Accelerate Coastal Ocean Circulation Model with AI Surrogate
Zelin Xu, Jie Ren, Yupu Zhang, Jose Maria Gonzalez Ondina, Maitane, Olabarrieta, Tingsong Xiao, Wenchong He, Zibo Liu, Shigang Chen, Kaleb Smith,, Zhe Jiang

TL;DR
This paper presents a GPU-accelerated AI surrogate model using a 4D Swin Transformer to simulate coastal ocean circulation, achieving over 450 times faster forecasts with high accuracy and physical consistency.
Contribution
It introduces a novel AI surrogate model that significantly accelerates coastal ocean simulations while maintaining accuracy and incorporating physics-based constraints.
Findings
Over 450× speedup in 12-day forecasts
Maintains high-quality simulation results
Fully GPU-accelerated workflow on NVIDIA DGX-2 A100
Abstract
Nearly 900 million people live in low-lying coastal zones around the world and bear the brunt of impacts from more frequent and severe hurricanes and storm surges. Oceanographers simulate ocean current circulation along the coasts to develop early warning systems that save lives and prevent loss and damage to property from coastal hazards. Traditionally, such simulations are conducted using coastal ocean circulation models such as the Regional Ocean Modeling System (ROMS), which usually runs on an HPC cluster with multiple CPU cores. However, the process is time-consuming and energy expensive. While coarse-grained ROMS simulations offer faster alternatives, they sacrifice detail and accuracy, particularly in complex coastal environments. Recent advances in deep learning and GPU architecture have enabled the development of faster AI (neural network) surrogates. This paper introduces an…
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Taxonomy
TopicsOceanographic and Atmospheric Processes
MethodsDense Connections · Layer Normalization · Residual Connection · Stochastic Depth · Position-Wise Feed-Forward Layer · Attention Is All You Need · Adam · Linear Layer · Softmax · Multi-Head Attention
