论文标题
使用太空加权信息融合和基于深度强化学习的控制来促进连接的自动驾驶汽车操作
Facilitating Connected Autonomous Vehicle Operations Using Space-weighted Information Fusion and Deep Reinforcement Learning Based Control
论文作者
论文摘要
连接的自动驾驶汽车(CAV)的连通性方面是有益的,因为它可以通过车辆到外部(V2X)通信将与交通相关的信息传播给车辆。包括LiDAR和相机在内的板载传感设备可以合理地表征CAV直接位置的交通环境。但是,他们的性能受到传感器范围(SR)的限制。另一方面,较长的信息有助于表征下游的即将发生的条件。通过同时合并短期和长期信息,骑士可以全面构建其周围环境,从而在短期(包括车道变更)和长期(路线选择)中促进知情,安全和有效的运动计划。在本文中,我们描述了一种基于强化的学习方法,该方法通过来自CAV接近的其他车辆以及位于更下游的其他车辆的传感和连接功能来整合收集的数据,我们使用融合数据来指导车道更改,这是CAV操作的特定环境。此外,该论文认识到连通性范围(CR)不仅对算法,而且在实际驾驶环境中车辆的性能的重要性,该论文进行了案例研究。该案例研究证明了所提出的算法的应用,并适当地识别了每个流量密度的适当CR。可以预期,在CAVS中实施算法可以增强与CAV驾驶操作相关的安全性和移动性。从一般的角度来看,其实施可以为连接设备制造商和CAV运营商提供有关CAVS的默认CR设置或在给定的交通环境中推荐的CR设置的指导。
The connectivity aspect of connected autonomous vehicles (CAV) is beneficial because it facilitates dissemination of traffic-related information to vehicles through Vehicle-to-External (V2X) communication. Onboard sensing equipment including LiDAR and camera can reasonably characterize the traffic environment in the immediate locality of the CAV. However, their performance is limited by their sensor range (SR). On the other hand, longer-range information is helpful for characterizing imminent conditions downstream. By contemporaneously coalescing the short- and long-range information, the CAV can construct comprehensively its surrounding environment and thereby facilitate informed, safe, and effective movement planning in the short-term (local decisions including lane change) and long-term (route choice). In this paper, we describe a Deep Reinforcement Learning based approach that integrates the data collected through sensing and connectivity capabilities from other vehicles located in the proximity of the CAV and from those located further downstream, and we use the fused data to guide lane changing, a specific context of CAV operations. In addition, recognizing the importance of the connectivity range (CR) to the performance of not only the algorithm but also of the vehicle in the actual driving environment, the paper carried out a case study. The case study demonstrates the application of the proposed algorithm and duly identifies the appropriate CR for each level of prevailing traffic density. It is expected that implementation of the algorithm in CAVs can enhance the safety and mobility associated with CAV driving operations. From a general perspective, its implementation can provide guidance to connectivity equipment manufacturers and CAV operators, regarding the default CR settings for CAVs or the recommended CR setting in a given traffic environment.