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【115/3/23】11:00-12:00 劉雪峰 教授(東京女子大學現代教養學部數理科學科)

發佈日期 : 2026-03-23

 

數學跨領域研究中心專題演講

Time 2026-3-23 11:00-12:00
Venue 數學館1樓31106教室
Speaker 劉雪峰 教授(東京女子大學現代教養學部數理科學科)
Title Hypercircle-Based Optimization for Physics-Informed Neural Networks in Boundary Value Problems
Abstract Physics-Informed Neural Networks (PINNs) have recently attracted significant attention as a mesh-free approach for solving partial differential equations. However, a common drawback of PINNs is the difficulty in obtaining high-precision solutions and in providing rigorous error estimation.
In this talk, we introduce a new framework that combines the PINN methodology with the hypercircle method for solving boundary value problems. The proposed approach formulates an optimization problem based on a hypercircle-type residual norm defined on two approximation spaces: one in $H^1(\Omega)$ and the other in $H(\mathrm{div})$. A key feature of this formulation is that it enables the direct evaluation of error bounds for the obtained approximate solutions. Numerical experiments demonstrate the effectiveness of the proposed method for several model problems, including cases with limited solution regularity. At the end of the talk, we will briefly introduce the CES-Alpha system, a cloud-based platform designed for scientific computing and computational education.

 

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