Learning Linear Complementarity Systems
Abstract
This paper investigates the learning, or system identification, of a class of piecewise-affine dynamical systems known as linear complementarity systems (LCSs). We propose a violation-based loss which enables efficient learning of the LCS parameterization, without prior knowledge of the hybrid mode boundaries, using gradient-based methods. The proposed violation-based loss incorporates both dynamics prediction loss and a novel complementarity - violation loss. We show several properties attained by this loss formulation, including its differentiability, the efficient computation of first- and second-order derivatives, and its relationship to the traditional prediction loss, which strictly enforces complementarity. We apply this violation-based loss formulation to learn LCSs with tens of thousands of (potentially stiff) hybrid modes. The results demonstrate a state-of-the-art ability to identify piecewise-affine dynamics, outperforming methods which must differentiate through non-smooth linear complementarity problems.
Cite
Text
Jin et al. "Learning Linear Complementarity Systems." Proceedings of The 4th Annual Learning for Dynamics and Control Conference, 2022.Markdown
[Jin et al. "Learning Linear Complementarity Systems." Proceedings of The 4th Annual Learning for Dynamics and Control Conference, 2022.](https://mlanthology.org/l4dc/2022/jin2022l4dc-learning/)BibTeX
@inproceedings{jin2022l4dc-learning,
title = {{Learning Linear Complementarity Systems}},
author = {Jin, Wanxin and Aydinoglu, Alp and Halm, Mathew and Posa, Michael},
booktitle = {Proceedings of The 4th Annual Learning for Dynamics and Control Conference},
year = {2022},
pages = {1137-1149},
volume = {168},
url = {https://mlanthology.org/l4dc/2022/jin2022l4dc-learning/}
}