Rate-Splitting Multiple Access (RSMA) has recently found favour in the multi-antenna-aided wireless downlink, as a benefit of relaxing the accuracy of Channel State Information at the Transmitter (CSIT), while in achieving high spectral efficiency and providing security guarantees. These benefits are particularly important in high-velocity vehicular platoons since their high Doppler affects the estimation accuracy of the CSIT. To tackle this challenge, we propose an RSMA-based Internet of Vehicles (IoV) solution that jointly considers platoon control and FEderated Edge Learning (FEEL) in the downlink. Specifically, the proposed framework is designed for transmitting the unicast control messages within the IoV platoon, as well as for privacy-preserving FEEL-aided downlink Non-Orthogonal Unicasting and Multicasting (NOUM). Given this sophisticated framework, a multi-objective optimization problem is formulated to minimize both the latency of the FEEL downlink and the deviation of the vehicles within the platoon. To efficiently solve this problem, a Block Coordinate Descent (BCD) framework is developed for decoupling the main multi-objective problem into two sub-problems. Then, for solving these non-convex sub-problems, a Successive Convex Approximation (SCA) and Model Predictive Control (MPC) method is developed for solving the FEEL-based downlink problem and platoon control problem, respectively. Our simulation results show that the proposed RSMA-based IoV system outperforms the conventional systems.
翻译:快速跳动多功能访问(RSMA)最近发现多安纳辅助的无线下链路(RSMA)在多安纳辅助型多功能访问(RSMA)中有所偏好,这有利于降低传输器频道国家信息的准确性,同时也有利于实现高光谱效率和提供安全保障。这些好处在高高速车辆排中特别重要,因为高多普勒会影响CSIT的估计准确性。为了应对这一挑战,我们提议了一个基于RSMA的车辆互联网解决方案(IOV),该解决方案在下链接中共同考虑排控制和FEEEL(FEEL ) 。具体地说,拟议框架的目的是在IOV 排中传输频道国家信息的准确性,以及提供高光频光谱和低频连接的保密性低功能访问。鉴于这个复杂的框架,我们制定了一个多目标优化问题解决方案,以尽量减少基于感觉的下行链路和基于车辆的偏差。为了高效解决这一问题,BCD(BCD)一个屏蔽的直流(BROD)框架旨在在IVVVVD模块中传输自动解解析系统。