CAS-Canglong: A skillful 3D Transformer model for sub-seasonal to seasonal global sea surface temperature prediction

Bibliographic Details
Title: CAS-Canglong: A skillful 3D Transformer model for sub-seasonal to seasonal global sea surface temperature prediction
Authors: Wang, Longhao, Zhang, Xuanze, Leung, L. Ruby, Chiew, Francis H. S., AghaKouchak, Amir, Ying, Kairan, Zhang, Yongqiang
Publication Year: 2024
Collection: Physics (Other)
Subject Terms: Physics - Atmospheric and Oceanic Physics
More Details: Accurate prediction of global sea surface temperature at sub-seasonal to seasonal (S2S) timescale is critical for drought and flood forecasting, as well as for improving disaster preparedness in human society. Government departments or academic studies normally use physics-based numerical models to predict S2S sea surface temperature and corresponding climate indices, such as El Ni\~no-Southern Oscillation. However, these models are hampered by computational inefficiencies, limited retention of ocean-atmosphere initial conditions, and significant uncertainty and biases. Here, we introduce a novel three-dimensional deep learning neural network to model the nonlinear and complex coupled atmosphere-ocean weather systems. This model incorporates climatic and temporal features and employs a self-attention mechanism to enhance the prediction of global S2S sea surface temperature pattern. Compared to the physics-based models, it shows significant computational efficiency and predictive capability, improving one to three months sea surface temperature predictive skill by 13.7% to 77.1% in seven ocean regions with dominant influence on S2S variability over land. This achievement underscores the significant potential of deep learning for largely improving forecasting skills at the S2S scale over land.
Document Type: Working Paper
Access URL: http://arxiv.org/abs/2409.05369
Accession Number: edsarx.2409.05369
Database: arXiv
More Details
Description not available.