LGAINANAMay 25

Autoregression-Free Neural Operators for Time-Dependent PDEs

arXiv:2605.2541345.2
Predicted impact top 56% in LG · last 90 daysOriginality Incremental advance
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For practitioners solving time-dependent PDEs, AFNO offers a more stable and accurate alternative to autoregressive neural operators for long-horizon forecasting.

AFNO avoids autoregressive rollout by learning continuous-time latent dynamics via flow matching, reducing long-horizon prediction errors on six PDE benchmarks.

Neural operators learn mappings from function-dependent inputs to solutions, providing an effective framework for solving partial differential equations (PDEs). For time-dependent PDEs, existing methods typically perform long-horizon prediction through autoregressive rollout directly in high-dimensional physical field spaces, where each predicted state is recursively fed back as the input for the next step. Although effective for short-term prediction, this autoregressive rollout and the lack of continuous-time modeling lead to progressive error accumulation over long-horizon rollouts. In this work, we propose Autoregression-Free Neural Operators (AFNO), which map the time evolution of PDEs into a latent space and model continuous-time vector fields within it. AFNO uses flow matching to learn the latent vector field, thereby enabling continuous evolution over extended horizons, avoiding autoregressive rollout and capturing dynamics under varying parameter configurations through explicit conditioning on physical parameters. Theoretical analysis and extensive experiments on six PDEs demonstrate that AFNO improves long-horizon prediction stability and consistently reduces rollout errors compared with the baselines.

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