多跳5G网络信任模型:一种强化学习方法

Israr Ahmad, K. Yau
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引用次数: 0

摘要

在下一代无线网络5G中进行信任调查,仍然是幼稚的。本文研究了一种基于强化学习(RL)的信任模型来选择合法的(或可信的)转发实体(或节点)。RL可以嵌入到实体中(可以是合法的或恶意的),从而能够学习高度动态和异构的环境。合法实体(例如节点)使用RL选择最佳的下一跳转发器(中继),并在网络中存在恶意实体时成功地将所需的数据包传输到目的地。恶意实体也可以利用强化学习在不被发现的情况下发起攻击(即智能攻击)。仿真结果表明,合法实体能够以较高的学习率(即$\alpha=0.9$)快速学习(即快速收敛),并且在可信转发器选择方面表现良好。尽管如此,恶意实体也可以快速学习并发起成功的攻击(即通过丢弃数据包来影响吞吐量),而不会被检测到,因为它具有逃亡性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Trust Model for Multi-Hop 5G Networks: A Reinforcement Learning Approach
Trust investigation in 5G the next-generation wireless network, is still naive. The article investigates into a trust model based on reinforcement learning (RL) to select a legitimate (or trusted) forwarding entity (or node). RL can be embedded in an entity (that can be legitimate or malicious) to enable to learn a higly dynamic and heterogenous environments. The legitimate entity (e.g., a node) uses RL to select the best possible next hop forwarder (a relay) and to successfully transmit the desired packet towards the destination while the malicious entities exist in the network. The malicious entity can also use RL to launch an attack (i.e., intelligent attack) without being detected. Simulation results show that the legitimate entity can learn fast (i.e., converge fast) at a higher learning rate (i.e., $\alpha=0.9$) and perform well in terms of trusted forwarder selection. Nevertheless, the malicious entity can also learn fast and launch successful attacks (i.e., affecting the throughput by dropping the packets) without being detected due to its fugitive nature.
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