Stage Spectrum Sensing Technique for Cognitive Radio Network Using Energy and Entropy Detection

IF 1.6 Q4 ENERGY & FUELS Wireless Power Transfer Pub Date : 2022-08-24 DOI:10.1155/2022/7941978
Mustefa Badri Usman, R. Singh, S. Rajkumar
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引用次数: 1

Abstract

The radio spectrum is one of the world’s most highly regulated and limited natural resources. The number of wireless devices has increased dramatically in recent years, resulting in a scarcity of available radio spectrum due to static spectrum allocation. However, many studies on static allocation show that the licensed spectrum bands are underutilized. Cognitive radio has been considered as a viable solution to the issues of spectrum scarcity and underutilization. Spectrum sensing is an important part in cognitive radio for detecting spectrum holes. To detect the availability or unavailability of primary user signals, many spectrum sensing techniques such as matched filter detection, cyclostationary feature detection, and energy detection have been developed. Energy detection has gained significant attention from researchers because of its ease of implementation, fast sensing time, and low computational complexity. Conventional detectors’ performance degrades rapidly at low SNR due to their sensitivity to the uncertainty of noise. To mitigate noise uncertainty, Shannon, Tsallis, Kapur, and Renyi entropy-based detection has been used in this study, and their performances are compared to choose the best performer. According to the comparison results, the Renyi entropy outperforms other entropy methods. In this study, two-stage spectrum sensing is proposed using energy detection as the coarse stage and Renyi entropy-based detection as the fine stage to improve the performance of single-stage detection techniques. Furthermore, the performance comparison among conventional energy detection, entropy-based detection, and the proposed two-stage techniques over AWGN channel are performed. The parameters such as probability of detection, false alarm probability, miss-detection probability, and receiver operating characteristics curve are used to evaluate the performance of spectrum sensing techniques. It has been shown that the proposed two-stage sensing technique outperforms single-stage energy detection and Renyi entropy-based detection by 11 dB and 1 dB, respectively.
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基于能量和熵检测的认知无线网络阶段频谱感知技术
无线电频谱是世界上管制最严格、限制最有限的自然资源之一。近年来,无线设备的数量急剧增加,由于静态频谱分配,导致可用无线电频谱稀缺。然而,许多关于静态分配的研究表明,许可的频带没有得到充分利用。认知无线电被认为是解决频谱稀缺和利用不足问题的可行方案。频谱感知是认知无线电探测频谱空洞的重要组成部分。为了检测主要用户信号的可用性或不可用性,已经开发了许多频谱传感技术,如匹配滤波器检测、循环平稳特征检测和能量检测。能量检测由于其易于实现、传感时间快和计算复杂度低而受到研究人员的极大关注。传统探测器由于对噪声不确定性的敏感性,在低信噪比下性能迅速下降。为了减轻噪声的不确定性,本研究使用了Shannon、Tsallis、Kapur和Renyi基于熵的检测,并对它们的性能进行了比较,以选择性能最好的检测方法。根据比较结果,仁义熵优于其他熵方法。在本研究中,提出了以能量检测为粗级、以仁义熵检测为细级的两级光谱传感,以提高单级检测技术的性能。此外,在AWGN信道上对传统的能量检测、基于熵的检测和所提出的两阶段技术进行了性能比较。检测概率、虚警概率、漏检概率和接收机工作特性曲线等参数用于评估频谱传感技术的性能。研究表明,所提出的两阶段传感技术比单阶段能量检测和基于仁义熵的检测高出11 dB和1 dB。
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来源期刊
Wireless Power Transfer
Wireless Power Transfer ENERGY & FUELS-
CiteScore
2.50
自引率
0.00%
发文量
3
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