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      Graph-Based Deep Learning for Sea Surface Temperature Forecasts

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          Abstract

          Sea surface temperature (SST) forecasts help with managing the marine ecosystem and the aquaculture impacted by anthropogenic climate change. Numerical dynamical models are resource intensive for SST forecasts; machine learning (ML) models could reduce high computational requirements and have been in the focus of the research community recently. ML models normally require a large amount of data for training. Environmental data are collected on regularly-spaced grids, so early work mainly used grid-based deep learning (DL) for prediction. However, both grid data and the corresponding DL approaches have inherent problems. As geometric DL has emerged, graphs as a more generalized data structure and graph neural networks (GNNs) have been introduced to the spatiotemporal domains. In this work, we preliminarily explored graph re-sampling and GNNs for global SST forecasts, and GNNs show better one month ahead SST prediction than the persistence model in most oceans in terms of root mean square errors.

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          Author and article information

          Journal
          03 April 2023
          Article
          2305.09468
          1f9027bc-c701-4e7e-92df-27464151b5f1

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          physics.ao-ph cs.LG cs.NE

          Neural & Evolutionary computing,Atmospheric, Oceanic and Environmental physics,Artificial intelligence

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