Seminar| Institute of Mathematical Sciences
Time: Wednesday, September 6th, 2023 , 10:30-11:30
Location:IMS, RS408
Speaker: Ling Guo, Shanghai Normal University
Abstract: In this talk, we will present some recent developments on using Physics-informed neural networks (PINNs) to quantify uncertainty propagation in a unified framework forward, inverse and mixed stochastic problems based on scattered measurements. We will also present generative models for data-driven uncertainty quantification, including physics-informed generative adversarial networks and Normalizing field flows.