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FlowDAS: A Stochastic Interpolant-based Framework for Data Assimilation

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Data assimilation (DA) integrates observations with a dynamical model to estimate states of PDE-governed systems. Model-driven methods (e.g., Kalman, particle) presuppose full knowledge of the true dynamics, which is not always satisfied in practice, while purely data-driven solvers learn a deterministic mapping between observations and states and therefore miss the intrinsic stochasticity of real processes. Recently, score-based diffusion models learn a global diffusion prior and provide a good modeling of the stochastic dynamics, showing new potential for DA. However, their all-at-once generation rather than step-by-step transition limits their performance when dealing with highly complex stochastic processes and lacks physical interpretability. To tackle these drawbacks, we introduce FlowDAS, a generative DA framework that uses stochastic interpolants to directly learn state transition dynamics and achieve step-by-step transition to better model the real dynamics. We also improve the framework by combining the observation, better suiting the DA settings. Directly learning the underlying dynamics from collected data removes restrictive dynamical assumptions, and conditioning on observations at each interpolation step yields stable, measurement-consistent forecasts. Experiments on Lorenz-63, Navier-Stokes super-resolution/sparse-observation scenarios, and large-scale weather forecasting -- where dynamics are partly or wholly unknown -- show that FlowDAS surpasses model-driven methods, neural operators, and score-based baselines in accuracy and physical plausibility.

Siyi Chen, Yixuan Jia, Qing Qu, He Sun, Jeffrey A Fessler• 2025

Related benchmarks

TaskDatasetResultRank
Super-ResolutionNavier-Stokes 8^2 to 128^2
KES-RE0.401
14
Data AssimilationERA5 SO-10% (4 held-out trajectories from 2016)
Z500 NRMSE0.031
11
Data AssimilationLorenz 1963
RMSE0.0545
8
Weather forecastingSEVIR (test)
RMSE0.0657
8
Vorticity AssimilationNavier–Stokes SO-5% sparse-pixel observations (held-out trajectories)
NRMSE0.092
8
Sparse observation (SO, 5% → 100%)Navier-Stokes
KES-RE0.543
8
Data AssimilationWeather forecast dataset (SEVIR) (test)
RMSE0.0657
6
Data AssimilationLorenz 1963 (eval)
RMSE0.0545
6
Sparse RecoveryNavier-Stokes 5% to 100%
KES-RE0.543
6
Data AssimilationNavier–Stokes vorticity SO-5%, K=30 (4 held-out trajectories)
NRMSE0.114
5
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