Gioele Buriani

h-index25
1paper

1 Paper

ROAug 4, 2025
Symbolic Learning of Interpretable Reduced-Order Models for Jumping Quadruped Robots

Gioele Buriani, Jingyue Liu, Maximilian Stölzle et al.

Reduced-order models are essential for motion planning and control of quadruped robots, as they simplify complex dynamics while preserving critical behaviors. This paper introduces a novel methodology for deriving such interpretable dynamic models, specifically for jumping. We capture the high-dimensional, nonlinear jumping dynamics in a low-dimensional latent space by proposing a learning architecture combining Sparse Identification of Nonlinear Dynamics (SINDy) with physical structural priors on the jump dynamics. Our approach demonstrates superior accuracy to the traditional actuated Spring-loaded Inverted Pendulum (aSLIP) model and is validated through simulation and hardware experiments across different jumping strategies.