2023
DOI: 10.1175/waf-d-22-0094.1
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A Multivariable Convolutional Neural Network for Forecasting Synoptic-Scale Sea Surface Temperature Anomalies in the South China Sea

Abstract: The sea surface temperature anomaly (SSTA) plays a key role in climate change and extreme weather processes. Usually, SSTA forecast methods consist of numerical and conventional statistical models, the former can be seriously influenced by the uncertainty of physical parameterization schemes, the nonlinearity of ocean dynamic processes, and the nonrobustness of numerical discretization algorithms. Recently, deep learning has been explored to address forecast issues in the field of oceanography. However, existi… Show more

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Cited by 5 publications
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“…This model exhibited strong performance in both normal and extreme weather conditions. Recently, Miao et al [39] also reached similar conclusions. Based on a multivariate CNN model, they used SSTA, wind speeds, and surface current velocity as input variables to predict SSTA, achieving more accurate forecasts.…”
Section: Introductionsupporting
confidence: 52%
“…This model exhibited strong performance in both normal and extreme weather conditions. Recently, Miao et al [39] also reached similar conclusions. Based on a multivariate CNN model, they used SSTA, wind speeds, and surface current velocity as input variables to predict SSTA, achieving more accurate forecasts.…”
Section: Introductionsupporting
confidence: 52%