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

Longhao Wang, Xuanze Zhang, L. Ruby Leung, Francis H. S. Chiew, Amir AghaKouchak, Kairan Ying, Yongqiang Zhang
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Abstract

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.
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中科院-苍龙:用于亚季节至季节性全球海面温度预测的熟练三维变压器模型
准确预测全球亚季节到季节(S2S)时间尺度的海面温度对干旱和洪水预报以及提高人类社会的防灾能力至关重要。政府部门或学术研究通常使用基于物理的数值模式来预测 S2S 海面温度和相应的气候指数,如厄尔尼诺/南方涛动。然而,这些模式受到计算效率低下、海洋-大气初始条件保留有限以及显著的不确定性和偏差等因素的影响。在此,我们引入了一种新颖的三维深度学习神经网络来模拟非线性和复杂的大气-海洋耦合天气系统。该模型结合了气候和时间特征,并采用自我注意机制来增强对全球 S2S 海面温度模式的预测。与基于物理的模式相比,该模式显示出显著的计算效率和预测能力,在七个对陆地上空 S2S 变率有主要影响的海区,其 1 至 3 个月的海面温度预测技能提高了 13.7% 至 77.1%。这一成果凸显了深度学习在大幅提高陆地 S2S 尺度预报技能方面的巨大潜力。
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