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      Spatio-temporal Local Interpolation of Global Ocean Heat Transport using Argo Floats: A Debiased Latent Gaussian Process Approach

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          Abstract

          The world ocean plays a key role in redistributing heat in the climate system and hence in regulating Earth's climate. Yet statistical analysis of ocean heat transport suffers from partially incomplete large-scale data intertwined with complex spatio-temporal dynamics, as well as from potential model misspecification. We present a comprehensive spatio-temporal statistical framework tailored to interpolating the global ocean heat transport using in-situ Argo profiling float measurements. We formalize the statistical challenges using latent local Gaussian process regression accompanied by a two-stage fitting procedure. We introduce an approximate Expectation-Maximization algorithm to jointly estimate both the mean field and the covariance parameters, and refine the potentially under-specified mean field model with a debiasing procedure. This approach provides data-driven global ocean heat transport fields that vary in both space and time and can provide insights into crucial dynamical phenomena, such as El Ni{\~n}o \& La Ni{\~n}a, as well as the global climatological mean heat transport field, which by itself is of scientific interest. The proposed framework and the Argo-based estimates are thoroughly validated with state-of-the-art multimission satellite products and shown to yield realistic subsurface ocean heat transport estimates.

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          Author and article information

          Journal
          20 May 2021
          Article
          2105.09707
          dc5a7cb0-095d-43f8-bcf6-b3d9d4999d20

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          27 pages, 10 figures with supplementary material 6 pages, 6 figures
          stat.AP physics.ao-ph

          Applications,Atmospheric, Oceanic and Environmental physics
          Applications, Atmospheric, Oceanic and Environmental physics

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