Learning Physically Consistent Lagrangian Control Models Without Acceleration Measurements
- URL: http://arxiv.org/abs/2512.03035v1
- Date: Tue, 02 Dec 2025 18:56:02 GMT
- Title: Learning Physically Consistent Lagrangian Control Models Without Acceleration Measurements
- Authors: Ibrahim Laiche, Mokrane Boudaoud, Patrick Gallinari, Pascal Morin,
- Abstract summary: This article focuses on the derivation and identification of physically consistent models, which are essential for model-based control synthesis.<n>Lagrangian or Hamiltonian neural networks provide useful structural guarantees but the learning of such models often leads to inconsistent models.<n>A learning algorithm relying on an original loss function is proposed to improve the physical consistency of Lagrangian systems.
- Score: 11.581126685402083
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This article investigates the modeling and control of Lagrangian systems involving non-conservative forces using a hybrid method that does not require acceleration calculations. It focuses in particular on the derivation and identification of physically consistent models, which are essential for model-based control synthesis. Lagrangian or Hamiltonian neural networks provide useful structural guarantees but the learning of such models often leads to inconsistent models, especially on real physical systems where training data are limited, partial and noisy. Motivated by this observation and the objective to exploit these models for model-based nonlinear control, a learning algorithm relying on an original loss function is proposed to improve the physical consistency of Lagrangian systems. A comparative analysis of different learning-based modeling approaches with the proposed solution shows significant improvements in terms of physical consistency of the learned models, on both simulated and experimental systems. The model's consistency is then exploited to demonstrate, on an experimental benchmark, the practical relevance of the proposed methodology for feedback linearization and energy-based control techniques.
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