论文标题
QoS评估和预测商业上部署的LTE和移动边缘网络中的C-V2X通信
QoS Evaluation and Prediction for C-V2X Communication in Commercially-Deployed LTE and Mobile Edge Networks
论文作者
论文摘要
蜂窝车辆到所有(C-V2X)通信是未来合作自动驾驶和与安全相关的应用程序的关键推动力。他们在服务质量(QOS)性能方面要求的要求根据用例而有所不同。例如,与远程驾驶相比,诸如紧急制动灯警告之类的第1天应用程序的严格要求较小。在本文中,我们试图回答两个问题:当前的LTE网络是否准备始终支持Day-1应用程序?而且,是否可以根据GP和与网络相关的信息可靠地预测表现不佳的情况?为了解决这些问题,我们首先实施一个系统,该系统比商业现成的LTE调制解调器收集定位数据和LTE关键性能指标(KPI),同时衡量LTE网络的端到端(E2E)延迟。然后,我们使用该系统来评估多个移动网络运营商(MNOS)和在城市场景中的实时移动边缘计算(MEC)部署的准备。为了评估在不利情况下是否可以进行适应性操作,例如,通过执行混合网络或优雅的退化,我们最终使用机器学习来生成基于客户端的QoS预测指标并预测可实现的QoS级别。
Cellular vehicle-to-everything (C-V2X) communication is a key enabler for future cooperative automated driving and safety-related applications. The requirements they demand in terms of Quality of Service (QoS) performance vary according to the use case. For instance, Day-1 applications such as Emergency Brake Light warning have less strict requirements than remote driving. In this paper, we seek to answer two questions: Are current LTE networks ready to support Day-1 applications at all times? And, can underperforming situations be reliably predicted based on GPS and network-related information? To address these questions, we first implement a system that collects positioning data and LTE key performance indicators (KPIs) with a higher time resolution than commercial off-the-shelf LTE modems, while simultaneously measuring the end-to-end (E2E) delay of an LTE network. We then use this system to assess the readiness of multiple mobile network operators (MNOs) and a live Mobile Edge Computing (MEC) deployment in an urban scenario. For evaluating whether an adaptable operation is possible in adverse circumstances, e.g., by performing hybrid networking or graceful degradation, we finally use Machine Learning to generate a client-based QoS predictor and forecast the achievable QoS levels.