TR2022-062
Multi-stage Perception-aware Chance-constrained MPC with Applications to Automated Driving
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- "Multi-stage Perception-aware Chance-constrained MPC with Applications to Automated Driving", American Control Conference (ACC), DOI: 10.23919/ACC53348.2022.9867264, June 2022.BibTeX TR2022-062 PDF
- @inproceedings{Bonzanini2022jun,
- author = {Bonzanini, Angelo Domenico and Mesbah, Ali and Di Cairano, Stefano},
- title = {Multi-stage Perception-aware Chance-constrained MPC with Applications to Automated Driving},
- booktitle = {American Control Conference (ACC)},
- year = 2022,
- month = jun,
- doi = {10.23919/ACC53348.2022.9867264},
- url = {https://www.merl.com/publications/TR2022-062}
- }
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- "Multi-stage Perception-aware Chance-constrained MPC with Applications to Automated Driving", American Control Conference (ACC), DOI: 10.23919/ACC53348.2022.9867264, June 2022.
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Abstract:
Perception-aware Chance-constrained Model Pre- dictive Control (PAC-MPC) accounts for the interdependence between perception and control for systems operating in uncer- tain environments. The environment is discovered by percep- tion, which imposes chance constraints on system operation. PAC-MPC can handle a perception quality that depends on the system states and/or inputs, thus affecting uncertainty quantification in the chance constraints. In this paper, we extend PAC-MPC by introducing a scenario-based prediction for future measurements, so that the resulting multi-stage PAC-MPC does not require a conservative estimate of the measurement prediction error covariance. We demonstrate PAC-MPC for automated vehicle control when obstacles and road boundaries are uncertain and perceived by variable precision sensors subject to an overall sensing budget and when the scenarios are generated based on possible obstacle behaviors
Related News & Events
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NEWS MERL researchers presented 9 papers at the American Control Conference (ACC) Date: June 8, 2022 - June 10, 2022
Where: Atlanta, GA
MERL Contacts: Scott A. Bortoff; Ankush Chakrabarty; Stefano Di Cairano; Christopher R. Laughman; Abraham P. Vinod; Avishai Weiss
Research Areas: Control, Machine Learning, OptimizationBrief- At the American Control Conference in Atlanta, GA, MERL presented 9 papers on subjects including autonomous-vehicle decision making and motion planning, realtime Bayesian inference and learning, reference governors for hybrid systems, Bayesian optimization, and nonlinear control.