AE-ViT: Stable Long-Horizon Parametric Partial Differential Equations Modeling
Iva Miku\v{s}, Boris Muha, Domagoj Vlah

TL;DR
AE-ViT introduces a joint convolutional, transformer, and decoder model with multi-stage parameter and coordinate injection for efficient, accurate long-horizon PDE solution prediction, outperforming existing methods.
Contribution
The paper presents a novel joint model with multi-stage parameter and coordinate injection, improving PDE modeling accuracy and efficiency over prior approaches.
Findings
Outperforms DL-ROMs, latent transformers, and plain ViTs in multi-field prediction.
Reduces relative rollout error by approximately 5 times.
Effectively models complex PDEs like Navier-Stokes flow.
Abstract
Deep Learning Reduced Order Models (ROMs) are becoming increasingly popular as surrogate models for parametric partial differential equations (PDEs) due to their ability to handle high-dimensional data, approximate highly nonlinear mappings, and utilize GPUs. Existing approaches typically learn evolution either on the full solution field, which requires capturing long-range spatial interactions at high computational cost, or on compressed latent representations obtained from autoencoders, which reduces the cost but often yields latent vectors that are difficult to evolve, since they primarily encode spatial information. Moreover, in parametric PDEs, the initial condition alone is not sufficient to determine the trajectory, and most current approaches are not evaluated on jointly predicting multiple solution components with differing magnitudes and parameter sensitivities. To address…
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