Identificador persistente para citar o vincular este elemento: https://accedacris.ulpgc.es/jspui/handle/10553/147257
Título: Deep Learning Weather Models for Subregional Ocean Forecasting: A Case Study on the Canary Current Upwelling System
Autores/as: Cuervo-Londoño, Giovanny A.
Sánchez, Javier 
Rodríguez-Santana, Ángel 
Clasificación UNESCO: 251007 Oceanografía física
Palabras clave: Sea surface temperature forecasting
Graph neural networks
Canary Current Upwelling System
Data-driven ocean prediction
Operational oceanography
Fecha de publicación: 2025
Publicación seriada: ArXiv.org 
Resumen: Oceanographic forecasting impacts various sectors of society by supporting environmental conservation and economic activities. Based on global circulation models, traditional forecasting methods are computationally expensive and slow, limiting their ability to provide rapid forecasts. Recent advances in deep learning offer faster and more accurate predictions, although these data-driven models are often trained with global data from numerical simulations, which may not reflect reality. The emergence of such models presents great potential for improving ocean prediction at a subregional domain. However, their ability to predict fine-scale ocean processes, like mesoscale structures, remains largely unknown. This work aims to adapt a graph neural network initially developed for global weather forecasting to improve subregional ocean prediction, specifically focusing on the Canary Current upwelling system. The model is trained with satellite data and compared to state-of-the-art physical ocean models to assess its performance in capturing ocean dynamics. Our results show that the deep learning model surpasses traditional methods in precision despite some challenges in upwelling areas. It demonstrated superior performance in reducing RMSE errors compared to ConvLSTM and the GLORYS reanalysis, particularly in regions with complex oceanic dynamics such as Cape Ghir, Cape Bojador, and Cape Blanc. The model achieved improvements of up to 26.5% relative to ConvLSTM and error reductions of up to 76% in 5-day forecasts compared to the GLORYS reanalysis at these critical locations, highlighting its enhanced capability to capture spatial variability and improve predictive accuracy in complex areas. These findings suggest the viability of adapting meteorological data-driven models for improving subregional medium-term ocean forecasting.
URI: https://accedacris.ulpgc.es/jspui/handle/10553/147257
ISSN: 2331-8422
DOI: 10.48550/arXiv.2505.24429
Fuente: ArXiv.org. [2331-8422], v.2, 6 jun,2025
Colección:Artículos
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