Published June 8, 2022
| Accepted Version + Submitted
Journal Article
Open
Moving Obstacle Avoidance: a Data-Driven Risk-Aware Approach
Chicago
Abstract
This letter proposes a new structured method for a moving agent to predict the paths of dynamically moving obstacles and avoid them using a risk-aware model predictive control (MPC) scheme. Given noisy measurements of the a priori unknown obstacle trajectory, a bootstrapping technique predicts a set of obstacle trajectories. The bootstrapped predictions are incorporated in the MPC optimization using a risk-aware methodology so as to provide probabilistic guarantees on obstacle avoidance. We validate our methods using simulations of a multi-rotor drone that avoids various moving obstacles.
Additional Information
© 2022 IEEE. Manuscript received 21 March 2022; revised 21 May 2022; accepted 24 May 2022. Date of publication 8 June 2022; date of current version 15 July 2022. Recommended by Senior Editor V. Ugrinovskii.Attached Files
Accepted Version - Moving_Obstacle_Avoidance_a_Data-Driven_Risk-Aware_Approach.pdf
Submitted - 2203.14913.pdf
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2203.14913.pdf
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Additional details
- Eprint ID
- 115146
- Resolver ID
- CaltechAUTHORS:20220614-222127000
- Created
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2022-06-14Created from EPrint's datestamp field
- Updated
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2022-08-02Created from EPrint's last_modified field