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Salinity Assimilation Using S(T): Covariance Relationships

机译:使用S(T)的盐度同化:协方差关系

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Assimilation of salinity into ocean and climate general circulation models is a very important problem. Argo data now provide far more salinity observations than ever before. In addition, a good analysis of salinity over time in ocean reanalyses can give important results for understanding climate change. Here it is shown from the historical ocean database that over large regions of the globe (mainly midlatitudes and lower latitudes) variance of salinity on an isotherm S(T) is often less than variance measured at a particular depth S(z). It is also shown that the dominant temporal variations in S(T) occur more slowly than variations in S(z), based on power spectra from the Bermuda time series. From ocean models it is shown that the horizontal spatial covariance of S(T) often has larger scales than S(z). These observations suggest an assimilation method based on analyzing S(T). An algorithm for assimilating salinity data on isotherms is then presented, and it is shown how this algorithm produces orthogonal salinity increments to those produced during the assimilation of temperature profiles. It is argued that the larger space and time scales can be used for the S(T) assimilation, leading to better use of scarce salinity observations. Results of applying the salinity assimilation algorithm to a single analysis time within the ECMWF seasonal forecasting ocean model are also shown. The separate salinity increments coming from temperature and salinity data are identified, and the independence of these increments is demonstrated. Results of an ocean reanalysis with this method will appear in a future paper.
机译:将盐分吸收到海洋和气候的一般环流模型中是一个非常重要的问题。 Argo数据现在提供比以往更多的盐度观测值。此外,对海洋再分析中盐度随时间的变化进行良好的分析可以为理解气候变化提供重要的结果。从历史海洋数据库中可以看出,在地球的大部分区域(主要是中纬度和低纬度),等温线S(T)上的盐度变化通常小于在特定深度S(z)上测得的变化。根据百慕大时间序列的功率谱,还显示出S(T)的主要时间变化比S(z)的变化发生得更慢。从海洋模型可以看出,S(T)的水平空间协方差通常具有比S(z)更大的尺度。这些观察结果提出了一种基于分析S(T)的同化方法。然后介绍了一种在等温线上吸收盐度数据的算法,并说明了该算法如何产生与温度曲线吸收过程中产生的盐度正交的盐度增量。有人认为,较大的时空尺度可用于S(T)同化,从而更好地利用稀缺盐度观测值。还显示了将盐分同化算法应用于ECMWF季节预报海洋模型中的单个分析时间的结果。确定了来自温度和盐度数据的单独的盐度增量,并证明了这些增量的独立性。用这种方法进行海洋再分析的结果将在以后的论文中发表。

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