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A Machine Learning Approach for Software-Defined Vehicular Ad Hoc Networks with Trust Management

机译:具有信任管理的软件定义的车载Ad Hoc网络的机器学习方法

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Vehicular ad hoc networks (VANETs) have become a promising technology in smart transportation systems with rising interest of expedient, safe, and high- efficient transportation. Dynamicity and infrastructure-less of VANETs make it vulnerable to malicious nodes and result in performance degradation. In this paper, we propose a software- defined trust based deep reinforcement learning framework (TDRL-RP), deploying a deep Q-learning algorithm into a logically centralized controller of software-defined networking (SDN). Specifically, the SDN controller is used as an agent to learn the highest routing path trust value of a VANET environment by convolution neural network, where the trust model is designed to evaluate neighbors' behaviour of forwarding packets. Simulation results are presented to show the effectiveness of the proposed TDRL-RP framework.
机译:车辆临时网络(VANET)已成为智能运输系统的有希望的技术,具有权宜之计,安全和高效运输的兴趣。无动态和基础设施的VANET使其容易受到恶意节点并导致性能下降。在本文中,我们提出了一种软件定义的基于信任的深度加强学习框架(TDRL-RP),将深度Q学习算法部署到软件定义网络(SDN)的逻辑上集中控制器中。具体地,SDN控制器用作代理以通过卷积神经网络学习Vanet环境的最高路由路径信任值,其中信任模型旨在评估转发分组的邻居行为。提出了仿真结果以显示提出的TDRL-RP框架的有效性。

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