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Flow marching for a generative PDE foundation model

About

Pretraining on large-scale collections of PDE-governed spatiotemporal trajectories has recently shown promise for building generalizable models of dynamical systems. Yet most existing PDE foundation models rely on deterministic Transformer architectures, which lack generative flexibility for many science and engineering applications. We propose Flow Marching, an algorithm that bridges neural operator learning with flow matching motivated by an analysis of error accumulation in physical dynamical systems, and we build a generative PDE foundation model on top of it. By jointly sampling the noise level and the physical time step between adjacent states, the model learns a unified velocity field that transports a noisy current state toward its clean successor, reducing long-term rollout drift while enabling uncertainty-aware ensemble generations. Alongside this core algorithm, we introduce a Physics-Pretrained Variational Autoencoder (P2VAE) to embed physical states into a compact latent space, and an efficient Flow Marching Transformer (FMT) that combines a diffusion-forcing scheme with latent temporal pyramids, achieving up to 15x greater computational efficiency than full-length video diffusion models and thereby enabling large-scale pretraining at substantially reduced cost. We curate a corpus of ~2.5M trajectories across 12 distinct PDE families and train suites of P2VAEs and FMTs at multiple scales. On downstream evaluation, we benchmark on unseen Kolmogorov turbulence with few-shot adaptation, demonstrate long-term rollout stability over deterministic counterparts, and present uncertainty-stratified ensemble results, highlighting the importance of generative PDE foundation models for real-world applications.

Zituo Chen, Sili Deng• 2025

Related benchmarks

TaskDatasetResultRank
PDE SimulationFNO V4
L2 Relative Error (%)7.32
10
PDE SimulationFNO V5
L2RE (%)8.02
10
PDE SimulationFNO V3
L2RE (%)11.5
10
PDE ReconstructionPDEArena Navier-Stokes
L2 Reconstruction Error (L2RE)5.82
7
PDE ReconstructionPDEBench Compressible Navier-Stokes Low (PB-CNSL)
L2 Relative Error2.66
7
PDE ReconstructionPDEBench Compressible Navier-Stokes High (PB-CNSH)
L2 Relative Error3.25
7
PDE ReconstructionPDEArena Navier-Stokes Compressible (PA-NSC)
L2 Relative Error (L2RE)0.0527
5
PDE ReconstructionThe Well Shallow Water Equations (W-SWE)
VRMSE0.0951
5
PDE ReconstructionThe Well Rayleigh-Bénard
VRMSE0.1886
5
PDE ReconstructionThe Well Scalar Flow (W-SF)
VRMSE0.1453
5
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