Enhance the Probability of Detection of Cooperative Spectrum Sensing in Cognitive Radio Networks Using Blockchain Technology

IF 1.2 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
D. Balakumar, Nandakumar Sendrayan
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引用次数: 0

Abstract

Cognitive radio (CR) is the best way to improve the efficiency of spectrum consumption for wireless multimedia communications. Spectrum sensing, which allows legitimate secondary users (SU) to find vacant bands in the spectrum, plays a vital role in CR networks. When cooperative sensing is used in CR networks, spectrum availability must be taken into account. In many ways, the shared cooperative spectrum sensing (CSS) data among SU. The presence of a malicious user (MU) in the system and sending false sensing data can degrade the performance of cooperative CR. The sharp rise in mobile data traffic causes congestion in the licensed band for the transmission of signals. Handling this security issue in real time, on top of spectrum sharing, is a challenge in such networks. In order to manage the spectrum and identify MU, blockchain-based CSS is developed in this article. To gauge the efficiency of the proposed topology, performance metrics like sensitivity, node selection, throughput measurement, and energy efficiency are used. This work suggests a unique, easier-to-use CSS method with MU suppression that outperforms the current one. According to simulation studies, the suggested topology can increase the likelihood of MU detection by roughly 15% when 40% of system users are malicious.
利用区块链技术提高认知无线电网络中合作频谱传感的检测概率
认知无线电(CR)是提高无线多媒体通信频谱消耗效率的最佳途径。频谱感知允许合法的二次用户(SU)找到频谱中的空闲频段,在 CR 网络中发挥着至关重要的作用。在 CR 网络中使用合作传感时,必须考虑频谱的可用性。在许多方面,SU 之间共享合作频谱传感(CSS)数据。如果系统中存在恶意用户(MU)并发送错误的传感数据,就会降低合作式 CR 的性能。移动数据流量的急剧上升会造成许可频段内信号传输的拥塞。在频谱共享的基础上实时处理这一安全问题,是此类网络面临的一项挑战。为了管理频谱和识别 MU,本文开发了基于区块链的 CSS。为了衡量所提拓扑结构的效率,使用了灵敏度、节点选择、吞吐量测量和能效等性能指标。这项工作提出了一种独特、易用的 CSS 方法,其 MU 抑制性能优于当前的 CSS 方法。根据模拟研究,当 40% 的系统用户是恶意用户时,建议的拓扑结构可将 MU 检测到的可能性提高约 15%。
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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来源期刊
Journal of Electrical and Computer Engineering
Journal of Electrical and Computer Engineering COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.20
自引率
0.00%
发文量
152
审稿时长
19 weeks
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