合是通过根据假定的概率分布来扰动生物学参数而生成的。根据LEnKF分析步骤与表面叶绿素的互相关性(观察到的变量),在LEnKF分析步骤的所有垂直层更新叶绿素,浮游植物,硝酸盐和浮游动物的模型场。研究了LEnKF方案的性能,其对模型的预测技能以及对表面颗粒有机物浓度和一次生产的影响。与没有任何同化的模型相比,数据同化模拟中的表面叶绿素和有机碳颗粒估计值得到了改进,这是该模型的预测技能。

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