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DiffusionRollout: Uncertainty-Aware Rollout Planning in Long-Horizon PDE Solving

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We propose DiffusionRollout, a novel selective rollout planning strategy for autoregressive diffusion models, aimed at mitigating error accumulation in long-horizon predictions of physical systems governed by partial differential equations (PDEs). Building on the recently validated probabilistic approach to PDE solving, we further explore its ability to quantify predictive uncertainty and demonstrate a strong correlation between prediction errors and standard deviations computed over multiple samples-supporting their use as a proxy for the model's predictive confidence. Based on this observation, we introduce a mechanism that adaptively selects step sizes during autoregressive rollouts, improving long-term prediction reliability by reducing the compounding effect of conditioning on inaccurate prior outputs. Extensive evaluation on long-trajectory PDE prediction benchmarks validates the effectiveness of the proposed uncertainty measure and adaptive planning strategy, as evidenced by lower prediction errors and longer predicted trajectories that retain a high correlation with their ground truths.

Seungwoo Yoo, Juil Koo, Daehyeon Choi, Minhyuk Sung• 2026

Related benchmarks

TaskDatasetResultRank
PDE solvingGray-Scott long rollout
Relative L2 Error0.391
11
PDE solvingTurbulent Flow long rollout
Rel L2 Error0.307
11
PDE solvingCahn-Hilliard (long rollout)
Rel L2 Error0.254
11
PDE solvingAnisotropic Diffusion long rollout
Relative L2 Error0.026
11
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