学 术 报 告
报告题目: Int-Deep: A Deep Learning Initialized Iterative Method for Nonlinear Problems
报告人: 黄建国 教授 上海交通大学数学系
报告地点: 理学院五楼数学研究中心多媒体报告厅
报告时间:2020/11/01 10:45-11:30
44118太阳成城集团
2020.10.31
报告摘要: In this talk, we are concerned with a deep learning initialized iterative method (Int-Deep) for low-dimensional nonlinear partial differential equations (PDEs). The corresponding framework consists of two phases. In the first phase, an expectation minimization problem formulated from a given nonlinear PDE is approximately resolved with mesh-free deep neural networks to parametrize the solution space. In the second phase, a solution ansatz of the finite element method to solve the given PDE is obtained from the approximate solution in the first phase, and the ansatz can serve as a good initial guess such that Newton's method for solving the nonlinear PDE is able to converge to the ground truth solution with high-accuracy quickly. Systematic theoretical analysis is provided to justify the Int-Deep framework for several classes of problems. Numerical results show that the Int-Deep outperforms existing purely deep learning-based methods or traditional iterative methods (e.g., Newton's method and the Picard iteration method).
This is a joint work with Haoqin Wang (SJTU) and Yaizhao Yang (Purdue University).