基于传感器辅助毫米波通信的协同驾驶信号设计

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Open Journal of Intelligent Transportation Systems Pub Date : 2023-06-21 DOI:10.1109/OJITS.2023.3288396
Giovanni Ciaramitaro;Mattia Brambilla;Monica Nicoli;Umberto Spagnolini
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引用次数: 1

摘要

毫米波(mmWave)车对车(V2V)通信是联网和自动化车辆的关键推动者,因为它们支持控制信号和高分辨率成像数据的低延迟交换,以进行机动协调。毫米波V2V通信的使用要求波束对准和跟踪(BAT)程序,以确保天线波束在运动过程中得到正确引导。已知传统的波束扫描方法不适合高车辆机动性,并且其大的开销降低了传输效率。减少BAT信号的一个有前景的解决方案是将V2V通信系统与车载传感器集成。我们专注于用于毫米波V2V视距通信的协作传感器辅助架构,其中车辆交换天线位置及其不确定性的估计,以计算最佳波束方向和尺寸。我们分析并比较了用于共享天线估计信息的不同信令策略,评估了不同位置和不确定性编码策略的信令开销和性能损失之间的折衷。主要关注天线位置和不确定性的差分量化。对现实城市移动轨迹的分析表明,差分方法引入了可忽略的性能损失,同时显著降低了BAT信令通信开销。
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Signalling Design in Sensor-Assisted mmWave Communications for Cooperative Driving
Millimeter-Wave (mmWave) Vehicle-To-Vehicle (V2V) communications are a key enabler for connected and automated vehicles, as they support the low-latency exchange of control signals and high-resolution imaging data for maneuvering coordination. The employment of mmWave V2V communications calls for Beam Alignment and Tracking (BAT) procedures to ensure that the antenna beams are properly steered during motion. The conventional beam sweeping approach is known to be unsuited for the high vehicular mobility and its large overhead reduces transmission efficiency. A promising solution to reduce BAT signalling foresees the integration of V2V communication systems with on-board vehicle sensors. We focus on a cooperative sensor-assisted architecture for mmWave V2V communications in line of sight, where vehicles exchange the estimate of antenna position and its uncertainty to compute the optimal beam direction and dimension. We analyze and compare different signalling strategies for sharing the information on the antenna estimate, evaluating the tradeoff between signalling overhead and performance loss for different position and uncertainty encoding strategies. Main attention is given to differential quantization on both the antenna position and uncertainty. Analyses over realistic urban mobility trajectories suggest that differential approaches introduce a negligible performance loss while significantly reducing the BAT signalling communication overhead.
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