日本地球惑星科学連合2025年大会

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[E] 口頭発表

セッション記号 A (大気水圏科学) » A-AS 大気科学・気象学・大気環境

[A-AS05] 高性能計算が拓く気象・気候・環境科学

2025年5月28日(水) 15:30 〜 17:00 展示場特設会場 (5) (幕張メッセ国際展示場 7・8ホール)

コンビーナ:八代 尚(国立研究開発法人国立環境研究所)、中野 満寿男(海洋研究開発機構)、宮川 知己(東京大学大気海洋研究所)、川畑 拓矢(気象研究所)、座長:八代 尚(国立研究開発法人国立環境研究所)

16:00 〜 16:15

[AAS05-09] Tropical cyclone seasonal hindcast by a Neural-Physics hybrid AGCM

*中野 満寿男1,2山田 洋平1榎本 剛3,1山崎 哲1 (1.海洋研究開発機構、2.横浜国立大学台風科学技術研究センター、3.京都大学防災研究所)

キーワード:季節予報、Neural-Physicsハイブリッドモデル、台風

Accurate seasonal prediction of tropical cyclones (TCs) is essential for planning to mitigate their impact. The use of high-resolution coupled models is one of the possible ways to improve TC seasonal prediction accuracy. However, such models are computationally expensive. From a predictability perspective, understanding the sources of forecast errors can lead to further improvements in prediction skill. However, due to the presence of model biases, it is challenging to diagnose whether prediction failures stem from the model biases or from the chaotic nature of the atmosphere. The emergence of AI-based global climate models trained on historical atmospheric reanalysis data may help with such diagnoses because they show lower bias than physics-based GCMs. Here, we performed a 10-member ensemble hindcast experiment for 14 boreal TC seasons (JJASO of 2010-2023) using NeuralGCM. The AI-based model well reproduced the 14-season mean TC genesis, track density, and the seasonal march of TC frequency. Furthermore, the AI-based model produced skillful seasonal TC forecasts even for the western North Pacific, where it has long been believed that skillful TC seasonal forecasting is difficult. This result suggests further improvement of traditional physics-based GCMs will lead to more skillful seasonal forecasting of TCs.