The effective deployment of connected vehicular networks is contingent upon maintaining a desired performance across spatial and temporal domains. In this paper, a graph-based framework, called SMART, is proposed to model and keep track of the spatial and temporal statistics of vehicle-to-infrastructure (V2I) communication latency across a large geographical area. SMART first formulates the spatio-temporal performance of a vehicular network as a graph in which each vertex corresponds to a subregion consisting of a set of neighboring location points with similar statistical features of V2I latency and each edge represents the spatio-correlation between latency statistics of two connected vertices. Motivated by the observation that the complete temporal and spatial latency performance of a vehicular network can be reconstructed from a limited number of vertices and edge relations, we develop a graph reconstruction-based approach using a graph convolutional network integrated with a deep Q-networks algorithm in order to capture the spatial and temporal statistic of feature map pf latency performance for a large-scale vehicular network. Extensive simulations have been conducted based on a five-month latency measurement study on a commercial LTE network. Our results show that the proposed method can significantly improve both the accuracy and efficiency for modeling and reconstructing the latency performance of large vehicular networks.
翻译:有效部署连接的车辆网络取决于在空间和时间范围内保持理想的性能。在本文中,提议以图表为基础的框架,称为SMART,以建模和跟踪大地理区域车辆到基础设施(V2I)通信长期空间和时间统计。SMART首先将一个车辆网络的时空-时空性能设计成一个图表,其中每个脊椎都与一个次区域相匹配,由一组相邻地点组成,具有V2I 长度和每个边缘的类似统计特征的相近点组成。这个图表框架代表两个连接的悬浮的悬浮点的悬浮统计之间的星空关系。由于观察到一个车辆网络的完全时间和空间悬浮性能可以从数量有限的悬浮和边缘关系中重建出来。 我们开发了一个基于图表的重建方法,利用一个与深Q网络算法相结合的图形变压网络,以捕捉地格悬浮定位图的时空对比。一个大型网络的模拟性能表现,在大规模模拟的网络上展示了以大规模度测量为基础的每月性能测量网络。