PerFlow: Physics-Embedded Rectified Flow for Efficient Reconstruction and Uncertainty Quantification of Spatiotemporal Dynamics
arXiv cs.LG / 5/6/2026
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Key Points
- The paper addresses the challenge of reconstructing PDE-governed spatiotemporal fields from sparse, irregular measurements where the inverse problem is ill-posed and uncertainty quantification is difficult.
- It proposes PerFlow, a physics-embedded rectified flow model that avoids slow, unstable sampling-time gradient guidance by decoupling observation conditioning from physics enforcement.
- PerFlow enforces physical laws using a constraint-preserving projection (e.g., incompressibility or conservation) while performing guidance-free conditioning via rectified-flow dynamics.
- The authors provide theoretical invariance guarantees that keep sampled trajectories on a physics-consistent manifold throughout inference.
- Experiments across multiple PDE systems show competitive reconstruction quality, efficient conditional sampling (e.g., ~50 steps), and large inference speedups (up to ~320x vs 2000-step guided diffusion).
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