讲座主题:Physics-informed machine learning for computational fluid mechanics
讲座时间:2021年11月4日(周四) 09:00-10:20
线上会议ID:569 354 798(腾讯会议)
活动安排:
09:00-09:10 主持人介绍
09:10-09:50 讲座
09:50-10:20 Q&A
汇报人:王建勋 美国圣母大学助理教授
时 间:2021年11月4日 09:00-10:20
摘要:High-fidelity modeling and simulation of complex fluid systems based on partial differential equations (PDEs) and numerical discretization have been developed for decades and achieved great success. Nonetheless, efficiently solving these PDEs (e.g., Navier-Stokes equations) with high accuracy in many scenarios (e.g., turbulence, complex boundary conditions, large scale, many-query needs) are still challenging. On the other hand, recent advances in data science and machine learning, combined with the ever-increasing availability of high-fidelity simulation and measurement data, open up new opportunities for developing data-enabled computational modeling of fluid systems. Although the state-of-the-art machine/deep learning techniques hold great promise, there are still many challenges - e.g., they often need a large amount of data that might not be available, lack interpretability and explainability, often cannot guarantee convergence. On the other hand, there is often a richness of prior knowledge, including physical laws and phenomenological principles, which can be leveraged in this regard. Thus, there is an urgent need for fundamentally new and transformative machine learning techniques, closely grounded with physics, to address the aforementioned challenges in computational fluid mechanics problems. This talk will briefly discuss our recent developments of scientific machine learning techniques for fluid problems, including structure-preserved machine learning, physics-informed neural networks, geometric deep learning, and physics-informed reinforcement learning for flow control.
个人介绍:
Dr. Jian-Xun Wang is an assistant professor of Aerospace and Mechanical Engineering at the University of Notre Dame. Dr. Wang received a Ph.D. in Aerospace Engineering from Virginia Tech in 2017 and was a postdoctoral scholar at the University of California, Berkeley before joining Notre Dame in 2018. He is a recipient of 2021 NSF CAREER Award. His research focuses on data-augmented computational modeling, scientific machine learning, Bayesian data assimilation, and uncertainty quantification.
项目背景:
“高屋建瓴AI公开课”项目由中国人民大学高瓴人工智能学院发起,旨在扩大人工智能学科影响力、提升学科发展水准。公开课项目命名为“高屋建瓴”,寓意在高瓴人工智能学院的平台上,汇聚高端人才,发出人工智能研究方向高瞻远瞩的声音。
检测到您当前使用浏览器版本过于老旧,会导致无法正常浏览网站;请您使用电脑里的其他浏览器如:360、QQ、搜狗浏览器的速模式浏览,或者使用谷歌、火狐等浏览器。
下载Firefox