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Predictive Big Data Collection in Vehicular Networks: A Software Defined Networking based Approach

机译:预测车辆网络中的大数据收集:一种基于软件定义的网络方法

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Data collection is key issue in vehicular networks since it is vital for supporting many applications in vehicular environments. With the explosive growth of sensing data in urban area, however, strategies for efficient collection of big data in vehicular networks are still far from being well studied. In this paper, we focus on studying this issue and accordingly propose a Software Defined Vehicular Networks (SDVN) architecture. On this architecture, a predictive data collection algorithm is proposed. In this algorithm, packet delivery is fulfilled by cooperative cellular and ad hoc network interfaces, in which collections of big data always adopts ad hoc based multi-hop relaying whenever applicable to forward packets to Road Side Units (RSUs). Cellular networks are used for data uploading only when no multi-hop relaying opportunity is available. Our proposed SDVN architecture enables such efficient cooperative communications, in which predictive routing decisions are made based on real-time network status other than empirical knowledge. Simulation results demonstrate that our algorithm outperforms existing algorithms in terms of packet delivery ratio and transmit efficiency.
机译:数据收集是车辆网络中的关键问题,因为它对于支持车辆环境中的许多应用至关重要。然而,随着城市地区的传感数据的爆炸性增长,有效地收集车辆网络中的大数据的策略仍然远远不清楚。在本文中,我们专注于研究这个问题,并因此提出了一种软件定义的车辆网络(SDVN)架构。在这种架构上,提出了一种预测数据收集算法。在该算法中,通过协作蜂窝和临时网络接口满足分组传送,其中大数据的集合总是在适用于向道路侧单元(RSU)的转发分组(RSU)的转发分组时始终采用基于AD Hoc的多跳中继。仅在没有多跳中继机会时,蜂窝网络仅用于数据上载。我们所提出的SDVN架构能够实现这样的有效的协作通信,其中基于实证知识以外的实时网络状态进行预测路由决策。仿真结果表明,我们的算法在分组传递比率和发射效率方面优于现有算法。

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