Hierarchical Implicit Neural Emulators
Hierarchical Implicit Neural Emulators
Neural PDE solvers offer a powerful tool for modeling complex dynamical systems, but often struggle with error accumulation over long time horizons and maintaining stability and physical consistency. We introduce a multiscale implicit neural emulator that enhances long-term prediction accuracy by conditioning on a hierarchy of lower-dimensional future state representations. Drawing inspiration from the stability properties of numerical implicit time-stepping methods, our approach leverages predictions several steps ahead in time at increasing compression rates for next-timestep refinements. By actively adjusting the temporal downsampling ratios, our design enables the model to capture dynamics across multiple granularities and enforce long-range temporal coherence. Experiments on turbulent fluid dynamics show that our method achieves high short-term accuracy and produces long-term stable forecasts, significantly outperforming autoregressive baselines while adding minimal computational overhead.
Peter Y. Lu、Pedram Hassanzadeh、Michael Maire、Rebecca Willett、Ruoxi Jiang、Xiao Zhang、Karan Jakhar
计算技术、计算机技术
Peter Y. Lu,Pedram Hassanzadeh,Michael Maire,Rebecca Willett,Ruoxi Jiang,Xiao Zhang,Karan Jakhar.Hierarchical Implicit Neural Emulators[EB/OL].(2025-06-04)[2025-07-02].https://arxiv.org/abs/2506.04528.点此复制
评论