Conservative Safety Monitors of Stochastic Dynamical Systems
Generating accurate runtime safety estimates for autonomous systems is vital to ensuring their continued proliferation. However, exhaustive reasoning about future behaviors is generally too complex to do at runtime. To provide scalable and formal safety estimates, we propose a method for leveraging...
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Zusammenfassung: | Generating accurate runtime safety estimates for autonomous systems is vital
to ensuring their continued proliferation. However, exhaustive reasoning about
future behaviors is generally too complex to do at runtime. To provide scalable
and formal safety estimates, we propose a method for leveraging design-time
model checking results at runtime. Specifically, we model the system as a
probabilistic automaton (PA) and compute bounded-time reachability
probabilities over the states of the PA at design time. At runtime, we combine
distributions of state estimates with the model checking results to produce a
bounded time safety estimate. We argue that our approach produces
well-calibrated safety probabilities, assuming the estimated state
distributions are well-calibrated. We evaluate our approach on simulated water
tanks. |
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DOI: | 10.48550/arxiv.2301.11330 |