Disentangled Latent Dynamics Manifold Fusion for Solving Parameterized PDEs
arXiv cs.LG / 3/16/2026
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Key Points
- We introduce Disentangled Latent Dynamics Manifold Fusion (DLDMF), a physics-informed framework that explicitly separates space, time, and PDE parameters to improve generalization across parameter settings and temporal extrapolation.
- The method avoids unstable test-time auto-decoding by mapping PDE parameters directly to a latent embedding that initializes and conditions a parameter-aware neural ODE governing latent state evolution.
- A dynamic manifold fusion mechanism uses a shared decoder to combine spatial coordinates, parameter embeddings, and time-evolving latent states to reconstruct the spatiotemporal solution.
- Experiments on benchmark PDE problems show that DLDMF consistently outperforms state-of-the-art baselines in accuracy, parameter generalization, and extrapolation robustness.
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