Reinforcement Learning-Based Trust and Reputation Model for Spectrum Leasing in Cognitive Radio Networks

Mee Hong Ling, K. Yau
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引用次数: 2

Abstract

Cognitive Radio (CR), which is the next generation wireless communication system, enables unlicensed users or Secondary Users (SUs) to exploit underutilized spectrum (called white spaces) owned by the licensed users or Primary Users (PUs) so that bandwidth availability improves at the SUs, which helps to improve the overall spectrum utilization. Collaboration, which has been adopted in various schemes such distributed channel sensing and channel access, is an intrinsic characteristic of CR to improve network performance. However, the requirement to collaborate has inevitably open doors to various forms of attacks by malicious SUs, and this can be addressed using Trust and Reputation Management (TRM). Generally speaking, TRM detects malicious SUs including honest SUs that turn malicious. To achieve a more efficient detection, we advocate the use of Reinforcement Learning (RL), which is known to be flexible and adaptable to the changes in operating environment in order to achieve optimal network performance. Its ability to learn and re-learn throughout the duration of its existence provides intelligence to the proposed TRM model, and so the focus on RL-based TRM model in this paper. Our preliminary results show that the detection performance of RL-based TRM model has an improvement of 15% over the traditional TRM in a centralized cognitive radio network. The investigation in the paper serves as an important foundation for future work in this research field.
基于强化学习的认知无线网络频谱租赁信任信誉模型
认知无线电(Cognitive Radio, CR)是下一代无线通信系统,它允许未授权用户或次要用户(Secondary user, su)利用授权用户或主要用户(Primary users, pu)拥有的未充分利用的频谱(称为空白),从而提高su的带宽可用性,从而提高整体频谱利用率。协作是CR提高网络性能的内在特性,在分布式信道感知和信道接入等多种方案中都采用了协作。然而,协作的需求不可避免地为恶意su的各种形式的攻击打开了大门,这可以使用信任和声誉管理(TRM)来解决。一般来说,TRM检测的是恶意的su,包括诚实的su变成恶意的su。为了实现更有效的检测,我们提倡使用强化学习(RL),它被认为是灵活的,可以适应操作环境的变化,以达到最佳的网络性能。它在整个存在期间的学习和再学习能力为提出的TRM模型提供了智能,因此本文将重点放在基于rl的TRM模型上。我们的初步结果表明,在集中式认知无线电网络中,基于rl的TRM模型的检测性能比传统TRM提高了15%。本文的研究为今后该研究领域的工作奠定了重要的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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