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Learning Certified Control Using Contraction Metric

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Authors

Dawei Sun (University of Illinois Urbana-Champaign)*; Susmit Jha (SRI International); Chuchu Fan (MIT)

Interactive Session

2020-11-17, 11:50 - 12:20 PST | PheedLoop Session

Abstract

In this paper, we solve the problem of finding a certified control policy that drives a robot from any given initial state and under any bounded disturbance to the desired reference trajectory, with guarantees on the convergence or bounds on the tracking error. Such a controller is crucial in safe motion planning. We leverage the advanced theory in Control Contraction Metric and design a learning framework based on neural networks to co-synthesize the contraction metric and the controller for control-affine systems. We further provide methods to validate the convergence and bounded error guarantees. We demonstrate the performance of our method using a suite of challenging robotic models, including models with learned dynamics as neural networks. We compare our approach with leading methods using sum-of-squares programming, reinforcement learning, and model predictive control. Results show that our methods indeed can handle a broader class of systems with less tracking error and faster execution speed. Code is available at https://github.com/sundw2014/C3M.

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Conference on Robot Learning 2020