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Software-Defined Networking for RSU Clouds in Support of the Internet of Vehicles

机译:RSU云的软件定义网络,以支持车联网

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摘要

We propose a novel roadside unit (RSU) cloud, a vehicular cloud, as the operational backbone of the vehicle grid in the Internet of Vehicles (IoV). The architecture of the proposed RSU cloud consists of traditional and specialized RSUs employing software-defined networking (SDN) to dynamically instantiate, replicate, and/or migrate services. We leverage the deep programmability of SDN to dynamically reconfigure the services hosted in the network and their data forwarding information to efficiently serve the underlying demand from the vehicle grid. We then present a detailed reconfiguration overhead analysis to reduce reconfigurations, which are costly for service providers. We use the reconfiguration cost analysis to design and formulate an integer linear programming (ILP) problem to model our novel RSU cloud resource management (CRM). We begin by solving for the Pareto optimal frontier (POF) of nondominated solutions, such that each solution is a configuration that minimizes either the number of service instances or the RSU cloud infrastructure delay, for a given average demand. Then, we design an efficient heuristic to minimize the reconfiguration costs. A fundamental contribution of our heuristic approach is the use of reinforcement learning to select configurations that minimize reconfiguration costs in the network over the long term. We perform reconfiguration cost analysis and compare the results of our CRM formulation and heuristic. We also show the reduction in reconfiguration costs when using reinforcement learning in comparison to a myopic approach. We show significant improvement in the reconfigurations costs and infrastructure delay when compared to purist service installations.
机译:我们提出了一种新颖的路边单位(RSU)云,一种车辆云,作为车辆互联网(IoV)中车辆网格的运营骨干。建议的RSU云的体系结构由传统的和专用的RSU组成,这些RSU使用软件定义的网络(SDN)来动态实例化,复制和/或迁移服务。我们利用SDN的深度可编程性来动态地重新配置网络中托管的服务及其数据转发信息,以有效地满足车辆网格的基础需求。然后,我们提出了详细的重新配置开销分析,以减少重新配置,这对于服务提供商而言是昂贵的。我们使用重新配置成本分析来设计和制定整数线性规划(ILP)问题,以对我们新颖的RSU云资源管理(CRM)进行建模。我们首先解决非主导解决方案的Pareto最优边界(POF),这样,对于给定的平均需求,每个解决方案都是一种配置,可将服务实例数或RSU云基础架构延迟最小化。然后,我们设计一种有效的启发式方法以最小化重新配置成本。我们的启发式方法的基本贡献是,通过使用强化学习来选择配置,以从长期来看将网络中的重新配置成本降至最低。我们执行重新配置成本分析,并比较CRM制定和启发式方法的结果。与近视方法相比,我们还显示了在使用强化学习时降低了重新配置成本。与纯粹的服务安装相比,我们显示出重新配置成本和基础架构延迟方面的显着改善。

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