Probabilistic Latent Variable Modeling for Dynamic Friction Identification and Estimation
Victor Vantilborgh, Sander De Witte, Frederik Ostyn, Tom Lefebvre and, Guillaume Crevecoeur

TL;DR
This paper introduces a probabilistic latent variable approach using neural networks and EM algorithm to improve dynamic friction modeling in robotic joints, enhancing prediction accuracy across diverse operational conditions.
Contribution
It presents a novel probabilistic framework with neural networks for joint friction modeling that accounts for unobserved dynamics, improving generalization in industrial robot applications.
Findings
Enhanced open-loop prediction accuracy over baseline methods
Effective modeling of nonlinear and hysteresis friction behaviors
Validated on Kuka KR6 R700 robot platform
Abstract
Precise identification of dynamic models in robotics is essential to support control design, friction compensation, output torque estimation, etc. A longstanding challenge remains in the identification of friction models for robotic joints, given the numerous physical phenomena affecting the underlying friction dynamics which result into nonlinear characteristics and hysteresis behaviour in particular. These phenomena proof difficult to be modelled and captured accurately using physical analogies alone. This has motivated researchers to shift from physics-based to data-driven models. Currently, these methods are still limited in their ability to generalize effectively to typical industrial robot deployement, characterized by high- and low-velocity operations and frequent direction reversals. Empirical observations motivate the use of dynamic friction models but these remain particulary…
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Taxonomy
TopicsVehicle Dynamics and Control Systems · Hydraulic and Pneumatic Systems
