Disentangled Latent Dynamics Manifold Fusion for Solving Parameterized PDEs
Zhangyong Liang

TL;DR
DLDMF is a physics-informed neural framework that disentangles space, time, and parameters to improve generalization and extrapolation in parameterized PDE solutions.
Contribution
It introduces a novel disentangled latent dynamics approach with direct parameter embedding and manifold fusion, enhancing stability and accuracy.
Findings
Outperforms state-of-the-art in accuracy and generalization.
Excels in long-term temporal extrapolation.
Effectively handles unseen parameter settings.
Abstract
Generalizing neural surrogate models across different PDE parameters remains difficult because changes in PDE coefficients often make learning harder and optimization less stable. The problem becomes even more severe when the model must also predict beyond the training time range. Existing methods usually cannot handle parameter generalization and temporal extrapolation at the same time. Standard parameterized models treat time as just another input and therefore fail to capture intrinsic dynamics, while recent continuous-time latent methods often rely on expensive test-time auto-decoding for each instance, which is inefficient and can disrupt continuity across the parameterized solution space. To address this, we propose Disentangled Latent Dynamics Manifold Fusion (DLDMF), a physics-informed framework that explicitly separates space, time, and parameters. Instead of unstable…
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Taxonomy
TopicsModel Reduction and Neural Networks · Generative Adversarial Networks and Image Synthesis · Topic Modeling
