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Forecasting and Interpolation for Learning Physical Simulation over Meshes
August 30 @ 11:30 am - 12:30 pm
Speaker: Xiao Luo, Ph.D. IDRE Fellow Department of Computer Science University of California Los Angeles Time: 11:30 AM – 12:30 PM (PST)
RSVP link: https://ucla.zoom.us/meeting/register/tJUvcuCqpjMrG9fpjk2moWosRyTMtMieiv05 |
Abstract: This talk discusses the problem of learning-based physical simulation, a crucial task with applications in fluid mechanics and aerodynamics. Recent works typically utilize graph neural networks (GNNs) to produce next-time states on irregular meshes by modeling interacting dynamics and then adopting iterative rollouts for the whole trajectories. Our work proposes a simple yet effective approach named FAIR for long-term mesh-based simulations. Our model employs a continuous graph ODE model that incorporates past states into the evolution of interacting node representations, capable of learning coarse long-term trajectories under a multi-task learning framework. Then, we leverage a channel aggregation strategy to summarize the trajectories for refined short-term predictions, which can be illustrated using an interpolation process. Our method can generate accurate long-term trajectories through pyramid-like alternative propagation between the foresight step and refinement step. Finally, we show the experiments on several benchmark datasets to validate the effectiveness of our method.
About the speaker: Dr. Xiao Luo is a postdoctoral researcher at UCLA’s Department of Computer Science. Previously, he received a B.S. degree in Mathematics from Nanjing University, Nanjing, China, in 2017 and a Ph.D. in the School of Mathematical Sciences from Peking University, Beijing, China in 2022. His research interests include machine learning on graphs, dynamical systems, statistical models, and AI for Science.