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Metriplectic Conditional Flow Matching for Dissipative Dynamics

Published: September 23, 2025 | arXiv ID: 2509.19526v1

By: Ali Baheri, Lars Lindemann

Potential Business Impact:

Teaches computers to predict how things move.

Business Areas:
Energy Management Energy

Metriplectic conditional flow matching (MCFM) learns dissipative dynamics without violating first principles. Neural surrogates often inject energy and destabilize long-horizon rollouts; MCFM instead builds the conservative-dissipative split into both the vector field and a structure preserving sampler. MCFM trains via conditional flow matching on short transitions, avoiding long rollout adjoints. In inference, a Strang-prox scheme alternates a symplectic update with a proximal metric step, ensuring discrete energy decay; an optional projection enforces strict decay when a trusted energy is available. We provide continuous and discrete time guarantees linking this parameterization and sampler to conservation, monotonic dissipation, and stable rollouts. On a controlled mechanical benchmark, MCFM yields phase portraits closer to ground truth and markedly fewer energy-increase and positive energy rate events than an equally expressive unconstrained neural flow, while matching terminal distributional fit.

Country of Origin
πŸ‡ΊπŸ‡Έ πŸ‡¨πŸ‡­ United States, Switzerland

Page Count
11 pages

Category
Computer Science:
Machine Learning (CS)