Deep Lagrangian Networks: Using Physics as Model Prior for Deep Learning

Jul 9, 2019
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Abstract: (submitter)
Deep learning has achieved astonishing results on many tasks with large amounts of data and generalization within the proximity of training data. For many important real-world applications, these requirements are unfeasible and additional prior knowledge on the task domain is required to overcome the resulting problems. In particular, learning physics models for model-based control requires robust extrapolation from fewer samples - often collected online in real-time - and model errors may lead to drastic damages of the system. Directly incorporating physical insight has enabled us to obtain a novel deep model learning approach that extrapolates well while requiring fewer samples. As a first example, we propose Deep Lagrangian Networks (DeLaN) as a deep network structure upon which Lagrangian Mechanics have been imposed. DeLaN can learn the equations of motion of a mechanical system (i.e., system dynamics) with a deep network efficiently while ensuring physical plausibility. The resulting DeLaN network performs very well at robot tracking control. The proposed method did not only outperform previous model learning approaches at learning speed but exhibits substantially improved and more robust extrapolation to novel trajectories and learns online in real-time
  • Alin Albu-Schäffer. Regelung von Robotern mit elastischen Gelenken am Beispiel der DLRLeichtbauarme. PhD thesis, Technische Universität München
  • Estimation of inertial parameters of manipulator loads and links. The
    • Christopher G. Atkeson
      ,
    • Chae H. An
      ,
    • John M. Hollerbach
      • Int.J.Robotics Res. 5 (1986) 101-119
  • Recursive lagrangian dynamics of flexible manipulator arms. The International
    • Wayne J. Book
    • Journal of Robotics Research, 3(3):87-101
    • Sylvain Calinon, Florent D’halluin
      • Eric L. Sauser
        ,
      • Darwin G. Caldwell
        ,
      • Aude G. Billard
    • and Carlos Bordons Alba. Model predictive control
      • Eduardo F. Camacho
    • Younggeun Choi, Shin-Young Cheong, and Nicolas Schweighofer. Local online support vector regression for learning control. In International Symposium on Computational Intelligence in
      • Robotics and Automation, pp. 13-18
      • Erwin Coumans and Yunfei Bai. Pybullet, a python module for physics simulation for games, robotics and machine learning
      • Carlos Canudas de Wit, Bruno Siciliano, and Georges Bastin. Theory of robot control
        • Science & Business Media
        • Dua Dheeru and Efi Karra Taniskidou. UCI machine learning repository,. URL http:
        • //archive.ics.uci.edu/ml
          • Roy Featherstone. Rigid Body Dynamics Algorithms
          • Manuel Crisostomo, A
            • Joao P. Ferreira
            • Signal Processing, pp. 1-6
            • Zheng Geng
              • Leonard S. Haynes
                ,
              • James D. Lee
                ,
              • Robert L. Carroll
              • 237-254
              • and Hooshang Hemami. An approach to analyzing biped locomotion dynamics and designing robot locomotion controls. IEEE Transactions on Automatic Control, 22(6):
                • C. Leslie Golliday
                • 963-972, December. ISSN 0018-9286
                • Advanced dynamics. Cambridge University Press
                  • Donald T. Greenwood
                • Masahiko Haruno
                  • Daniel M. Wolpert
                    • Neural Comput. 13 (2001) 2201-2220
                • Hooshang Hemami and Bostwick Wyman. Modeling and control of constrained dynamic systems with application to biped locomotion in the frontal plane
                  • Control, 24(4):526-535, August. ISSN 0018-9286