working paper
Manifold Learning and Optimal Control for Obstacle Avoidance in Autonomous Driving
2019
A novel manifold learning approach is presented to incorporate computationally efficient obstacle avoidance constraints in optimal control algorithms. The method presented provides a significant computational benefit by reducing the number of constraints required to avoid N obstacles from linear complexity O(N) in traditional obstacle avoidance methods to a constant complexity O(1). The application to autonomous driving problems is demonstrated by incorporation of the manifold constraints into optimal trajectory planning and tracking model predictive control algorithms in the presence of static and dynamic obstacles.
Type
working paper
Author(s)
Date Issued
2019
Editorial or Peer reviewed
REVIEWED
Written at
EPFL
EPFL units
Available on Infoscience
April 29, 2019
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