无线网络中频谱感知的文献计量分析

Q4 Engineering
Nyashadzashe Tamuka, K. Sibanda
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引用次数: 0

摘要

由于网络监管机构将频谱(频带)严格分配给许可用户,频谱稀缺是无线网络中普遍存在的问题。这样的操作意味着当主要无线频谱用户(许可用户)正在利用频带以避免干扰时,未许可用户(次要无线频谱用户)必须撤离频谱。认知无线电通过检测未被占用的频带来缓解频谱短缺。这减少了无线网络中频带的未充分利用。关于光谱传感的相关研究很多,但很少有研究对这一主题进行文献计量学分析。本研究的目的是对光谱传感的优化进行文献计量学分析。PRISMA方法是文献计量分析的基础,以确定现有光谱传感技术的局限性。研究结果表明,在最低信噪比(SNR)下,各种机器学习或混合模型的性能优于匹配滤波器和能量检测器等传统技术。SNR是所需信号幅度与背景噪声幅度的比值。因此,这项研究建议研究人员提出替代技术来优化(改进)无线网络中的频谱感知。应该做更多的工作来开发在低SNR下优化频谱感测的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A BIBLIOMETRIC ANALYSIS ON SPECTRUM SENSING IN WIRELESS NETWORKS
Spectrum scarcity is a prevalent problem in wireless networks due to the strict allotment of the spectrum (frequency bands) to licensed users by network regulatory bodies. Such an operation implies that the unlicensed users (secondary wireless spectrum users) have to evacuate the spectrum when the primary wireless spectrum users (licensed users) are utilizing the frequency bands to avoid interference. Cognitive radio alleviates the spectrum shortage by detecting unoccupied frequency bands. This reduces the underutilization of frequency bands in wireless networks. There have been numerous related studies on spectrum sensing, however, few studies have conducted a bibliometric analysis on this subject. The goal of this study was to conduct a bibliometric analysis on the optimization of spectrum sensing. The PRISMA methodology was the basis for the bibliometric analysis to identify the limitations of the existing spectrum sensing techniques. The findings revealed that various machine learning or hybrid models outperformed the traditional techniques such as matched filter and energy detectors at the lowest signal to noise ratio (SNR). SNR is the ratio of the desired signal magnitude to the background noise magnitude. This study, therefore, recommends researchers propose alternative techniques to optimize (improve) spectrum sensing in wireless networks. More work should be done to develop models that optimize spectrum sensing at low SNR.
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来源期刊
Indian Journal of Computer Science and Engineering
Indian Journal of Computer Science and Engineering Engineering-Engineering (miscellaneous)
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发文量
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