Vehicle-to-everything communication system is a strong candidate for improving the driving experience and automotive safety by linking vehicles to wireless networks. To take advantage of the full benefits of vehicle connectivity, it is essential to ensure a stable network connection between roadside unit (RSU) and fast-moving vehicles. Based on the extended Kalman filter (EKF), we develop a vehicle tracking algorithm to enable reliable radio connections. For the vehicle tracking algorithm, we focus on estimating the rapid changes in the beam direction of a high-mobility vehicle while reducing the feedback overhead. Furthermore, we design a beamforming codebook that considers the road layout and RSU. By leveraging the proposed beamforming codebook, vehicles on the road can expect a service quality similar to that of conventional cellular services. Finally, a beamformer selection algorithm is developed to secure sufficient gain for the system's link budget. Numerical results verify that the EKF-based vehicle tracking algorithm and the proposed beamforming structure are more suitable for vehicle-to-infrastructure networks compared to existing schemes.
翻译:通过将车辆与无线网络连接,车辆对一切的通信系统是改善驾驶经验和汽车安全的强有力候选系统。为了充分利用车辆连通性的好处,必须确保路边单位(RSU)和快速移动车辆之间的网络连接稳定。基于扩大的卡尔曼过滤器(EKF),我们开发了车辆跟踪算法,以便能够建立可靠的无线电连接。对于车辆跟踪算法,我们侧重于估算高机动车辆的波束方向的迅速变化,同时减少反馈管理。此外,我们设计了一本考虑到道路布局和RSU的波形代码手册。通过利用拟议的波形设计代码手册,公路上的车辆可以期望达到与传统蜂窝服务类似的服务质量。最后,正在开发一种直线选择算法,以确保系统连接预算获得足够的收益。数字结果证实,与现有计划相比,基于EKF的车辆跟踪算法和拟议成型结构更适合车辆对基础设施的网络。