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Kalman filter based data assimilation system to improve numerical sea ice predictions in the Arctic Ocean

机译:基于卡尔曼滤波器的数据同化系统,可改善北冰洋海冰数值预报

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With the recent changes in the Arctic climate, increased transportation can be observed in the Arctic Ocean. For safe navigation along the Arctic Sea routes, it is important to accurately predict the ice conditions. In this study the ice-ocean coupled Ice-POM model is improved by a Kalman filter based data assimilation system. This system incorporates sea ice observation data such as sea ice concentration, sea ice thickness and sea ice velocity to improve the numerical predictions. Ocean part of the model is based on the Princeton Ocean Model while the Ice model considers the discrete characteristics of ice along the ice edge. In an ice-ocean coupled model, atmospheric forcing directly affects the accuracy of predictions. However, different atmospheric data sets produced by different weather agencies show large differences in the Arctic region. Model errors largely depend upon the inaccuracies in forcing data. This study uses an ensemble of multiple atmospheric data sets collected from different weather agencies and the spread of the ensemble is taken as an indicator of the model error covariance. The Observation errors were varied according to the location and the season. Assimilation has improved the predictions of sea ice variables. It has also indirectly improved the ocean conditions. This Atmospheric forcing based Kalman filter (AFKF) method outperforms other assimilation methods such as direct assimilation and nudging methods.
机译:随着北极气候的最新变化,北冰洋的运输量有所增加。为了在北极海沿线安全航行,准确预测冰层状况非常重要。在这项研究中,通过基于卡尔曼滤波器的数据同化系统改进了冰洋耦合的Ice-POM模型。该系统结合了海冰观测数据,例如海冰浓度,海冰厚度和海冰速度,以改善数值预测。该模型的海洋部分基于普林斯顿海洋模型,而冰模型则考虑了沿冰边缘的冰的离散特征。在冰海耦合模型中,大气强迫直接影响预测的准确性。但是,不同气象机构产生的不同大气数据集显示出北极地区的巨大差异。模型错误很大程度上取决于强制数据的不准确性。这项研究使用了从不同天气机构收集的多个大气数据集的集合,并且该集合的扩散被用作模型误差协方差的指标。观察误差根据位置和季节而变化。同化改善了对海冰变量的预测。它也间接改善了海洋条件。这种基于大气强迫的卡尔曼滤波器(AFKF)方法优于其他同化方法,例如直接同化和微调方法。

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