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ENMA: Tokenwise Autoregression for Generative Neural PDE Operators

ENMA: Tokenwise Autoregression for Generative Neural PDE Operators

来源:Arxiv_logoArxiv
英文摘要

Solving time-dependent parametric partial differential equations (PDEs) remains a fundamental challenge for neural solvers, particularly when generalizing across a wide range of physical parameters and dynamics. When data is uncertain or incomplete-as is often the case-a natural approach is to turn to generative models. We introduce ENMA, a generative neural operator designed to model spatio-temporal dynamics arising from physical phenomena. ENMA predicts future dynamics in a compressed latent space using a generative masked autoregressive transformer trained with flow matching loss, enabling tokenwise generation. Irregularly sampled spatial observations are encoded into uniform latent representations via attention mechanisms and further compressed through a spatio-temporal convolutional encoder. This allows ENMA to perform in-context learning at inference time by conditioning on either past states of the target trajectory or auxiliary context trajectories with similar dynamics. The result is a robust and adaptable framework that generalizes to new PDE regimes and supports one-shot surrogate modeling of time-dependent parametric PDEs.

Armand Kassa? Koupa?、Lise Le Boudec、Louis Serrano、Patrick Gallinari

物理学计算技术、计算机技术

Armand Kassa? Koupa?,Lise Le Boudec,Louis Serrano,Patrick Gallinari.ENMA: Tokenwise Autoregression for Generative Neural PDE Operators[EB/OL].(2025-06-06)[2025-07-01].https://arxiv.org/abs/2506.06158.点此复制

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