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High-resolution Ensemble Forecasting For The Gulf Of Mexico Eddies And Fronts

机译:墨西哥湾涡旋和前沿的高分辨率集合预报

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High-resolution models and realistic boundary conditions are necessary to reproduce the meso-scale dynamics of the Gulf of Mexico (GOM). In order to achieve this, we use a nested configuration of the Hybrid Coordinate Ocean Model (HYCOM), where the Atlantic TOPAZ system provides lateral boundary conditions to a high-resolution (5 km) model of the GOM. However, such models cannot provide accurate forecasts of mesoscale variability, such as eddy shedding event, without data assimilation. Eddy shedding events involve the rapid growth of nonlinear instabilities that are difficult to forecast. The known sources of error are the initial state, the atmospheric condition, and the lateral boundary condition. We present here the benefit of using a small ensemble forecast (10 members) for providing confidence indices for the prediction, while using a data assimilation scheme based on optimal interpolation. Our set of initial states is provided by using different values of a data assimilation parameter, while the atmospheric and lateral boundary conditions are perturbed randomly. Changes in the data assimilation parameter appear to control the main position of the large features of the GOM in the initial state, whereas changes in the boundary conditions (lateral and atmospheric) appears to control the propagation of cyclonic eddies at their boundary. The ensemble forecast is tested for the shedding of Eddy Yankee (2006). The Loop Current and eddy fronts observed from ocean color and altimetry are almost always within the estimated positions from the ensemble forecast. The ensemble spread is correlated both in space and time to the forecast error, which implies that confidence indices can be provided in addition to the forecast. Finally, the ensemble forecast permits the optimization of a data assimilation parameter for best performance at a given forecast horizon.
机译:高分辨率模型和现实边界条件对于重现墨西哥湾(GOM)的中尺度动力学是必要的。为了实现这一目标,我们使用了混合坐标海洋模型(HYCOM)的嵌套配置,其中,大西洋TOPAZ系统为GOM的高分辨率模型(5 km)提供了横向边界条件。但是,如果没有数据同化,这些模型就无法提供中尺度变异性的准确预测,例如涡流脱落事件。涡流脱落事件涉及难以预测的非线性不稳定性的迅速增长。已知的误差源是初始状态,大气条件和横向边界条件。在此,我们介绍使用小型总体预测(10个成员)为预测提供置信度指数的好处,同时使用基于最佳插值的数据同化方案。我们通过使用数据同化参数的不同值来提供一组初始状态,而大气和横向边界条件则是随机扰动的。数据同化参数的变化似乎可以控制初始状态下GOM大特征的主要位置,而边界条件(横向和大气)的变化似乎可以控制旋风涡在其边界处的传播。对集合预报进行了Eddy Yankee(2006)脱落的测试。从海洋颜色和高空观测到的环流和涡流锋线几乎总是在集合预报的估计位置之内。集成散度在空间和时间上都与预测误差相关,这意味着除了预测以外,还可以提供置信度指标。最后,整体预报可优化数据同化参数,以在给定的预报范围内实现最佳性能。

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