基于 V2X 的智能网联汽车速度预测控制系统研究

Aijuan Li, Chuanhu Niu, Xueyong Sun, Yuanshuai Jiang, Gang Liu
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引用次数: 0

摘要

为提高城市道路交通效率,减少红绿灯等待时间,本文提出了一种基于 V2X 的智能网联汽车速度预测控制方法。首先,本文利用 PreScan 建立了基于 V2X 通信技术的智能网络环境模型。然后,对 V2X 传输的交通信号和目标车辆信息进行分析和处理,从而设计出智能网联汽车速度预测控制系统。最后,使用 HIL 对传统车辆速度决策控制系统和基于 V2X 的智能互联车辆速度预测控制系统在各种运行条件下进行了对比实验。实验结果表明,所提出的车速预测控制系统可以减少交通信号灯的等待时间,提高道路交通效率。因此,本文设计的车速预测控制系统既有效又可行,为未来智能网联汽车车速决策控制研究提供了参考。
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Research on speed predictive control system of intelligent connected vehicle based on V2X
To enhance the efficiency of urban road traffic and reduce waiting time at traffic lights, this paper proposes a V2X based speed prediction control method for intelligent connected vehicles. Firstly, this paper uses PreScan to build an intelligent network environment model based on V2X communication technology. Then, the traffic signal and target vehicle information transmitted by V2X are analyzed and processed, leading to the design of an intelligent connected vehicle speed prediction control system. Finally, comparative experiments were conducted using HIL between the conventional vehicle speed decision control system and the V2X-based intelligent connected vehicle speed prediction control system under various operating conditions. The experimental results demonstrate that the proposed speed prediction control system can reduce waiting time for traffic lights and enhance road traffic efficiency. Therefore, this paper’s designed speed prediction control system is both effective and feasible, providing a reference for future research on intelligent connected vehicle speed decision control.
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