LGMLSep 1, 2024

Generating Physical Dynamics under Priors

arXiv:2409.00730v46 citationsh-index: 2
Originality Incremental advance
AI Analysis

This work addresses the problem of ensuring physical consistency in generative models for researchers in AI4Physics, representing an incremental improvement by incorporating priors into existing methods.

The paper tackles the challenge of generating physically feasible dynamics in data-driven contexts by integrating physical priors into diffusion-based generative models, resulting in high-quality and robust dynamics across various physical phenomena.

Generating physically feasible dynamics in a data-driven context is challenging, especially when adhering to physical priors expressed in specific equations or formulas. Existing methodologies often overlook the integration of physical priors, resulting in violation of basic physical laws and suboptimal performance. In this paper, we introduce a novel framework that seamlessly incorporates physical priors into diffusion-based generative models to address this limitation. Our approach leverages two categories of priors: 1) distributional priors, such as roto-translational invariance, and 2) physical feasibility priors, including energy and momentum conservation laws and PDE constraints. By embedding these priors into the generative process, our method can efficiently generate physically realistic dynamics, encompassing trajectories and flows. Empirical evaluations demonstrate that our method produces high-quality dynamics across a diverse array of physical phenomena with remarkable robustness, underscoring its potential to advance data-driven studies in AI4Physics. Our contributions signify a substantial advancement in the field of generative modeling, offering a robust solution to generate accurate and physically consistent dynamics.

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