Learning Interpretable PDE Representations for Generative Reconstructions with Structured Sparsity

arXiv cs.LG / 4/28/2026

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Key Points

  • The paper introduces LatentPDE, a latent diffusion framework aimed at improving scientific field reconstruction under limited measurements such as noise, incomplete spatial coverage, and low resolution.
  • LatentPDE resolves sparse-observation reconstruction and super-resolution jointly, while emphasizing physical compliance rather than relying on soft loss penalties or hard-to-interpret latent representations.
  • The method enforces interpretability by directly parameterizing latent variables as coefficients and source terms of an assumed governing PDE, yielding an inherently structured latent space.
  • Experiments across varied data-gap configurations show that the model can reconstruct dynamics at arbitrary target resolutions and also track predictive uncertainty.

Abstract

Scientific measurements are often bottlenecked by suboptimal conditions, whether that be noise, incomplete spatial coverage, or limited resolution, rendering accurate field reconstruction a difficult task. We introduce LatentPDE, a latent diffusion framework designed to simultaneously resolve sparse-observation reconstruction and super-resolution. While existing physics-guided diffusion models typically rely on soft loss penalties or uninterpretable representations, our approach enforces physical compliance by constructing an inherently interpretable latent space. Specifically, we parameterize the latent variables directly as the coefficients and source terms of an assumed governing PDE. In doing so, LatentPDE is able to reliably reconstruct dynamics across highly disparate and structured data gaps. Empirical results on diverse configurations demonstrate that our model achieves high-fidelity recovery at any desired resolution while also tracking the underlying predictive uncertainty.

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