Score: 0

Learning-Based Data-Assisted Port-Hamiltonian Control for Free-Floating Space Manipulators

Published: September 11, 2025 | arXiv ID: 2509.09563v1

By: Mostafa Eslami, Maryam Babazadeh

Potential Business Impact:

Helps robots learn to move without crashing.

Business Areas:
Embedded Systems Hardware, Science and Engineering, Software

A generic data-assisted control architecture within the port-Hamiltonian framework is proposed, introducing a physically meaningful observable that links conservative dynamics to all actuation, dissipation, and disturbance channels. A robust, model-based controller combined with a high-gain decentralized integrator establishes large robustness margins and strict time-scale separation, ensuring that subsequent learning cannot destabilize the primary dynamics. Learning, selected for its generalizability, is then applied to capture complex, unmodeled effects, despite inherent delay and transient error during adaptation. Formal Lyapunov analysis with explicit stability bounds guarantees convergence under bounded learning errors. The structured design confines learning to the simplest part of the dynamics, enhancing data efficiency while preserving physical interpretability. The approach is generic, with a free-floating space manipulator orientation control task, including integrated null-space collision avoidance, serving as a case study to demonstrate robust tracking performance and applicability to broader robotic domains.

Page Count
15 pages

Category
Electrical Engineering and Systems Science:
Systems and Control