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Safe Feedback Motion Planning: A Contraction Theory and L1\mathcal{L}_1L1​-Adaptive Control Based Approach

2 April 2020
Arun Lakshmanan
Aditya Gahlawat
N. Hovakimyan
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Abstract

Autonomous robots that are capable of operating safely in the presence of imperfect model knowledge or external disturbances are vital in safety-critical applications. In this paper, we present a planner-agnostic framework to design and certify safe tubes around desired trajectories that the robot is always guaranteed to remain inside of. By leveraging recent results in contraction analysis and L1\mathcal{L}_1L1​-adaptive control we synthesize an architecture that induces safe tubes for nonlinear systems with state and time-varying uncertainties. We demonstrate with a few illustrative examples how contraction theory-based L1\mathcal{L}_1L1​-adaptive control can be used in conjunction with traditional motion planning algorithms to obtain provably safe trajectories.

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