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A Theoretical Overview of Neural Contraction Metrics for Learning-based Control with Guaranteed Stability

Tsukamoto, Hiroyasu and Chung, Soon-Jo and Slotine, Jean-Jacques and Fan, Chuchu (2021) A Theoretical Overview of Neural Contraction Metrics for Learning-based Control with Guaranteed Stability. In: 2021 60th IEEE Conference on Decision and Control (CDC). IEEE , Piscataway, NJ, pp. 2949-2954. ISBN 978-1-6654-3659-5. https://resolver.caltech.edu/CaltechAUTHORS:20220210-721895000

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Abstract

This paper presents a theoretical overview of a Neural Contraction Metric (NCM): a neural network model of an optimal contraction metric and corresponding differential Lyapunov function, the existence of which is a necessary and sufficient condition for incremental exponential stability of non-autonomous nonlinear system trajectories. Its innovation lies in providing formal robustness guarantees for learning-based control frameworks, utilizing contraction theory as an analytical tool to study the nonlinear stability of learned systems via convex optimization. In particular, we rigorously show in this paper that, by regarding modeling errors of the learning schemes as external disturbances, the NCM control is capable of obtaining an explicit bound on the distance between a time-varying target trajectory and perturbed solution trajectories, which exponentially decreases with time even under the presence of deterministic and stochastic perturbation. These useful features permit simultaneous synthesis of a contraction metric and associated control law by a neural network, thereby enabling real-time computable and probably robust learning-based control for general control-affine nonlinear systems.


Item Type:Book Section
Related URLs:
URLURL TypeDescription
https://doi.org/10.1109/CDC45484.2021.9682859DOIArticle
https://arxiv.org/abs/2110.00693arXivDiscussion Paper
ORCID:
AuthorORCID
Tsukamoto, Hiroyasu0000-0002-6337-2667
Chung, Soon-Jo0000-0002-6657-3907
Slotine, Jean-Jacques0000-0002-7161-7812
Fan, Chuchu0000-0003-4671-233X
Additional Information:© 2021 IEEE.
Group:GALCIT
DOI:10.1109/cdc45484.2021.9682859
Record Number:CaltechAUTHORS:20220210-721895000
Persistent URL:https://resolver.caltech.edu/CaltechAUTHORS:20220210-721895000
Official Citation:H. Tsukamoto, S. -J. Chung, J. -J. Slotine and C. Fan, "A Theoretical Overview of Neural Contraction Metrics for Learning-based Control with Guaranteed Stability," 2021 60th IEEE Conference on Decision and Control (CDC), 2021, pp. 2949-2954, doi: 10.1109/CDC45484.2021.9682859
Usage Policy:No commercial reproduction, distribution, display or performance rights in this work are provided.
ID Code:113416
Collection:CaltechAUTHORS
Deposited By: George Porter
Deposited On:10 Feb 2022 22:43
Last Modified:10 Feb 2022 22:43

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