Cooperative Reinforcement Learning Based Adaptive Resource Allocation in V2V Communication

Sandeepika Sharma, Brahmjit Singh
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引用次数: 14

Abstract

Platooning is one of the key applications of Intelligent Transportation System (ITS) for the smart cities. Various wireless technologies have been proposed for meeting the stringent requirements of platooning. 3GPP has initiated standardization work for LTE based V2V communication. It offers potential means to support transmission of safety critical messages among platoon vehicles with high reliability, security and ultra low latency. However, efficient resource allocation has been a challenge in LTE based networks. In this paper, we propose a Cooperative-Reinforcement Learning (C-RL) based resource selection algorithm for communication among connected vehicles utilizing LTE-Direct technology. The proposal outperforms the distributed resource selection scheme in terms of actual time required for Cooperative Awareness Messages (CAM) dissemination among vehicles forming the platoon and performance of other vehicular links sharing the similar Resource Blocks (RBs). Simulation results shows the efficacy of the proposed algorithm in terms of efficient resource utilization and faster dissemination of messages among the connected vehicles.
基于协作强化学习的V2V通信自适应资源分配
队列是智能交通系统在智慧城市中的关键应用之一。为了满足队列的严格要求,已经提出了各种无线技术。3GPP已经启动了基于LTE的V2V通信标准化工作。它提供了一种潜在的手段,支持在排车之间传输具有高可靠性、安全性和超低延迟的安全关键信息。然而,在基于LTE的网络中,有效的资源分配一直是一个挑战。在本文中,我们提出了一种基于合作强化学习(C-RL)的资源选择算法,用于使用LTE-Direct技术的互联车辆之间的通信。该方案在组成队列的车辆之间传播协同感知消息(CAM)所需的实际时间和共享类似资源块(RBs)的其他车辆链路的性能方面优于分布式资源选择方案。仿真结果表明,该算法在有效利用资源和更快地在互联车辆之间传播信息方面是有效的。
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