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  4. Recursively Feasible Chance-Constrained Model Predictive Control Under Gaussian Mixture Model Uncertainty
 
research article

Recursively Feasible Chance-Constrained Model Predictive Control Under Gaussian Mixture Model Uncertainty

Ren, Kai  
•
Chen, Colin
•
Sung, Hyeontae
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November 6, 2024
IEEE Transactions on Control Systems Technology

We present a chance-constrained model predictive control (MPC) framework under Gaussian mixture model (GMM) uncertainty. Specifically, we consider the uncertainty that arises from predicting future behaviors of moving obstacles, which may exhibit multiple modes (for example, turning left or right). To address multimodal uncertainty distribution, we propose three MPC formulations: nominal chance-constrained planning, robust chance-constrained planning, and contingency planning. We prove that closed-loop trajectories generated by the three planners are safe. The approaches differ in conservativeness and performance guarantee. In particular, the robust chance-constrained planner is recursively feasible under certain assumptions on the propagation of prediction uncertainty. On the other hand, the contingency planner generates a less conservative closed-loop trajectory than the nominal planner. We validate our planners using state-of-the-art trajectory prediction algorithms in autonomous driving simulators.

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Type
research article
DOI
10.1109/TCST.2024.3477089
Author(s)
Ren, Kai  

EPFL

Chen, Colin
Sung, Hyeontae
Ahn, Heejin
Mitchell, Ian M.
Kamgarpour, Maryam  

EPFL

Date Issued

2024-11-06

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Published in
IEEE Transactions on Control Systems Technology
Start page

1

End page

14

Subjects

Autonomous vehicles

•

stochastic optimal control

•

trajectory planning

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
SYCAMORE  
Available on Infoscience
December 19, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/242391
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