Chattopadhyay Ashesh, Gray Michael, Wu Tianning, Lowe Anna B, He Ruoying
Applied Mathematics, University of California, Santa Cruz, Santa Cruz, CA, 95060, USA.
Marine, Earth & Atmospheric Sciences, North Carolina State University, Raleigh, NC, 27695, USA.
Sci Rep. 2024 Sep 11;14(1):21181. doi: 10.1038/s41598-024-72145-0.
While data-driven approaches demonstrate great potential in atmospheric modeling and weather forecasting, ocean modeling poses distinct challenges due to complex bathymetry, land, vertical structure, and flow non-linearity. This study introduces OceanNet, a principled neural operator-based digital twin for regional sea-suface height emulation. OceanNet uses a Fourier neural operator and predictor-evaluate-corrector integration scheme to mitigate autoregressive error growth and enhance stability over extended time scales. A spectral regularizer counteracts spectral bias at smaller scales. OceanNet is applied to the northwest Atlantic Ocean western boundary current (the Gulf Stream), focusing on the task of seasonal prediction for Loop Current eddies and the Gulf Stream meander. Trained using historical sea surface height (SSH) data, OceanNet demonstrates competitive forecast skill compared to a state-of-the-art dynamical ocean model forecast, reducing computation by 500,000 times. These accomplishments demonstrate initial steps for physics-inspired deep neural operators as cost-effective alternatives to high-resolution numerical ocean models.
虽然数据驱动方法在大气建模和天气预报中显示出巨大潜力,但由于复杂的海底地形、陆地、垂直结构和流动非线性,海洋建模面临着独特的挑战。本研究引入了OceanNet,这是一种基于有原则的神经算子的区域海面高度仿真数字孪生模型。OceanNet使用傅里叶神经算子和预测-评估-校正积分方案来减轻自回归误差增长,并在较长时间尺度上增强稳定性。一种谱正则化器可抵消较小尺度上的谱偏差。OceanNet应用于西北大西洋西部边界流(墨西哥湾流),重点关注对湾流环涡和墨西哥湾流蜿蜒的季节预测任务。使用历史海面高度(SSH)数据进行训练,与最先进的动态海洋模型预测相比,OceanNet展示出具有竞争力的预测技能,计算量减少了50万倍。这些成果展示了受物理启发的深度神经算子作为高分辨率数值海洋模型经济高效替代方案的初步进展。