PIANO: Physics Informed Autoregressive Network
PIANO: Physics Informed Autoregressive Network
Solving time-dependent partial differential equations (PDEs) is fundamental to modeling critical phenomena across science and engineering. Physics-Informed Neural Networks (PINNs) solve PDEs using deep learning. However, PINNs perform pointwise predictions that neglect the autoregressive property of dynamical systems, leading to instabilities and inaccurate predictions. We introduce Physics-Informed Autoregressive Networks (PIANO) -- a framework that redesigns PINNs to model dynamical systems. PIANO operates autoregressively, explicitly conditioning future predictions on the past. It is trained through a self-supervised rollout mechanism while enforcing physical constraints. We present a rigorous theoretical analysis demonstrating that PINNs suffer from temporal instability, while PIANO achieves stability through autoregressive modeling. Extensive experiments on challenging time-dependent PDEs demonstrate that PIANO achieves state-of-the-art performance, significantly improving accuracy and stability over existing methods. We further show that PIANO outperforms existing methods in weather forecasting.
Mayank Nagda、Jephte Abijuru、Phil Ostheimer、Marius Kloft、Sophie Fellenz
物理学计算技术、计算机技术
Mayank Nagda,Jephte Abijuru,Phil Ostheimer,Marius Kloft,Sophie Fellenz.PIANO: Physics Informed Autoregressive Network[EB/OL].(2025-08-22)[2025-09-02].https://arxiv.org/abs/2508.16235.点此复制
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