Physics-informed Neural Networks: A Neural Network-Based PDE Solver
bk21
129동 101호
0
4270
2025.04.10 10:47
| 구분 | Rookies Pitch |
|---|---|
| 일정 | 2025-04-17(목) 16:30~17:30 |
| 세미나실 | 129동 101호 |
| 강연자 | 이명수 (서울대학교) |
| 담당교수 | 서인석 |
| 기타 |
Physics-informed Neural Networks (PINNs) are deep learning-based methods for predicting solutions of partial differential equations (PDEs). Unlike conventional machine learning approaches, PINNs do not rely solely on data; instead, they directly incorporate physical laws, expressed as PDEs, into the loss functions used for training neural networks. This feature allows PINNs to offer a unified framework suitable for solving a wide range of PDE problems, including both forward and inverse problems, making them broadly applicable in science and engineering. In this talk, I will briefly introduce the basic concepts of PINNs, followed by several illustrative applications of PINNs to simple PDE problems.
강연시간 : 16:40-17:10