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Learning-based adaption of robotic friction models

Scholl, Philipp and Iskandar, Maged and Wolf, Sebastian and Lee, Jinoh and Bacho, Aras and Dietrich, Alexander and Albu-Schäffer, Alin Olimpiu and Gitta, Kutyniok (2024) Learning-based adaption of robotic friction models. Robotics and Computer-Integrated Manufacturing, 89. Elsevier. doi: 10.1016/j.rcim.2024.102780. ISSN 0736-5845.

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Official URL: https://www.sciencedirect.com/science/article/pii/S0736584524000668

Abstract

In the Fourth Industrial Revolution, wherein artificial intelligence and the automation of machines occupy a central role, the deployment of robots is indispensable. However, the manufacturing process using robots, especially in collaboration with humans, is highly intricate. In particular, modeling the friction torque in robotic joints is a longstanding problem due to the lack of a good mathematical description. This motivates the usage of data-driven methods in recent works. However, model-based and data-driven models often exhibit limitations in their ability to generalize beyond the specific dynamics they were trained on, as we demonstrate in this paper. To address this challenge, we introduce a novel approach based on residual learning, which aims to adapt an existing friction model to new dynamics using as little data as possible. We validate our approach by training a base neural network on a symmetric friction data set to learn an accurate relation between the velocity and the friction torque. Subsequently, to adapt to more complex asymmetric settings, we train a second network on a small dataset, focusing on predicting the residual of the initial network’s output. By combining the output of both networks in a suitable manner, our proposed estimator outperforms the conventional model-based approach, an extended LuGre model, and the base neural network significantly. Furthermore, we evaluate our method on trajectories involving external loads and still observe a substantial improvement, approximately 60%–70%, over the conventional approach. Our method does not rely on data with external load during training, eliminating the need for external torque sensors. This demonstrates the generalization capability of our approach, even with a small amount of data – less than a minute – enabling adaptation to diverse scenarios based on prior knowledge about friction in different settings.

Item URL in elib:https://elib.dlr.de/204073/
Document Type:Article
Title:Learning-based adaption of robotic friction models
Authors:
AuthorsInstitution or Email of AuthorsAuthor's ORCID iDORCID Put Code
Scholl, PhilippUNSPECIFIEDUNSPECIFIEDUNSPECIFIED
Iskandar, MagedUNSPECIFIEDhttps://orcid.org/0000-0003-0644-0659UNSPECIFIED
Wolf, SebastianUNSPECIFIEDhttps://orcid.org/0000-0002-5711-5007UNSPECIFIED
Lee, JinohUNSPECIFIEDhttps://orcid.org/0000-0002-4901-7095158906841
Bacho, ArasUNSPECIFIEDUNSPECIFIEDUNSPECIFIED
Dietrich, AlexanderUNSPECIFIEDhttps://orcid.org/0000-0003-3463-5074158906842
Albu-Schäffer, Alin OlimpiuUNSPECIFIEDhttps://orcid.org/0000-0001-5343-9074UNSPECIFIED
Gitta, KutyniokUNSPECIFIEDUNSPECIFIEDUNSPECIFIED
Date:1 May 2024
Journal or Publication Title:Robotics and Computer-Integrated Manufacturing
Refereed publication:Yes
Open Access:Yes
Gold Open Access:No
In SCOPUS:Yes
In ISI Web of Science:Yes
Volume:89
DOI:10.1016/j.rcim.2024.102780
Publisher:Elsevier
ISSN:0736-5845
Status:Published
Keywords:Friction, Machine learning
HGF - Research field:Aeronautics, Space and Transport
HGF - Program:Space
HGF - Program Themes:Robotics
DLR - Research area:Raumfahrt
DLR - Program:R RO - Robotics
DLR - Research theme (Project):R - Robot Dynamics & Simulation [RO]
Location: Oberpfaffenhofen
Institutes and Institutions:Institute of Robotics and Mechatronics (since 2013) > Analysis and Control of Advanced Robotic Systems
Deposited By: Iskandar, Maged Samuel Zakri
Deposited On:03 May 2024 08:22
Last Modified:04 Feb 2025 12:32

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