Informed Federated Learning to Train a Robotic Arm Inverse Dynamic Model
Metadatos
Mostrar el registro completo del ítemAutor
Jimenez-Perera, Gabriel; Valencia Vidal, Brayan; Luque Sola, Niceto Rafael; Ros Vidal, Eduardo; Barranco Expósito, FranciscoMateria
Collaborative robots Robots Data models Training Intellectual property Federated learning Trajectory Servers Distributed databases Data privacy Deep learning methods Data sets for robot learning
Fecha
2025-09-10Referencia bibliográfica
G. Jimenez-Perera, B. Valencia-Vidal, N. R. Luque, E. Ros and F. Barranco, "Informed Federated Learning to Train a Robotic Arm Inverse Dynamic Model," in IEEE Robotics and Automation Letters, vol. 10, no. 10, pp. 11022-11029, Oct. 2025, doi: 10.1109/LRA.2025.3608659
Patrocinador
Consejería de Transformación Económica, Industria, Conocimiento y Universidades de la Junta de Andalucía; Colombian Ministry of Science, Technology, and Innovation; Spanish National Grant PID2022-141466OB-I00; Universidad de Granada / CBUAResumen
Access to real-world data in robotics domains is often challenging due to restrictions on data sharing and limited availability. Although privacy and intellectual property concerns are the main barriers, ensuring data access is crucial for advancing data-driven models. Specifically, machine-learning-based inverse dynamic models show promising results for nonrigid robot identification, but the data used to train them are often kept private due to intellectual property protections. Federated learning proposes a methodology to access such data without centralizing them in a single repository, thus avoiding intellectual property limitations. We propose a solution that uses federated learning to train a model from distributed data to develop a robust robotic arm inverse dynamic model. Our approach demonstrates the feasibility of using a machine learning method in which local robots train on their own data while collaborating without sharing raw information. Furthermore, we propose a novel custom aggregation method that integrates locally learned solutions from different workspaces into a single global model without requiring raw data sharing. This method improves accuracy in our federated solution by approximately 20% for the learned inverse dynamic model.





