Sharing trajectories of autonomous driving vehicles to achieve time-efficient path navigation

Pei-Jin He, K. Ssu, Yu-Yuan Lin
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引用次数: 14

Abstract

Traffic congestion arises to be a very serious problem especially in metropolitan cities nowadays. Drivers need to spend more time to their destinations. In this paper, a dynamic navigation protocol, called STN, is proposed to search for time-efficient paths for autonomous driving vehicles toward their given destinations. The trajectory information of vehicles is maintained in a server to assist the planning of navigation path. With STN, a vehicle sending a request message toward the nearest access point (AP) to acquire the driving path. By comparing the trajectories and time information in the system, the future traffic load can be predicted. The traffic load information enables the server to estimate driving speed within different paths toward the destination and then determines a time-efficient path. In addition, adjustment, update, and replan mechanisms are developed to reduce the deviation of prediction. To evaluate the performance of STN, the real road map of Shalu, Taiwan, including 20 road segments, is used. The simulator Estinet, formerly known as NCTUns (National Chiao Tung University Network Simulation) has been used for the validation of STN. The simulator integrates some traffic simulation capabilities, such as road network construction and vehicles mobility control, in the recent version. The simulation results demonstrate that STN saves around 14% driving time as compared with Vehicle-Assisted Shortest-Time Path Navigation (VAN).
共享自动驾驶车辆的轨迹,实现时间高效的路径导航
交通拥堵已成为一个非常严重的问题,尤其是在大城市。司机需要花更多的时间到达目的地。本文提出了一种动态导航协议,称为STN,用于为自动驾驶车辆寻找通往给定目的地的时间有效路径。车辆轨迹信息保存在服务器中,辅助导航路径规划。使用STN,车辆向最近的接入点(AP)发送请求消息以获取行驶路径。通过比较系统中的轨迹和时间信息,可以预测未来的交通负荷。交通负载信息使服务器能够估计通往目的地的不同路径的行驶速度,然后确定一条时间有效的路径。此外,还建立了调整、更新和重新规划机制,以减少预测偏差。为了评价STN的性能,我们使用了台湾沙鲁的真实路线图,包括20个路段。仿真器Estinet(以前称为NCTUns(国立交通大学网络仿真))已被用于STN的验证。该模拟器在最新版本中集成了一些交通模拟功能,如道路网络构建和车辆移动控制。仿真结果表明,与车辆辅助最短时间路径导航(VAN)相比,STN可节省14%左右的驾驶时间。
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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