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Application of reinforcement learning for security enhancement in cognitive radio networks

机译:强化学习在认知无线电网络中提高安全性的应用

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摘要

Cognitive radio network (CRN) enables unlicensed users (or secondary users, SUs) to sense for and opportunistically operate in underutilized licensed channels, which are owned by the licensed users (or primary users, PUs). Cognitive radio network (CRN) has been regarded as the next-generation wireless network centered on the application of artificial intelligence, which helps the SUs to learn about, as well as to adaptively and dynamically reconfigure its operating parameters, including the sensing and transmission channels, for network performance enhancement. This motivates the use of artificial intelligence to enhance security schemes for CRNs. Provisioning security in CRNs is challenging since existing techniques, such as entity authentication, are not feasible in the dynamic environment that CRN presents since they require pre-registration. In addition these techniques cannot prevent an authenticated node from acting maliciously. In this article, we advocate the use of reinforcement learning (RL) to achieve optimal or near-optimal solutions for security enhancement through the detection of various malicious nodes and their attacks in CRNs. RL, which is an artificial intelligence technique, has the ability to learn new attacks and to detect previously learned ones. RL has been perceived as a promising approach to enhance the overall security aspect of CRNs. RL, which has been applied to address the dynamic aspect of security schemes in other wireless networks, such as wireless sensor networks and wireless mesh networks can be leveraged to design security schemes in CRNs. We believe that these RL solutions will complement and enhance existing security solutions applied to CRN To the best of our knowledge, this is the first survey article that focuses on the use of RL-based techniques for security enhancement in CRNs.
机译:认知无线电网络(CRN)使未授权用户(或次要用户SU)能够感知未授权用户(或主要用户PU)拥有的未充分利用的授权信道并在未充分利用的授权信道中进行机会性操作。认知无线电网络(CRN)已被视为以人工智能的应用为中心的下一代无线网络,它可以帮助SU学习,自适应地和动态地重新配置其工作参数(包括传感和传输通道) ,用于增强网络性能。这激发了人工智能的使用,以增强CRN的安全性。由于现有技术(例如,实体身份验证)在CRN呈现的动态环境中不可行,因为它们需要预先注册,因此在CRN中提供安全性具有挑战性。另外,这些技术不能防止经过身份验证的节点进行恶意操作。在本文中,我们提倡使用强化学习(RL)通过检测各种恶意节点及其在CRN中的攻击来实现安全性增强的最佳或接近最佳的解决方案。 RL是一种人工智能技术,具有学习新攻击并检测以前学习到的攻击的能力。 RL被认为是增强CRN整体安全性的一种有前途的方法。 RL已被用于解决其他无线网络(例如无线传感器网络和无线网状网络)中安全方案的动态方面,可以利用其来设计CRN中的安全方案。我们相信,这些RL解决方案将补充和增强适用于CRN的现有安全解决方案。据我们所知,这是第一篇调查文章,重点介绍了如何将基于RL的技术用于CRN的安全增强。

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