Improving Kuroshio forecasts with an eddy-resolving AI prediction system
编号:988 稿件编号:376 访问权限:仅限参会人 更新:2026-04-10 13:55:31 浏览:85次 口头报告

报告开始:2026年04月26日 17:05 (Asia/Shanghai)

报告时间:10min

所在会议:[S1-3] 专题1.3 人工智能在大气海洋中的应用 » [F12] 专题1.3 人工智能在大气海洋中的应用

暂无文件

摘要
The Kuroshio, a powerful western boundary current in the North Pacific, exhibits multi-scale variability that profoundly affects regional weather, climate, marine ecosystems, and fisheries, rendering its accurate prediction indispensable. However, this variability is driven by complex multi-scale physical processes, necessitating high-resolution numerical models that are computationally expensive and often constrained by limited timeliness. In recent years, the emergence of data-driven models has opened new avenues for ocean forecasting, and the global ocean intelligent prediction systems are now approaching or even surpassing traditional numerical models across various metrics. Despite these advances, their performance in the Kuroshio region remains limited. To address this challenge, this study develops an eddy-resolving (1/12°) Kuroshio Intelligent Prediction System (KIPS) based on the Swin Transformer architecture. Specifically designed to capture Kuroshio dynamics, KIPS uses an autoregressive strategy to generate daily forecasts of three-dimensional temperature, salinity, current, and sea surface height, with a lead time of up to 10 days. KIPS achieves higher accuracy compared to existing numerical and AI-based prediction systems, while significantly reducing computational costs. In operational forecasts, KIPS successfully captures several recent eddy shedding and merging events in the southern Kuroshio region of Japan, demonstrating agreement with near-real-time satellite observations. These results underscore the value of integrating prior physical knowledge into region-specific forecast systems to improve fine-scale ocean prediction.
关键字
Ocean forecasting,Kuroshio
报告人
钱俊凯
学生 河海大学

稿件作者
钱俊凯 河海大学
王强 河海大学海洋学院
发表评论
验证码 看不清楚,更换一张
全部评论
登录 注册缴费 提交稿件 酒店预订