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首页> 外文期刊>Journal of marine systems: journal of the European Association of Marine Sciences and Techniques >Inverse modeling of salinity–temperature–depth relationships: Application to the upper eastern North Atlantic subtropical gyre
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Inverse modeling of salinity–temperature–depth relationships: Application to the upper eastern North Atlantic subtropical gyre

机译:盐度-温度-深度关系的反演:在北大西洋上亚热带副热带中的应用

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摘要

We test the skill of a polynomial fit to reproduce the upper ocean (down to 750 m) salinity in the eastern North Atlantic (from the Canary Islands to the Iberian Peninsula, approximately 12°×12°) as a function of temperature and depth. A historical database, constructed by merging several regional datasets, is used. An ANOVA test is performed to determine the optimum degree of temperature and depth in the polynomial fit. The polynomial coefficients are estimated by solving an inverse model where we control the size of both coefficients and residuals. We divide the basin in 21 zones (2° × 2°) and four regions (each comprising several zones), and run the inversion for the whole basin, as well as for each individual region and zone. This allows us to assess the sensitivity of the model to changes in the spatial domain, and to investigate the spatial variability of the polynomial coefficients. Regions are defined by applying a cluster analysis to objectively group those zones with similar oceanographic properties. The seasonality of the coefficients is addressed with data from the whole basin and individual regions. We find that, for either the whole basin or individual regions, seasonal coefficients predict salinity more accurately than annual ones, but annual coefficients per zone yet provide the best results. The depth-averaged error estimating salinity is less than 0.086 psu.
机译:我们测试多项式拟合的技巧,以再现北大西洋东部(从加那利群岛到伊比利亚半岛,大约12°×12°)的上层海洋(低至750 m)盐度随温度和深度的变化。使用通过合并几个区域数据集构建的历史数据库。进行ANOVA测试以确定多项式拟合中的最佳温度和深度。通过求解逆模型来估计多项式系数,在逆模型中我们控制系数和残差的大小。我们将盆地划分为21个区域(2°×2°)和四个区域(每个区域包括几个区域),然后对整个盆地以及每个区域和区域进行反演。这使我们能够评估模型对空间域变化的敏感性,并研究多项式系数的空间变异性。通过应用聚类分析将具有相似海洋学特征的那些区域客观地分组来定义区域。利用整个流域和各个区域的数据来处理系数的季节性变化。我们发现,无论是整个盆地还是单个区域,季节系数预测的盐度都比年度系数更准确,但每个区域的年度系数仍能提供最佳结果。估计盐度的深度平均误差小于0.086 psu。

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