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Enhanced Sensing and Sum-Rate Analysis in a Cognitive Radio-Based Internet of Things

机译:基于认知无线电的物联网中的增强传感和求和率分析

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摘要

Spectrum sensing plays a vital role in cognitive radio networks (CRNs) for identifying the spectrum hole. However, an individual cognitive radio user in a CRN does not obtain sufficient sensing performance and sum rate of the primary and secondary links to support the future Internet of Things (IoT) using conventional detection techniques such as the energy detection (ED) technique in a noise-uncertain environment. In an environment comprising noise uncertainty, the performance of conventional energy detection techniques is significantly degraded owing to the noise fluctuation caused by the noise temperature, interference, and filtering. To mitigate this problem, we present a cooperative spectrum sensing technique that comprises the use of the Kullback–Leibler divergence (KLD) in cognitive radio-based IoT (CR-IoT). In the proposed method, each unlicensed IoT device that is capable of spectrum sensing, which is called a CR-IoT user, makes a local decision using the KLD technique. The spectrum sensing performed with the KLD requires a smaller number of samples than other conventional approaches, e.g., energy detection, for reliable sensing even in a noise uncertain environment. After the local decision is made, each CR-IoT user sends its own local decision result to the corresponding fusion center, which makes a global decision using the soft fusion rule. The results obtained through simulations show that the proposed KLD scheme achieves a better sensing performance, i.e., higher detection and lower false-alarm probabilities, enhances the sum rate, and reduces the total time as compared to the conventional ED scheme under various fading channels.
机译:频谱感测在认知无线电网络(CRN)中用于识别频谱孔洞中至关重要。但是,CRN中的单个认知无线电用户无法使用常规检测技术(例如能量检测(ED)技术)来获得足够的感测性能和主要和辅助链路的总速率来支持未来的物联网(IoT)噪声不确定的环境。在包含噪声不确定性的环境中,由于噪声温度,干扰和滤波引起的噪声波动,常规能量检测技术的性能会大大降低。为了缓解这个问题,我们提出了一种协作频谱感知技术,其中包括在基于认知无线电的物联网(CR-IoT)中使用Kullback-Leibler发散(KLD)。在提出的方法中,每个能够进行频谱感应的未经许可的IoT设备(称为CR-IoT用户)都使用KLD技术做出本地决策。与KLD进行频谱检测相比,即使在噪声不确定的环境中,也需要比其他常规方法(例如能量检测)更少的样本,以实现可靠的检测。做出本地决策后,每个CR-IoT用户将其自己的本地决策结果发送到相应的融合中心,后者使用软融合规则进行全局决策。通过仿真得到的结果表明,与传统的ED方案在各种衰落信道下相比,所提出的KLD方案具有更好的感知性能,即更高的检测率和更低的虚警概率,提高了求和率,并减少了总时间。

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