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On the assimilation of absolute geodetic dynamic topography in a global ocean model: impact on the deep ocean state

机译:关于全球海洋模型中绝对大地动态地形的同化:对深海国家的影响

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General ocean circulation models are not perfect. Forced with observed atmospheric fluxes they gradually drift away from measured distributions of temperature and salinity. We suggest data assimilation of absolute dynamical ocean topography (DOT) observed from space geodetic missions as an option to reduce these differences. Sea surface information of DOT is transferred into the deep ocean by defining the analysed ocean state as a weighted average of an ensemble of fully consistent model solutions using an error-subspace ensemble Kalman filter technique. Success of the technique is demonstrated by assimilation into a global configuration of the ocean circulation model FESOM over 1 year. The dynamic ocean topography data are obtained from a combination of multi-satellite altimetry and geoid measurements. The assimilation result is assessed using independent temperature and salinity analysis derived from profiling buoys of the AGRO float data set. The largest impact of the assimilation occurs at the first few analysis steps where both the model ocean topography and the steric height (i.e. temperature and salinity) are improved. The continued data assimilation over 1 year further improves the model state gradually. Deep ocean fields quickly adjust in a sustained manner: A model forecast initialized from the model state estimated by the data assimilation after only 1 month shows that improvements induced by the data assimilation remain in the model state for a long time. Even after 11 months, the modelled ocean topography and temperature fields show smaller errors than the model forecast without any data assimilation.
机译:一般的海洋环流模型并不完美。在观测到的大气通量的作用下,它们逐渐偏离测得的温度和盐度分布。我们建议从太空大地测量任务中观察到的绝对动态海洋地形(DOT)的数据同化,以减少这些差异。通过使用误差子空间集成卡尔曼滤波技术将分析后的海洋状态定义为完全一致的模型解整体的加权平均值,可以将DOT的海面信息传输到深海中。该技术的成功通过将海洋环流模型FESOM吸收到1年以上的全球配置中得到证明。动态海洋地形数据是从多卫星测高和大地水准面测量的组合中获得的。使用独立的温度和盐度分析评估同化结果,该分析来自于AGRO浮标数据集的轮廓浮标。同化的最大影响发生在最初的几个分析步骤中,其中模型海洋地形和空间高度(即温度和盐度)都得到了改善。持续1年以上的数据同化进一步逐步改善了模型状态。深海领域持续快速地进行调整:仅在1个月后根据数据同化所估计的模型状态初始化的模型预测表明,数据同化所引起的改进会长期保留在模型状态中。甚至在11个月之后,没有任何数据同化的情况下,建模的海洋地形和温度场的误差仍比模型预测的误差小。

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