Bridging Sequential Deep Operator Network and Video Diffusion: Residual Refinement of Spatio-Temporal PDE Solutions
Jaewan Park, Farid Ahmed, Kazuma Kobayashi, Seid Koric, Syed Bahauddin Alam, Iwona Jasiuk, Diab Abueidda

TL;DR
This paper introduces a hybrid physics-informed surrogate model combining a Sequential Deep Operator Network and a residual diffusion model to improve accuracy and detail in simulating complex spatio-temporal PDE solutions.
Contribution
It proposes a novel two-stage framework that leverages residual learning to enhance PDE solution accuracy across different physical problems without specialized modifications.
Findings
Significant error reduction in flow and plasticity benchmarks.
Improved visual quality and spatial detail recovery.
Framework generalizes across different nonlinear, time-dependent PDEs.
Abstract
Video-diffusion models have recently set the standard in video generation, inpainting, and domain translation thanks to their training stability and high perceptual fidelity. Building on these strengths, we repurpose conditional video diffusion as a physics surrogate for spatio-temporal fields governed by partial differential equations (PDEs). Our two-stage surrogate first applies a Sequential Deep Operator Network (S-DeepONet) to produce a coarse, physics-consistent prior from the prescribed boundary or loading conditions. The prior is then passed to a conditional video diffusion model that learns only the residual: the point-wise difference between the ground truth and the S-DeepONet prediction. By shifting the learning burden from the full solution to its much smaller residual space, diffusion can focus on sharpening high-frequency structures without sacrificing global coherence. The…
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Taxonomy
TopicsModel Reduction and Neural Networks · Generative Adversarial Networks and Image Synthesis · 3D Shape Modeling and Analysis
