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Ensemble Data Assimilation Simulation Experiments for the Coastal Ocean: Impact of Different Observed Variables

机译:沿海海洋的集合数据同化仿真实验:不同观察变量的影响

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A coastal ocean data assimilation system tested in simulation earlier is examined for sensitivity to the different types of observational data. The system couples an advanced ensemble Kalman filter algorithm to a detailed and sophisticated primitive equations coastal ocean model. It is found that assimilating only one type of data, say temperature, greatly slows down the approach to asymptotic behavior of the analysis of the other variables. Assimilating temperature alone does not help to infer salinity and vice versa.
机译:在仿真中测试的沿海性数据同化系统之前测试了对不同类型的观测数据的敏感性。该系统将高级集合Kalman滤波算法耦合到一个沿海海洋模型的详细和复杂的原始方程。发现仅同化一种类型的数据,说温度,大大减慢了对另一个变量分析的渐近行为的方法。仅同化温度并没有有助于推断盐度,反之亦然。

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