This paper presents a novel energy-efficient motion planning algorithm for Connected Autonomous Vehicles (CAVs) on urban roads. The approach consists of two components: a decision-making algorithm and an optimization-based trajectory planner. The decision-making algorithm leverages Signal Phase and Timing (SPaT) information from connected traffic lights to select a lane with the aim of reducing energy consumption. The algorithm is based on a heuristic rule which is learned from human driving data. The optimization-based trajectory planner generates a safe, smooth, and energy-efficient trajectory toward the selected lane. The proposed strategy is experimentally evaluated in a Vehicle-in-the-Loop (VIL) setting, where a real test vehicle receives SPaT information from both actual and virtual traffic lights and autonomously drives on a testing site, while the surrounding vehicles are simulated. The results demonstrate that the use of SPaT information in autonomous driving leads to improved energy efficiency, with the proposed strategy saving 37.1% energy consumption compared to a lane-keeping algorithm.
翻译:这篇论文提出了一种新颖的城市道路上连接自动化车辆能源高效运动规划算法。该方法由两部分组成:决策算法和基于优化的轨迹规划器。决策算法利用来自连接路灯的信号相位和定时(SPaT)信息选择车道,以达到降低能源消耗的目的。该算法基于从人类驾驶数据中学习的启发式规则。基于优化的轨迹规划器会生成一条安全,平滑和能源高效的轨迹,朝着所选车道行驶。所提出的策略在车辆在环(Vehicle-in-the-Loop,VIL)实验环境中进行了实验评估,其中实际和虚拟路灯向真实测试车辆提供SPaT信息,并在模拟环境中行驶。结果表明,自动驾驶中使用SPaT信息可以提高能源效率,所提出的策略比车道保持算法节省了37.1%的能源消耗。