Hybrid Energy-Based Models for Physical AI: Provably Stable Identification of Port-Hamiltonian Dynamics
arXiv cs.AI / 4/2/2026
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Key Points
- The paper proposes an energy-based model (EBM) framework for physical system identification that enforces stable, dissipative, absorbing invariant dynamics, addressing a gap in prior EBM identification methods.
- It extends EBM stability theory to nonsmooth activations by using Clarke derivatives to ensure negative energy dissipation and by deriving conditions for radial unboundedness, revealing a stability–expressivity tradeoff in standard EBMs.
- To improve expressivity without losing guarantees, the authors introduce a hybrid EBM architecture with a dynamical “visible” layer and static hidden layers, and they prove absorbing invariance under mild assumptions.
- The stability guarantees are further extended to port-Hamiltonian dynamics, connecting the approach to structure-preserving physical AI formulations.
- Experiments on metric-deformed multi-well and ring systems support the method, demonstrating that the hybrid architecture can combine expressive modeling with provable safety guarantees.
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