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Blockchain-Based Distributed Software-Defined Vehicular Networks: A Dueling Deep Q -Learning Approach

机译:基于区块链的分布式软件定义车辆网络:Dueling Deep Q-Learnearning方法

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Vehicular ad hoc networks (VANETs) have become an essential part in smart transportation systems of modern cities. However, because of dynamicity and infrastructure-less of VANETs, the ever increasing number of network security issues become obstacles for the realization of smart cities. Software-defined VANETs have provided a reliable way to manage VANETs dynamically and securely. However, the traditionally centralized control plane makes it vulnerable to malicious nodes and results in performance degradation. Therefore, a distributed control plane is necessary. How to reach a consensus among multiple controllers under complex vehicular environment is an essential problem. In this paper, we propose a novel blockchain-based distributed software-defined VANET framework (block-SDV) to establish a secure architecture to overcome the above issues. The trust features of blockchain nodes, the number of consensus nodes, trust features of each vehicle, and the computational capability of the blockchain are considered in a joint optimization problem, which is modeled as a Markov decision process with state space, action space and reward function. Since it is difficult to be solved by traditional methods, we propose a novel dueling deep Q-learning (DDQL) with prioritized experience replay approach. Simulation results are presented to show the effectiveness of the proposed block-SDV framework.
机译:车辆临时网络(VANET)已成为现代城市智能运输系统的重要组成部分。然而,由于动力学和基础设施的VANET,越来越多的网络安全问题成为实现智能城市的障碍。软件定义的VANET提供了一种可靠的方式来动态地和安全地管理志家。然而,传统集中的控制平面使其容易受恶意节点并导致性能下降。因此,需要分布式控制平面。如何在复杂的车辆环境下多个控制器之间达成共识是一个重要问题。在本文中,我们提出了一种新颖的基于区块的分布式软件定义的VANET框架(块-SDV),以建立安全架构以克服上述问题。区块链节点的信任特征,共识节点的数量,每个车辆的信任特征以及区块链的计算能力在联合优化问题中被认为是用状态空间,动作空间和奖励的马尔可夫决策过程建模功能。由于难以通过传统方法解决,因此我们提出了一种小型Dueling Deep Q-Learning(DDQL),优先考虑体验重播方法。提出了仿真结果以显示提出的块SDV框架的有效性。

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