日本地球惑星科学連合2021年大会

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[J] 口頭発表

セッション記号 A (大気水圏科学) » A-CG 大気海洋・環境科学複合領域・一般

[A-CG43] 地球環境科学と人工知能/機械学習

2021年6月3日(木) 13:45 〜 15:15 Ch.07 (Zoom会場07)

コンビーナ:冨田 智彦(熊本大学大学院 先端科学研究部)、細田 滋毅(国立研究開発法人海洋研究開発機構)、福井 健一(大阪大学)、小野 智司(鹿児島大学)、座長:冨田 智彦(熊本大学大学院 先端科学研究部)、細田 滋毅(国立研究開発法人海洋研究開発機構)

14:30 〜 14:45

[ACG43-04] Adversarial Multi-task Learning Algorithm for Solving Partial Differential Equations

*Pongpisit Thanasutives1、Masayuki Numao1、Ken-ichi Fukui1 (1.Osaka University)


キーワード:Burgers' equation, Multi-task learning, Adversarial training, Physics-informed neural networks

Recently, researchers have utilized neural networks to accurately solve partial differential equations (PDEs), enabling the mesh-free method for scientific computation. Unfortunately, the network performance drops when encountering a high nonlinearity domain. To improve the generalizability, we introduce the novel approach of employing multi-task learning techniques, the uncertainty-weighting loss, and the gradients surgery, in the context of learning PDE solutions. The multi-task scheme exploits the benefits of learning shared representations, controlled by cross-stitch modules, between multiple related PDEs, which are obtainable by varying the PDE parameterization coefficients, to generalize better on the original PDE. Letting the network pay closer attention to the high nonlinearity domain regions that are more challenging to learn, we also propose adversarial training for generating supplementary high-loss samples, similarly distributed to the training distribution. In the experiment, our proposed methods are found to be effective and reduce the error on the unseen data points as compared to the previous approaches in various PDE examples, including high-dimensional stochastic PDEs.