Learning a robust multiagent driving policy for traffic congestion reduction


연구 분야: Strategies



학회: Neural Computing and Applications


초록

In most modern cities, traffic congestion is one of the most salient societal challenges. Past research has shown that inserting a limited number of autonomous vehicles (AVs) within the traffic flow, with driving policies learned specifically for the purpose of reducing congestion, can significantly improve traffic conditions. However, to date, these AV policies have generally been evaluated under the same limited conditions under which they were trained. On the other hand, to be considered for practical deployment, they must be robust to a wide variety of traffic conditions. This article establishes for the first time that a multiagent driving policy can be trained in such a way that it generalizes to different traffic flows, AV penetration, and road geometries, including on multilane roads. Inspired by our successful results in a high-fidelity microsimulation, this article further contributes a novel extension of the well-known cell transmission model (CTM) that, unlike the past CTMs, is suitable for modeling congestion in traffic networks, and is thus suitable for studying congestion reduction policies such as those considered in this article.


Author Profile
Yulin Zhang

Amazon Robotics 300 Riverpark Dr. North Reading 01864 Massachusetts USA

United States
Author Profile
William Macke

Department of Computer Science The University of Texas at Austin 2317 Speedway Austin 78712 Texas USA

Austria
Author Profile
Jiaxun Cui

Department of Computer Science The University of Texas at Austin 2317 Speedway Austin 78712 Texas USA

Austria

📄 논문 정보

발행 연도 2023년
인용수 0
출판 국가 Israel, United States, Austria
사이트 Springer
좋아요 수 0

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