Butterfly Effect of Global AI Weather Models in Unusual Tropical Cyclone Track Prediction
ID:824 View Protection:ATTENDEE Updated Time:2026-04-07 17:49:20 Hits:157 Invited speech

Start Time:2026-04-26 16:55(Asia/Shanghai)

Duration:15min

Session:S3-12 专题3.12 环境保护与气候变化应对的策略与调控 » F14专题3.12 环境保护与气候变化应对的策略与调控

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Abstract
In the past few years, the rapid breakthroughs of AI-driven weather prediction have opened up a new direction to solve the weather simulation problems, a fundamental tool for studying weather intervention. Yet, recent publications have raised doubts about the ability of global AI weather models to capture the butterfly effect in atmospheric systems, a limitation that implies these data-driven models may tend to underestimate uncertainties in ensemble simulations. This conclusion, however, remains a subject of controversy within the research community. A counterargument is that claiming the absence of butterfly effect in AI weather models may erroneously imply infinite predictability of atmospheric circulation in such models.

Studying the butterfly effect in AI weather models is not only critical for evaluating the ability of AI weather prediction techniques, but also provides a theoretical basis for simulating effects of weather intervention. In this presentation, I will share our latest findings about the existence of the butterfly effect in current global AI weather models. Specifically, our results show that tropical cyclone track forecasts generated by Pangu-Weather, one of the state-of-the-art global AI weather models, can be sensitive to initial perturbations under certain conditions. This presentation will particularly focus on a case study of Super Typhoon Khanun (2023), which is characterized by its unusual zigzagging track. Based on a series of probabilistic prediction experiments, I will demonstrate the impacts of initial perturbations on Pangu-Weather’s forecast results of Typhoon Khanun. Then, the differences in the butterfly effect between numerical weather prediction (NWP) models and data-driven AI weather models will be presented. Finally, I will discuss the implications of our findings for ensemble AI weather forecasting and potential interventions in tropical cyclones.
 
Keywords
butterfly effect,artificial intelligence,tropical cyclone,weather modification
Speaker
梁卓轩
副研究员 国防科技大学

Submission Author
梁卓轩 国防科技大学
张邦林 国防科技大学
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Important Date
  • Conference Date

    Apr 25

    2026

    to

    Apr 29

    2026

  • Apr 07 2026

    Draft paper submission deadline

  • Jun 17 2026

    Registration deadline

Sponsored By
未来大气科学论坛理事会
Organized By
河海大学海洋学院
南京大学南京赫尔辛基大气与地球系统科学学院
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