首页> 外文期刊>Journal of Geophysical Research, C. Oceans: JGR >Evaluation of several model error schemes in the EnKF assimilation: Applied to Argo profiles in the Pacific Ocean
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Evaluation of several model error schemes in the EnKF assimilation: Applied to Argo profiles in the Pacific Ocean

机译:EnKF同化中几种模型误差方案的评估:应用于太平洋的Argo剖面

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摘要

The efficacy of several model error schemes in the Ensemble Kalman Filter (EnKF) data assimilation is investigated through a series of sensitivity experiments, in which the Argo and other in situ temperature and salinity profiles are assimilated into an ocean general circulation model (OGCM) for the Pacific Ocean. Different schemes for combining the additive inflation, multiplicative inflation, one‐step bias correction and two‐stage bias correction are evaluated in the framework of the EnKF. Experimental results indicate that the additive inflation is the key technique that can maintain ensemble spread in an adequate range. When sufficient observations are available, the assimilation system with additive inflation scheme can efficiently reduce both model bias and random errors. The combination of additive inflation and multiplicative inflation can further improve the performance of the assimilation system, in particular when the additive inflation underestimates model error. The bias correction schemes, the one‐step method and the persistent bias method are effective in reducing the model bias only within a relatively short initial assimilation period and in some regions. Further improvement from the bias correction schemes is not evident as the assimilation period increases.
机译:通过一系列敏感性实验研究了集合卡尔曼滤波(EnKF)数据同化中几种模型误差方案的有效性,其中将Argo和其他原位温度和盐度剖面同化为海洋总环流模型(OGCM),太平洋。在EnKF框架中,评估了将加性通货膨胀,乘性通货膨胀,一步偏差校正和两阶段偏差校正相结合的不同方案。实验结果表明,加性充气是可以在适当范围内保持整体扩散的关键技术。当有足够的观测值时,具有加性充气方案的同化系统可以有效地减少模型偏差和随机误差。加性充气和乘性充气的组合可以进一步改善同化系统的性能,特别是当加性充气低估模型误差时。偏差校正方案,单步法和持久偏差方法仅在相对短的初始同化周期内和某些区域内有效地减小了模型偏差。随着同化周期的增加,偏差校正方案的进一步改进并不明显。

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