College of Automotive and Mechanical Engineering, Changsha University of Science & Technology, Changsha 410114, China.
Hunan Key Laboratory of Smart Roadway and Cooperative Vehicle-Infrastructure Systems, Changsha 410114, China.
Sensors (Basel). 2019 Sep 27;19(19):4199. doi: 10.3390/s19194199.
Car-following is an essential trajectory control strategy for the autonomous vehicle, which not only improves traffic efficiency, but also reduces fuel consumption and emissions. However, the prediction of lane change intentions in adjacent lanes is problematic, and will significantly affect the car-following control of the autonomous vehicle, especially when the vehicle changing lanes is only a connected unintelligent vehicle without expensive and accurate sensors. Autonomous vehicles suffer from adjacent vehicles' abrupt lane changes, which may reduce ride comfort and increase energy consumption, and even lead to a collision. A machine learning-based lane change intention prediction and real time autonomous vehicle controller is proposed to respond to this problem. First, an interval-based support vector machine is designed to predict the vehicles' lane change intention utilizing limited low-level vehicle status through vehicle-to-vehicle communication. Then, a conditional artificial potential field method is used to design the car-following controller by incorporating the lane-change intentions of the vehicle. Experimental results reveal that the proposed method can estimate a vehicle's lane change intention more accurately. The autonomous vehicle avoids collisions with a lane-changing connected unintelligent vehicle with reliable safety and favorable dynamic performance.
跟车是自动驾驶车辆的基本轨迹控制策略,它不仅可以提高交通效率,还可以降低燃料消耗和排放。然而,对相邻车道的变道意图的预测是一个问题,这将显著影响自动驾驶车辆的跟车控制,特别是当变道车辆仅是没有昂贵且准确传感器的连接式非智能车辆时。自动驾驶车辆会受到相邻车辆突然变道的影响,这可能会降低乘坐舒适性并增加能源消耗,甚至导致碰撞。为了解决这个问题,提出了一种基于机器学习的变道意图预测和实时自动驾驶车辆控制器。首先,通过车对车通信,利用有限的低级别车辆状态,设计了基于区间的支持向量机来预测车辆的变道意图。然后,通过结合车辆的变道意图,使用条件人工势场方法来设计跟车控制器。实验结果表明,所提出的方法可以更准确地估计车辆的变道意图。自动驾驶车辆可以可靠地避免与变道连接式非智能车辆发生碰撞,并具有良好的动态性能。