Published June 3, 2024
| Accepted
Journal Article
Open
Bounding Stochastic Safety: Leveraging Freedman's Inequality with Discrete-Time Control Barrier Functions
Abstract
When deployed in the real world, safe control methods must be robust to unstructured uncertainties such as modeling error and external disturbances. Typical robust safety methods achieve their guarantees by always assuming that the worst-case disturbance will occur. In contrast, this paper utilizes Freedman’s inequality in the context of discrete-time control barrier functions (DTCBFs) and c-martingales to provide stronger (less conservative) safety guarantees for stochastic systems. Our approach accounts for the underlying disturbance distribution instead of relying exclusively on its worst-case bound and does not require the barrier function to be upper-bounded, which makes the resulting safety probability bounds more useful for intuitive safety constraints such as signed distance. We compare our results with existing safety guarantees, such as input-to-state safety (ISSf) and martingale results that rely on Ville’s inequality. When the assumptions for all methods hold, we provide a range of parameters for which our guarantee is stronger. Finally, we present simulation examples, including a bipedal walking robot, that demonstrate the utility and tightness of our safety guarantee.
Copyright and License
© 2024 IEEE.
Acknowledgement
This work was supported by BP and NSF CPS Award #1932091.
Files
Bounding_Stochastic_Safety_Leveraging_Freedmans_Inequality_with_Discrete-Time_Control_Barrier_Functions.pdf
Files
(3.2 MB)
Name | Size | Download all |
---|---|---|
md5:abbd4ce3c410386a1e54398db50764c9
|
3.2 MB | Preview Download |
Additional details
- BP (United States)
- National Science Foundation
- CNS-1932091