Physics-Informed Extreme Learning Machine (PIELM): Opportunities and Challenges
By: He Yang , Fei Ren , Hai-Sui Yu and more
Potential Business Impact:
Helps computers solve hard science problems faster.
We are very delighted to see the fast development of physics-informed extreme learning machine (PIELM) in recent years for higher computation efficiency and accuracy in physics-informed machine learning. As a summary or review on PIELM is currently not available, we would like to take this opportunity to show our perspective and experience for this promising research direction. We can see many efforts are made to solve PDEs with sharp gradients, nonlinearities, high-frequency behavior, hard constraints, uncertainty, multiphysics coupling. Despite the success, many urgent challenges remain to be tackled, which also provides us opportunities to develop more robust, interpretable, and generalizable PIELM frameworks with applications in science and engineering.
Similar Papers
Physics-Informed Extreme Learning Machine (PIELM) for Tunnelling-Induced Soil-Pile Interactions
Machine Learning (CS)
Predicts how tunnels affect building foundations.
Towards Fast Option Pricing PDE Solvers Powered by PIELM
Computational Engineering, Finance, and Science
Makes financial math faster for computers.
Curriculum Learning-Driven PIELMs for Fluid Flow Simulations
Machine Learning (CS)
Helps computers solve hard water flow problems.