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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Impact of bio-optical data assimilation on short-term coupled physical, bio-optical model predictions
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Impact of bio-optical data assimilation on short-term coupled physical, bio-optical model predictions

机译:生物光学数据同化对短期耦合物理,生物光学模型预测的影响

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Data assimilation experiments with the coupled physical, bio-optical model of Monterey Bay are presented. The objective of this study is to investigate whether the assimilation of satellite-derived bio-optical properties can improve the model predictions (phytoplankton population, chlorophyll) in a coastal ocean on time scales of 1-5 days. The Monterey Bay model consists of a physical model based on the Navy Coastal Ocean Model and a biochemical model which includes three nutrients, two phytoplankton groups (diatoms and small phytoplankton), two groups of zooplankton grazers, and two detrital pools. The Navy Coupled Ocean Data Assimilation system is used for the assimilation of physical observations. For the assimilation of bio-optical observations, we used reduced-order Kalman filter with a stationary forecast error covariance. The forecast error covariance is specified in the subspace of the multivariate (bio-optical, physical) empirical orthogonal functions estimated from a monthlong model run. With the assimilation of satellite-derived bio-optical properties (chlorophyll a or absorption due to phytoplankton), the model was able to reproduce intensity and tendencies in subsurface chlorophyll distributions observed at water sample locations in the Monterey Bay, CA. Data assimilation also improved agreement between the observed and model-predicted ratios between diatoms and small phytoplankton populations. Model runs with or without assimilation of satellite-derived bio-optical observations show underestimated values of nitrate as compared to the water sample observations. We found that an instantaneous update of nitrate based on statistical relations between temperature and nitrate corrected the model underestimation of the nitrate fields during the multivariate update. Key Points Data assimilation experiments were conducted during five days of upwelling Satellite bio-optical properties assimilation improves subsurface distributions Improved model-predicted ratios between diatoms and small phytoplankton
机译:提出了具有蒙特雷湾物理,生物光学耦合模型的数据同化实验。这项研究的目的是调查同化卫星生物光学特性是否可以改善1-5天时间尺度上沿海海洋中的模型预测(浮游植物种群,叶绿素)。蒙特利湾模型包括一个基于海军沿海海洋模型的物理模型和一个生化模型,该模型包括三种营养素,两组浮游植物(硅藻和小型浮游植物),两组浮游植物放牧者和两个碎屑池。海军耦合海洋数据同化系统用于物理观测的同化。为了对生物光学观测值进行同化,我们使用了具有固定预测误差协方差的降阶卡尔曼滤波器。预测误差协方差在从一个月的模型运行估计的多元(生物光学,物理)经验正交函数的子空间中指定。通过同化来自卫星的生物光学特性(叶绿素a或由于浮游植物引起的吸收),该模型能够重现在加利福尼亚州蒙特雷湾的水样位置观察到的地下叶绿素分布的强度和趋势。数据同化还改善了硅藻与小型浮游植物种群之间的观测比率与模型预测比率之间的一致性。与卫星衍生的生物光学观测结果进行同化或不同化的模型运行,与水样本观测结果相比,硝酸盐的价值均被低估。我们发现基于温度和硝酸盐之间的统计关系的硝酸盐的瞬时更新纠正了多元更新过程中模型对硝酸盐田的低估。关键点在上升流的五天内进行了数据同化实验,卫星生物光学特性同化改善了地下分布,改进了模型预测的硅藻与小型浮游植物之间的比率

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