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User correlation and double threshold based cooperative spectrum sensing in dense cognitive vehicular networks

机译:密集认知车辆网络中基于用户相关性和基于双阈值的协作频谱感知

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Spectrum scarcity is becoming increasingly serious in vehicular networks due to the deployment of the Intelligent Transportation System. Cognitive Radio (CR) is a promising technology to overcome this problem. However, as the traffic density is always rising, the higher correlation index of the network and the increasing number of vehicles cause new problems for CR. The deterioration of sensing performance caused by correlated users and huge signaling overhead of the vehicles should not be ignored. In this paper, we consider a Dense Cognitive Vehicular Network (DCVN) and propose an user correlation and double threshold based cooperative spectrum sensing algorithm (UCD-CSS) to achieve a trade-off between sensing performance and system overhead. First, we employ an improved double threshold (DTH) method to reduce system overhead and withstand noise uncertainty. Moreover, a correlation based cooperative spectrum sensing (CSS) algorithm is established to avoid the performance deterioration caused by correlated observations in DCVNs. The probability of detection, the probability of false alarm and the average sensing bits are analyzed. In addition, the impacts of traffic density and failed reporting probability on performance are further demonstrated through simulations. The results clearly reveal the benefits of adopting the proposed UCD-CSS algorithm in dense vehicular networks.
机译:由于智能运输系统的部署,车载网络中的频谱稀缺变得越来越严重。认知无线电(CR)是克服这一问题的有前途的技术。但是,由于流量密度一直在增加,网络的更高相关指数和越来越多的车辆为CR带来了新的问题。相关用户和车辆巨大的信令开销导致的传感性能下降不容忽视。在本文中,我们考虑了密集认知车载网络(DCVN),并提出了一种基于用户相关性和基于双阈值的协作频谱感知算法(UCD-CSS),以在感知性能和系统开销之间进行权衡。首先,我们采用改进的双阈值(DTH)方法来减少系统开销并承受噪声的不确定性。此外,建立了基于相关性的协作频谱感知(CSS)算法,以避免由于DCVN中的相关观测引起的性能下降。分析了检测的可能性,错误警报的可能性和平均感测位。此外,通过仿真进一步证明了流量密度和失败的报告概率对性能的影响。结果清楚地揭示了在密集的车辆网络中采用建议的UCD-CSS算法的好处。

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