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New blending algorithm to synergize ocean variables: The case of SMOS sea surface salinity maps

机译:协同海洋变量的新混合算法:以SMOS海面盐度图为例

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Using the information of an ocean variable of a given kind to improve another variable of a different kind may be a challenging task, especially when they undergo different physical processes. Statisticalmethods and assimilation in numericalmodels had been so far themainways to performthis type of blending, but these are relatively complicated methods that usually introduce other sources of error and uncertainty. In this paper, the existence of a multifractal hierarchy pervading the structure of all ocean scalars is exploited to introduce a new blending method. This method is not parametric and requires no knowledge about the physics governing the evolution of the scalars, provided that both scalars have the samemultifractal structure.We have applied this methodology to SMOS SSSmaps, using OI SST maps as template variables, observing not only a qualitative but also a significant quantitative improvement.
机译:使用给定种类的海洋变量的信息来改进不同种类的另一个变量可能是一项艰巨的任务,尤其是当它们经历不同的物理过程时。到目前为止,数值模型中的统计方法和同化方法一直是执行这种混合的主要方法,但是这些方法相对复杂,通常会引入其他误差和不确定性来源。本文利用存在于所有海洋标量结构中的多重分形层次结构来引入一种新的混合方法。如果两个标量具有相同的多重分形结构,则此方法不是参数化的,不需要任何有关控制标量演化的物理学知识。我们已将此方法应用于SMOS SSSmap,使用OI SST映射作为模板变量,不仅观察了定性而且在数量上也有了很大的提高。

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