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Unsupervised Clustering of Southern Ocean Argo Float Temperature Profiles

机译:南洋Argo浮法温度剖面无监督的聚类

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摘要

The Southern Ocean has complex spatial variability, characterized by sharp fronts, steeply tilted isopycnals, and deep seasonal mixed layers. Methods of defining Southern Ocean spatial structures traditionally rely on somewhat ad hoc combinations of physical, chemical, and dynamic properties. As a step toward an alternative approach for describing spatial variability in temperature, here we apply an unsupervised classification technique (i.e., Gaussian mixture modeling or GMM) to Southern Ocean Argo float temperature profiles. GMM, without using any latitude or longitude information, automatically identifies several spatially coherent circumpolar classes influenced by the Antarctic Circumpolar Current. In addition, GMM identifies classes that bear the imprint of mode/intermediate water formation and export, large-scale gyre circulation, and the Agulhas Current, among others. Because GMM is robust, standardized, and automated, it can potentially be used to identify structures (such as fronts) in both observational and model data sets, possibly making it a useful complement to existing classification techniques.
机译:南海有复杂的空间变异性,其特征在于尖锐的前沿,陡峭倾斜的等体,以及深季节性混合层。传统上依赖于物理,化学和动态性质的若干临时组合的南海空空间结构的方法。作为一种替代方法,用于描述温度下的空间变异性的替代方法,在这里,我们将无监督的分类技术(即高斯混合物建模或GMM)应用于Southern海洋Argo浮法温度曲线。 GMM在不使用任何纬度或经度信息的情况下,自动识别受南极环形电流影响的几个空间相干的Circumpolar类。此外,GMM识别载有模式/中间水形成和出口,大规模GYRE循环以及Agulhas Current等类的类别。由于GMM具有稳健,标准化和自动化,因此可能用于识别观察和模型数据集中的结构(例如前部),可能使其成为现有分类技术的有用补充。

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