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Learning Passive Continuous-Time Dynamics with Multistep Port-Hamiltonian Gaussian Processes

Published: October 1, 2025 | arXiv ID: 2510.00384v2

By: Chi Ho Leung, Philip E. Paré

Potential Business Impact:

Learns how things move by watching them.

Business Areas:
DSP Hardware

We propose the multistep port-Hamiltonian Gaussian process (MS-PHS GP) to learn physically consistent continuous-time dynamics and a posterior over the Hamiltonian from noisy, irregularly-sampled trajectories. By placing a GP prior on the Hamiltonian surface $H$ and encoding variable-step multistep integrator constraints as finite linear functionals, MS-PHS GP enables closed-form conditioning of both the vector field and the Hamiltonian surface without latent states, while enforcing energy balance and passivity by design. We state a finite-sample vector-field bound that separates the estimation and variable-step discretization terms. Lastly, we demonstrate improved vector-field recovery and well-calibrated Hamiltonian uncertainty on mass-spring, Van der Pol, and Duffing benchmarks.

Country of Origin
🇺🇸 United States

Page Count
8 pages

Category
Computer Science:
Machine Learning (CS)