Machine Learning to Enhance Numerical PDE Simulations
Offered By: Instituto de Matemática Pura e Aplicada via YouTube
Course Description
Overview
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.
Syllabus
Ter 23 jan 2024, - Auditório 01
Taught by
Instituto de Matemática Pura e Aplicada
Related Courses
Foundation of Computational Fluid DynamicsIndian Institute of Technology Madras via Swayam Computational Fluid Dynamics For Incompressible Flows
Indian Institute of Technology Guwahati via Swayam Soil Structure Interaction
Indian Institute of Technology, Kharagpur via Swayam Dynamic Energy Modelling of Buildings: Thermal Simulation
Delft University of Technology via edX Introduction To CFD
Indian Institute of Technology, Kharagpur via Swayam