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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Efficient Data Processing in Software-Defined UAV-Assisted Vehicular Networks: A Sequential Game Approach
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Efficient Data Processing in Software-Defined UAV-Assisted Vehicular Networks: A Sequential Game Approach

机译:在软件定义的无人机辅助车辆网络中有效的数据处理:顺序游戏方法

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In large scale networks like Vehicular Ad-hoc Networks (VANETs), the full coverage of fixed infrastructure is hard to ensure, making network management difficult. Whether in infrastructure-less environments where the network connectivity is poor or where the infrastructure deployment is difficult, costly or not profitable. Recently, in the one side, Unmanned Aerial Vehicles (UAVs) have been used as a new flexible solution to assist infrastructure-less vehicular networks for the investigation of inaccessible areas. In the other side, several works have shown interest in the use of the emerging network paradigm of Software-Defined Networking (SDN) to facilitate the management and improve the performances of vehicular networks. In this paper, we propose a novel distributed SDN-based architecture for UAV-assisted infrastructure-less vehicular networks. The main goal is to fill the gap that no SDN-based architecture has been proposed for these networks. We focus particularly on a road safety use-case that incorporates UAVs to assist emergency vehicles in the exploration of affected zones in critical emergency situations. Moreover, we investigate how to achieve efficient data processing policy through a computation offloading/sharing decision-making problem. The main challenge is to reach the best tradeoff between computation delay and energy consumption for computation-intensive tasks in a delay-sensitive context. We formulate this decision problem as a two-player sequential game approach and design distributed computation algorithms to solve the problem. Numerical results show that data processing policy of distributed offloading/sharing algorithms achieves efficient computation performances in terms of delay and energy whilst ensuring until 28% gain of system cost and 95% better response time, compared to native computation scenarios and related data delivery UAV-assisted VANET works, respectively.
机译:在车辆临时网络(VANET)等大型网络中,固定基础设施的全面覆盖很难确保,使网络管理变得困难。无论是在较少的网络连接较差的环境中,还是基础设施部署都困难,昂贵或不利的环境。最近,在一方面,无人驾驶车辆(无人机)被用作新的灵活解决方案,以帮助基础设施的车辆网络进行难以接近的地区的调查。在另一方面,几项作品已经表达了利用软件定义网络(SDN)的新兴网络范例来促进管理和改善车辆网络的性能。在本文中,我们提出了一种用于无人机辅助基础设施的车辆网络的新型分布式SDN架构。主要目标是填补这些网络没有提出基于SDN的架构的差距。我们特别关注的是一种道路安全用例,该案例包含无人机,帮助急救车辆勘探中的严重紧急情况。此外,我们调查如何通过计算卸载/共享决策问题实现高效的数据处理策略。主要挑战是在延迟敏感上下文中达到计算密集型任务的计算延迟和能耗之间的最佳权衡。我们将该决策问题作为双人顺序游戏方法以及设计分布式计算算法来解决问题。数值结果表明,分布式卸载/共享算法的数据处理策略在延迟和能量方面实现了有效的计算性能,同时确保到系统成本的增益28%,与本机计算场景相比,与本机计算场景和相关数据传递无人机相比辅助华人分别工作。

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