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Water level prediction skill of an operational marine forecast using a hybrid Kalman filter and time series modeling approach

机译:使用混合卡尔曼滤波和时间序列建模方法的可操作海洋预报的水位预测技能

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Summary form only given. The operational service the "Water Forecast" gives 5-day forecasts for the North Sea, Baltic Sea and interconnecting waters every 12 hours. Predictions of a range of physical and environmental parameters are provided. In this contribution, focus will be on water level. An ongoing development is focused on data assimilation of tidal gauge data. A cost-effective Kalman filter based procedure that uses a regularized constant Kalman gain is applied for the tidal gauge data. This approach gives an acceptable computational overhead for operational applications. The now- and forecast skill of the scheme is evaluated and compared to standard modeling results. Data assimilation improves the forecast skill, but local time series models of varying complexity often possess a longer forecast horizon at measurement points. For these error correction methods however, the problem is to extrapolate this correction spatially to increase the skill in validation points. A hybrid of the Kalman filter and local time series models is constructed by assimilating water levels predicted by the time series models. Its prediction skill is validated against the previous results.
机译:仅提供摘要表格。 “水预报”业务服务每12小时对北海,波罗的海和相互连接的水域进行5天预报。提供了一系列物理和环境参数的预测。在这项贡献中,重点将放在水位上。正在进行的开发集中在潮汐仪数据的数据同化上。使用潮汐量规数据的基于成本效益的卡尔曼滤波程序,使用规则化的恒定卡尔曼增益。这种方法为操作应用程序提供了可接受的计算开销。评估该方案的现在和预测技能,并将其与标准建模结果进行比较。数据同化可以提高预测技能,但是复杂程度不同的本地时间序列模型通常在测量点具有较长的预测范围。然而,对于这些错误校正方法,问题在于在空间上外推该校正以增加验证点的技能。通过吸收时间序列模型预测的水位,构造了卡尔曼滤波器和本地时间序列模型的混合体。它的预测技能已针对先前的结果进行了验证。

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