4.1 Article

Safe Motion Planning Against Multimodal Distributions Based on a Scenario Approach

Journal

IEEE CONTROL SYSTEMS LETTERS
Volume 6, Issue -, Pages 1142-1147

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/LCSYS.2021.3089641

Keywords

Planning; Uncertainty; Forecasting; Trajectory; Safety; Gaussian distribution; Autonomous vehicles; Stochastic optimal control; autonomous vehicles

Funding

  1. National Science and Engineering Research Council of Canada (NSERC) [RGPIN-2017-04543, RGPAS-202000110]

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The algorithm presents a motion planning approach that ensures safety for autonomous vehicles. By considering a multimodal distribution over uncertainties, it effectively handles discrete decisions in trajectory predictions and offers a computationally efficient solution. The approach demonstrates high safety probability and efficiency compared to conventional methods in simulations.
We present the design of a motion planning algorithm that ensures safety for an autonomous vehicle. In particular, we consider a multimodal distribution over uncertainties; for example, the uncertain predictions of future trajectories of surrounding vehicles reflect discrete decisions, such as turning or going straight at intersections. We develop a computationally efficient, scenario-based approach that solves the motion planning problem with high confidence given a quantifiable number of samples from the multimodal distribution. Our approach is based on two preprocessing steps, which 1) separate the samples into distinct clusters and 2) compute a bounding polytope for each cluster. Then, we rewrite the motion planning problem approximately as a mixed-integer problem using the polytopes. We demonstrate via simulation on the nuScenes dataset that our approach ensures safety with high probability in the presence of multimodal uncertainties, and is computationally more efficient and less conservative than a conventional scenario approach.

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