A Data-Driven Regional Model for Skillful Medium-Range Typhoon Prediction
编号:937 稿件编号:292 访问权限:仅限参会人 更新:2026-04-09 10:45:35 浏览:96次 特邀报告

报告开始:2026年04月26日 15:05 (Asia/Shanghai)

报告时间:15min

所在会议:[S1-26] 专题1.26 台风观测、机理与预报 » [F6] 专题1.26 台风观测、机理与预报

暂无文件

摘要
Accurate prediction of tropical cyclones remains a major challenge for both numerical weather prediction and emerging artificial intelligence weather prediction (AIWP) systems. While recent global AI models have demonstrated strong skill in large-scale circulation prediction, they often struggle to represent the mesoscale structures critical for tropical cyclone intensity and precipitation. Here we develop the Hybrid Intelligent Typhoon System (HITS), a regional AI forecasting framework for medium-range typhoon prediction over the Asia–Pacific region, trained on a newly constructed 9-km high-resolution typhoon reanalysis dataset. The model combines regional autoregressive prediction with large-scale dynamical constraints from the state-of-the-art ECMWF Artificial Intelligence Forecasting System (AIFS), allowing it to remain dynamically consistent with the evolving large-scale circulation while resolving mesoscale structures. HITS is further extended with a structure-aware perceptual training strategy (HITS-LPIPS) that improves the representation of convective and typhoon rainband structures. Experiments show that the hybrid framework substantially improves precipitation structure and typhoon intensity forecasts compared with both purely autoregressive regional AI models and standalone AI downscaling approaches. In particular, HITS-LPIPS reduces intensity errors by up to 47.8% relative to AIFS at a 72-hour lead time and produces a near-unbiased wind–pressure relationship for simulated typhoons. These results demonstrate that dynamically constrained regional AI systems provide a promising pathway for improving medium-range typhoon prediction.
 
关键字
AI,typhoon forecast
报告人
牛泽毅
中国气象局上海台风研究所

稿件作者
牛泽毅 中国气象局上海台风研究所
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