Seminar| Institute of Mathematical Sciences
Time: Friday, November 10th, 2023 , 16:30-17:30
Location:IMS, RS408
Speaker: Li Zeng, Fuzhou University
Abstract: In recent years, deep learning algorithms based on deep neural networks have been widely applied to solving high-dimensional partial differential equations, which include physics-informed neural networks (PINNs), Deep Ritz method, and so on. In this talk, we start from Fokker-Planck equations and propose flow-based adaptive sampling strategies to improve the efficiency and accuracy of PINNs for solving partial differential equations whose solutions are probability density functions.