Adaptive Diffusion Posterior Sampling for Data and Model Fusion of Complex Nonlinear Dynamical Systems
arXiv cs.LG / 3/16/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper introduces a diffusion-based surrogate modeling framework that probabilistically forecasts chaotic, high-dimensional dynamical systems to capture distributional uncertainty beyond deterministic surrogates.
- It develops a multi-step autoregressive diffusion objective to improve long-rollout stability relative to standard single-step training.
- It uses a multi-scale graph transformer with diffusion preconditioning and voxel-grid pooling to handle complex geometries efficiently.
- It provides a unified platform that enables adaptive sensor placement via uncertainty estimates or an error-estimation module and performs data assimilation through diffusion posterior sampling without retraining, demonstrated on 2D turbulence and a backwards-facing step flow for forecasting and sensing.
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