pADAM: A Plug-and-Play All-in-One Diffusion Architecture for Multi-Physics Learning
AI 摘要
pADAM是一种多物理场学习的通用生成框架,可实现跨异构偏微分方程的统一推理。
主要贡献
- 提出了pADAM,一个统一的生成框架,用于学习跨异构偏微分方程的共享概率先验。
- pADAM支持前向预测和逆推理,无需重新训练。
- pADAM提供可靠的不确定性量化,并具有覆盖率保证。
方法论
通过学习系统状态和物理参数的联合分布,pADAM在一个架构中实现前向预测、逆推理和模型选择。
原文摘要
Generalizing across disparate physical laws remains a fundamental challenge for artificial intelligence in science. Existing deep-learning solvers are largely confined to single-equation settings, limiting transfer across physical regimes and inference tasks. Here we introduce pADAM, a unified generative framework that learns a shared probabilistic prior across heterogeneous partial differential equation families. Through a learned joint distribution of system states and, where applicable, physical parameters, pADAM supports forward prediction and inverse inference within a single architecture without retraining. Across benchmarks ranging from scalar diffusion to nonlinear Navier--Stokes equations, pADAM achieves accurate inference even under sparse observations. Combined with conformal prediction, it also provides reliable uncertainty quantification with coverage guarantees. In addition, pADAM performs probabilistic model selection from only two sparse snapshots, identifying governing laws through its learned generative representation. These results highlight the potential of generative multi-physics modeling for unified and uncertainty-aware scientific inference.