KunPeng: A Global Ocean Environmental Model
By: Yi Zhao , Jiaqi Li , Haitao Xia and more
Potential Business Impact:
Predicts ocean changes with amazing accuracy.
Inspired by the similarity of the atmosphere-ocean physical coupling mechanism, this study innovatively migrates meteorological large-model techniques to the ocean domain, constructing the KunPeng global ocean environmental prediction model. Aimed at the discontinuous characteristics of marine space, we propose a terrain-adaptive mask constraint mechanism to mitigate effectively training divergence caused by abrupt gradients at land-sea boundaries. To fully integrate far-, medium-, and close-range marine features, a longitude-cyclic deformable convolution network (LC-DCN) is employed to enhance the dynamic receptive field, achieving refined modeling of multi-scale oceanic characteristics. A Deformable Convolution-enhanced Multi-Step Prediction module (DC-MTP) is employed to strengthen temporal dependency feature extraction capabilities. Experimental results demonstrate that this model achieves an average ACC of 0.80 in 15-day global predictions at 0.25$^\circ$ resolution, outperforming comparative models by 0.01-0.08. The average mean squared error (MSE) is 0.41 (representing a 5%-31% reduction) and the average mean absolute error (MAE) is 0.44 (0.6%-21% reduction) compared to other models. Significant improvements are particularly observed in sea surface parameter prediction, deep-sea region characterization, and current velocity field forecasting. Through a horizontal comparison of the applicability of operators at different scales in the marine domain, this study reveals that local operators significantly outperform global operators under slow-varying oceanic processes, demonstrating the effectiveness of dynamic feature pyramid representations in predicting marine physical parameters.
Similar Papers
A machine learning model for skillful climate system prediction
Machine Learning (CS)
AI predicts weather better for 60 days.
Data-driven global ocean model resolving ocean-atmosphere coupling dynamics
Atmospheric and Oceanic Physics
Predicts ocean weather changes for better climate forecasts.
CTP: A hybrid CNN-Transformer-PINN model for ocean front forecasting
Machine Learning (CS)
Predicts ocean currents more accurately and reliably.