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Deep reinforcement learning-based cooperative interactions among heterogeneous vehicular networks

机译:基于深度加强学习的基于学习的非均匀车辆网络的合作互动

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摘要

Most real-world vehicle nodes can be structured into an interconnected network of vehicles. Through structuring these services and vehicle device interactions into multiple types, such internet of vehicles becomes multidimensional heterogeneous overlay networks. The heterogeneousness of the overlays makes it difficult for the overlay networks to coordinate with each other to improve their performance. Therefore, it poses an interesting but critical challenge to the effective analysis of heterogeneous virtual vehicular networks. A variety of virtual vehicular networks can be easily deployed onto the native network by applying the concept of SDN (Software Defined Networking). These virtual networks reflect their heterogeneousness due to their different performance goals, and they compete for the same physical resources of the underlying network, so that a sub-optimal performance of the virtual networks may be achieved. Therefore, we propose a Deep Reinforcement Learning (DRL) approach to make the virtual networks cooperate with each other through the SDN controller. A cooperative solution based on the asymmetric Nash bargaining is proposed for co-existing virtual networks to improve their performance. Moreover, the Markov Chain model and DRL resolution are introduced to leverage the heterogeneous performance goals of virtual networks. The implementation of the approach is introduced, and simulation results confirm the performance improvement of the latency sensitive, loss-rate sensitive and throughput sensitive heterogeneous vehicular networks using our cooperative solution. (C) 2019 Elsevier B.V. All rights reserved.
机译:大多数现实世界的车辆节点都可以构造成互连的车辆网络。通过结构化这些服务和车辆设备的相互作用进入多种类型,这种车辆互联网变为多维异构覆盖网络。覆盖物的异质性使得覆盖网络难以彼此协调以提高它们的性能。因此,它对异构虚拟车辆网络的有效分析构成了一个有趣但危急的挑战。通过应用SDN的概念(软件定义的网络),可以轻松地部署到原生网络中的各种虚拟车辆网络。由于其不同的性能目标,这些虚拟网络反映了它们的异构性,并且它们竞争底层网络的相同物理资源,从而可以实现虚拟网络的子最优性能。因此,我们提出了一种深度加强学习(DRL)方法来使虚拟网络通过SDN控制器彼此协作。提出了一种基于非对称NASH讨价还价的协作解决方案,用于共同现有的虚拟网络以提高其性能。此外,引入了马尔可夫链模型和DRL分辨率以利用虚拟网络的异构性能目标。介绍了这种方法的实现,仿真结果证实了使用我们的合作解决方案的等待敏感,丢失率敏感和吞吐量敏感异构车辆的性能提高。 (c)2019年Elsevier B.V.保留所有权利。

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