Jiang Yi, Zhu Jinlin, Yang Kexin
Department of Communications Engineering, Harbin University of Science and Technology, Harbin 150080, China.
Sensors (Basel). 2023 Dec 20;24(1):40. doi: 10.3390/s24010040.
With the rapid development of the intelligent transportation system (ITS), routing in vehicular ad hoc networks (VANETs) has become a popular research topic. The high mobility of vehicles in urban streets poses serious challenges to routing protocols and has a significant impact on network performance. Existing topology-based routing is not suitable for highly dynamic VANETs, thereby making location-based routing protocols the preferred choice due to their scalability. However, the working environment of VANETs is complex and interference-prone. In wireless-network communication, the channel contention introduced by the high density of vehicles, coupled with urban structures, significantly increases the difficulty of designing high-quality communication protocols. In this context, compared to topology-based routing protocols, location-based geographic routing is widely employed in VANETs due to its avoidance of the route construction and maintenance phases. Considering the characteristics of VANETs, this paper proposes a novel environment-aware adaptive reinforcement routing (EARR) protocol aimed at establishing reliable connections between source and destination nodes. The protocol adopts periodic beacons to perceive and explore the surrounding environment, thereby constructing a local topology. By applying reinforcement learning to the vehicle network's route selection, it adaptively adjusts the Q table through the perception of multiple metrics from beacons, including vehicle speed, available bandwidth, signal-reception strength, etc., thereby assisting the selection of relay vehicles and alleviating the challenges posed by the high dynamics, shadow fading, and limited bandwidth in VANETs. The combination of reinforcement learning and beacons accelerates the establishment of end-to-end routes, thereby guiding each vehicle to choose the optimal next hop and forming suboptimal routes throughout the entire communication process. The adaptive adjustment feature of the protocol enables it to address sudden link interruptions, thereby enhancing communication reliability. In experiments, the EARR protocol demonstrates significant improvements across various performance metrics compared to existing routing protocols. Throughout the simulation process, the EARR protocol maintains a consistently high packet-delivery rate and throughput compared to other protocols, as well as demonstrates stable performance across various scenarios. Finally, the proposed protocol demonstrates relatively consistent standardized latency and low overhead in all experiments.
随着智能交通系统(ITS)的快速发展,车载自组织网络(VANETs)中的路由已成为一个热门研究课题。城市街道上车辆的高机动性给路由协议带来了严峻挑战,并对网络性能产生重大影响。现有的基于拓扑的路由不适用于高度动态的VANETs,因此基于位置的路由协议因其可扩展性而成为首选。然而,VANETs的工作环境复杂且容易受到干扰。在无线网络通信中,车辆的高密度以及城市结构所引入的信道争用显著增加了设计高质量通信协议的难度。在这种背景下,与基于拓扑的路由协议相比,基于位置的地理路由由于避免了路由构建和维护阶段而在VANETs中得到广泛应用。考虑到VANETs的特性,本文提出了一种新颖的环境感知自适应强化路由(EARR)协议,旨在在源节点和目的节点之间建立可靠连接。该协议采用周期性信标来感知和探索周围环境,从而构建局部拓扑。通过将强化学习应用于车辆网络的路由选择,它通过对来自信标的多个指标(包括车速、可用带宽、信号接收强度等)的感知来自适应调整Q表,从而辅助中继车辆的选择,并缓解VANETs中高动态性、阴影衰落和有限带宽所带来的挑战。强化学习与信标的结合加速了端到端路由的建立,从而引导每辆车选择最优的下一跳,并在整个通信过程中形成次优路由。该协议的自适应调整特性使其能够应对突发的链路中断,从而提高通信可靠性。在实验中,与现有路由协议相比,EARR协议在各种性能指标上都有显著提升。在整个模拟过程中,EARR协议与其他协议相比保持了始终较高的分组投递率和吞吐量,并且在各种场景下都表现出稳定的性能。最后,所提出的协议在所有实验中都表现出相对一致的标准化延迟和低开销。