Explore a seminar on leveraging machine learning to enhance numerical PDE simulations for complex physics and engineering systems. Delve into three key areas: accelerating full-order numerical simulations, developing surrogate models, and improving physical representations. Discover innovative approaches, including a machine learning method for dynamically controlling relaxation parameters in nonlinear solvers, a Generative Network-Based ROM for efficient uncertainty quantification and data assimilation, and a technique to replace geochemical calculations in reactive transport modeling. Gain insights into making numerical PDE simulations more efficient and less resource-intensive, transforming traditional numerical modeling across various scientific and engineering applications.
Machine Learning to Enhance Numerical PDE Simulations