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Risk-Aware Lane Selection on Highway with Dynamic Obstacles

2021-04-08 22:54:27
Sangjae Bae, David Isele, Kikuo Fujimura, Scott J. Moura

Abstract

This paper proposes a discretionary lane selection algorithm. In particular, highway driving is considered as a targeted scenario, where each lane has a different level of traffic flow. When lane-changing is discretionary, it is advised not to change lanes unless highly beneficial, e.g., reducing travel time significantly or securing higher safety. Evaluating such "benefit" is a challenge, along with multiple surrounding vehicles in dynamic speed and heading with uncertainty. We propose a real-time lane-selection algorithm with careful cost considerations and with modularity in design. The algorithm is a search-based optimization method that evaluates uncertain dynamic positions of other vehicles under a continuous time and space domain. For demonstration, we incorporate a state-of-the-art motion planner framework (Neural Networks integrated Model Predictive Control) under a CARLA simulation environment.

Abstract (translated)

URL

https://arxiv.org/abs/2104.04105

PDF

https://arxiv.org/pdf/2104.04105.pdf


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