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Semi-Persistent Resource Allocation Based on Traffic Prediction for Vehicular Communications

机译:基于流量预测的车辆通信的半持久资源分配

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摘要

In cellular vehicular communications, high density and mobility of vehicles require frequent resource allocation, which can cause network congestion and large signalling and processing delay. To overcome this problem, we propose a novel semi-persistent resource allocation scheme based on a two-tier heterogeneous network architecture. The architecture includes a central macro base station (MBS) and multiple roadside units (RSU). In the proposed semi-persistent scheme, the MBS pre-allocates persistent resource to RSUs based on predicted traffic, and then allocates dynamic resource upon real-time requests from RSUs while vehicles simultaneously communicate using the pre-allocated resource. A simple Space-Time k-Nearest Neighbour (ST-kNN) method is developed for short-term traffic prediction, and a geometric water-filling algorithm is developed for minimizing the relative latency. Simulation results validate the effectiveness of the proposed semi-persistent scheme in comparison with two benchmark schemes.
机译:在蜂窝车辆通信中,车辆的高密度和移动性需要频繁的资源分配,这可能导致网络拥塞和大信令和处理延迟。为了克服这个问题,我们提出了一种基于双层异构网络架构的新型半持久资源分配方案。该架构包括中央宏基站(MBS)和多个路边单元(RSU)。在所提出的半持久方案中,MBS基于预测的流量将持久资源预先分配给RSU,然后在RSU的实时请求时分配动态资源,而车辆同时使用预先分配的资源进行通信。开发了一种简单的时空K-最近邻(ST-KNN)方法用于短期交通预测,开发了几何水填充算法,用于最小化相对延迟。仿真结果验证了与两个基准方案相比的建议半持久方案的有效性。

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