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arxiv: 2101.05916 · v2 · pith:ARPV2VEYnew · submitted 2021-01-15 · 💻 cs.RO · cs.LG· cs.SY· eess.SY

Scalable Learning of Safety Guarantees for Autonomous Systems using Hamilton-Jacobi Reachability

classification 💻 cs.RO cs.LGcs.SYeess.SY
keywords systemssafetyanalysisupdateautonomoushamilton-jacobihoweverlearn
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Autonomous systems like aircraft and assistive robots often operate in scenarios where guaranteeing safety is critical. Methods like Hamilton-Jacobi reachability can provide guaranteed safe sets and controllers for such systems. However, often these same scenarios have unknown or uncertain environments, system dynamics, or predictions of other agents. As the system is operating, it may learn new knowledge about these uncertainties and should therefore update its safety analysis accordingly. However, work to learn and update safety analysis is limited to small systems of about two dimensions due to the computational complexity of the analysis. In this paper we synthesize several techniques to speed up computation: decomposition, warm-starting, and adaptive grids. Using this new framework we can update safe sets by one or more orders of magnitude faster than prior work, making this technique practical for many realistic systems. We demonstrate our results on simulated 2D and 10D near-hover quadcopters operating in a windy environment.

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    P-CBFs generalize CBFs to functionals of predicted flows over a horizon using a terminal backup set and planning-time shift, solved via a single feasible convex QP that certifies safety while optimizing control.