2021
DOI: 10.48550/arxiv.2112.04639
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Safe Autonomous Navigation for Systems with Learned SE(3) Hamiltonian Dynamics

Abstract: Safe autonomous navigation in unknown environments is an important problem for ground, aerial, and underwater robots. This paper proposes techniques to learn the dynamics models of a mobile robot from trajectory data and synthesize a tracking controller with safety and stability guarantees. The state of a mobile robot usually contains its position, orientation, and generalized velocity and satisfies Hamilton's equations of motion. Instead of a hand-derived dynamics model, we use a dataset of state-control traj… Show more

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