TR2025-090
Learning Positive Definite Inertia Matrices in Black-Box Inverse Dynamics Models via Gaussian Processes: a Constraint Learning Approach
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- "Learning Positive Definite Inertia Matrices in Black-Box Inverse Dynamics Models via Gaussian Processes: a Constraint Learning Approach", European Control Conference (ECC), June 2025.BibTeX TR2025-090 PDF
- @inproceedings{Giacomuzzo2025jun,
- author = {Giacomuzzo, Giulio and Romeres, Diego and Carli, Ruggero and Dalla Libera, Alberto},
- title = {{Learning Positive Definite Inertia Matrices in Black-Box Inverse Dynamics Models via Gaussian Processes: a Constraint Learning Approach}},
- booktitle = {European Control Conference (ECC)},
- year = 2025,
- month = jun,
- url = {https://www.merl.com/publications/TR2025-090}
- }
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- "Learning Positive Definite Inertia Matrices in Black-Box Inverse Dynamics Models via Gaussian Processes: a Constraint Learning Approach", European Control Conference (ECC), June 2025.
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Abstract:
Inverse dynamics models are crucial for robotic control, but traditional physics-based models require precise system parameters that can be difficult to obtain. While data- driven black-box models offer a valid alternative, they usually lack physical plausibility, limiting their use with standard control methods. This paper presents a method for black-box inverse dynamics identification using Gaussian Processes Re- gression (GPR) that promotes physical consistency, by enforcing the positive definiteness of the inertia matrix. In particular, we unveil how to estimate the inertia matrix elements from black- box models, and we integrate positivity constraints into the empirical risk minimization problem. Experimental validation demonstrates that our approach significantly improves physical consistency with minimal loss in estimation accuracy, outperforming unconstrained models that may yield non-physical behaviors and consequently poor control performances.
Related News & Events
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NEWS MERL contributes to 2025 European Control Conference Date: June 24, 2025 - June 27, 2025
Where: Thessaloniki
MERL Contacts: Stefano Di Cairano; Daniel N. Nikovski; Diego Romeres; Yebin Wang
Research Areas: Control, Dynamical Systems, Machine Learning, Multi-Physical Modeling, Optimization, RoboticsBrief- MERL researchers contributed to both the technical program and workshop organization at the 2025 European Control Conference (ECC), held in Thessaloniki, Greece, from June 24 to 27. ECC is one of the premier conferences in the field of control.
In the main conference, MERL researchers presented four papers covering a range of topics, including: Representation learning, Motion planning for tractor-trailers, Motion planning for mobile manipulators, Learning high-dimensional dynamical systems, Model learning for robotics.
Additionally, MERL co-organized a workshop with the University of Padua titled “Reinforcement Learning for Robotic Control: Recent Developments and Open Challenges.” MERL researcher Diego Romeres also delivered an invited talk titled “Human-Robot Collaborative Assembly” in that workshop.
- MERL researchers contributed to both the technical program and workshop organization at the 2025 European Control Conference (ECC), held in Thessaloniki, Greece, from June 24 to 27. ECC is one of the premier conferences in the field of control.