ArXiv TLDR

Structure-Preserving Gaussian Processes Via Discrete Euler-Lagrange Equations

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2605.06246

Jan-Hendrik Ewering, Kathrin Flaßkamp, Niklas Wahlström, Thomas B. Schön, Thomas Seel

cs.LGcs.RO

TLDR

Lagrangian Gaussian Processes (LGPs) learn physically consistent dynamics from sparse position data, ensuring stable long-term predictions by preserving geometric structure.

Key contributions

  • Introduces Lagrangian Gaussian Processes (LGPs) for learning dynamics with uncertainty.
  • Preserves geometric structure, preventing energy drift for stable long-term predictions.
  • Learns dynamics solely from discrete position data, eliminating need for velocity measurements.
  • Demonstrates data-efficiency and generalization on various synthetic and real-world systems.

Why it matters

This paper introduces a novel approach to learn dynamic systems that inherently maintains physical consistency, preventing energy drift. It's crucial for applications where only positional data is available, enabling stable and accurate long-term predictions.

Original Abstract

In this paper, we propose Lagrangian Gaussian Processes (LGPs) for probabilistic and data-efficient learning of dynamics via discrete forced Euler-Lagrange equations. Importantly, the geometric structure of the Lagrange-d'Alembert principle, which governs the motion of dynamical systems, is preserved by construction in the absence of external forces. This allows learning physically consistent models that overcome erroneous drift in the system's energy, thereby providing stable long-term predictions. At the core of our approach lie linear operators for Gaussian process conditioning, constructed from discrete forced Euler-Lagrange equations and variational discretization schemes. Thereby and unlike prior work, the method enables learning dynamics from discrete position snapshots, i.e., without access to a system's velocities or momenta. This is particularly relevant for a large class of practical scenarios where only position measurements are available, for instance, in motion capture or visual servoing applications. We demonstrate the data-efficiency and generalization capabilities of the LGPs in various synthetic and real-world case studies, including a real-world soft robot with hysteresis. The experimental results underscore that the LGPs learn physically consistent dynamics with uncertainty quantification solely from sparse positional data and enable stable long-term predictions.

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