A Q-learning Foresighted Approach to Ego-efficient Lane Changes of Connected and Automated Vehicles on Freeways

Long Wang, Fangmin Ye, Yibing Wang, Jingqiu Guo, I. Papamichail, M. Papageorgiou, Simon Hu, Lihui Zhang
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引用次数: 10

Abstract

Lane changes are a vital part of vehicle motions on roads, affecting surrounding vehicles locally and traffic flow collectively. In the context of connected and automated vehicles (CAVs), this paper is concerned with the impacts of smart lane changes of CAVs on their own travel performance as well as on the entire traffic flow with the increase of the market penetration rate (MPR). On the basis of intensive microscopic traffic simulation and reinforcement learning technique, an ego-efficient lane-changing strategy was first developed in this work to enable foresighted lane changing decisions for CAVs to improve their travel efficiency. The overall impacts of such smart lane changes on traffic flow of both CAVs and human-driven vehicles were then examined on the same simulation platform, which reflects a real freeway infrastructure with real demands. It was found that smart lane changes were beneficial for both CAVs and the entire traffic flow, if MPR was not more than 60%.
高速公路网联与自动驾驶车辆自我高效变道的q -学习预见方法
变道是车辆在道路上运动的重要组成部分,局部影响周围车辆,整体影响交通流。本文以网联自动驾驶汽车为背景,研究随着市场渗透率(MPR)的提高,自动驾驶汽车智能变道对其自身行驶性能以及整个交通流的影响。基于密集的微观交通模拟和强化学习技术,本文首次提出了一种自我高效变道策略,使自动驾驶汽车的前瞻性变道决策能够提高其行驶效率。这样聪明的总体影响车道交通流变化的骑士和人为车辆被检查在同一仿真平台,它反映真正的高速公路基础设施与实际的要求。研究发现,当MPR不大于60%时,智能变道对自动驾驶汽车和整个交通流都是有利的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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