LGFeb 6

Memory-Conditioned Flow-Matching for Stable Autoregressive PDE Rollouts

arXiv:2602.06689v1
Originality Highly original
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This addresses rollout instability in PDE solvers for computational fluid dynamics, representing an incremental advance with a novel method for a known bottleneck.

The paper tackled the problem of autoregressive generative PDE solvers drifting over long rollouts by introducing memory-conditioned diffusion/flow-matching, which improved accuracy and stability in experiments on compressible flows with shocks and multiscale mixing.

Autoregressive generative PDE solvers can be accurate one step ahead yet drift over long rollouts, especially in coarse-to-fine regimes where each step must regenerate unresolved fine scales. This is the regime of diffusion and flow-matching generators: although their internal dynamics are Markovian, rollout stability is governed by per-step \emph{conditional law} errors. Using the Mori--Zwanzig projection formalism, we show that eliminating unresolved variables yields an exact resolved evolution with a Markov term, a memory term, and an orthogonal forcing, exposing a structural limitation of memoryless closures. Motivated by this, we introduce memory-conditioned diffusion/flow-matching with a compact online state injected into denoising via latent features. Via disintegration, memory induces a structured conditional tail prior for unresolved scales and reduces the transport needed to populate missing frequencies. We prove Wasserstein stability of the resulting conditional kernel. We then derive discrete Grönwall rollout bounds that separate memory approximation from conditional generation error. Experiments on compressible flows with shocks and multiscale mixing show improved accuracy and markedly more stable long-horizon rollouts, with better fine-scale spectral and statistical fidelity.

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