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Machine Learning Technique Using the Signature Method for Automated Quality Control of Argo Profiles

机译:机器学习技术,采用ARGO配置文件自动质量控制的签名方法

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A profile from the Argo ocean observation array is a sequence of three‐dimensional vectors composed of pressure, salinity, and temperature, appearing as a continuous curve in three‐dimensional space. The shape of this curve is faithfully represented by a path signature, which is a collection of all the iterated integrals. Moreover, the product of two terms of the signature of a path can be expressed as the sum of higher‐order terms. As a result of this algebraic property, a nonlinear function of the profile shape can always be represented by a weighted linear combination of the iterated integrals, which enables machine learning of a complicated function of the profile shape. In this study, we performed supervised learning for existing Argo data with quality control flags by using the signature method and demonstrated the estimation performance by cross validation. Unlike rule‐based approaches, which require several complicated and possibly subjective rules, this method is simple and objective in nature because it relies only on past knowledge regarding the shape of profiles. This technique is critical for realizing automatic quality control for Argo profile data.
机译:来自Argo海洋观测阵列的轮廓是由压力,盐度和温度组成的三维向量序列,其出现在三维空间中的连续曲线。该曲线的形状由路径签名忠实地表示,这是所有迭代积分的集合。此外,路径签名的两个术语的乘积可以表示为高阶项的总和。由于该代数性质,轮廓形状的非线性函数始终可以通过迭代积分的加权线性组合来表示,这使得能够学习轮廓形状的复杂函数。在这项研究中,我们通过使用签名方法对现有ARGO数据进行了监督学习,并通过签名方法进行了质量控制标志,并通过交叉验证展示了估计性能。与基于规则的方法不同,需要几种复杂和可能的主观规则,这种方法本质上很简单且客观,因为它仅依赖于过去关于配置文件的形状的知识。该技术对于实现ARGO配置文件数据的自动质量控制至关重要。

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