Analysing Primary Signal Sensing Test in Cognitive Radio Networks Using an Alpha-Beta Filter and a Neyman-Pearson Detector

H. E. Adardour, S. Kameche
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Abstract

The signal strength sensing in the context of cognitive radio networks (CRNs), is very important to predict the primary signal of base station (PBS), particularly when the secondary user (SU) is in a congested environment, and also when is in motion towards the end of coverage of PBS. However, this article presents an analysis on the prediction of primary signal strength in CRNs using an Alpha-Beta Filter (ABF) and a Neyman-Pearson Detector (NPD). The challenge of this contribution is based on a realistic sensing of primary signal strength and to do that, we have assumed that the reporting channels between the SU and the PBS are composited with the shadowing and multipath fading (SMF), and the receiver noise has also added. In this regard, the obtained results were discussed through: the signal-to-noise ratio (SNR) uncertainty, the detection probability (PD) and the False Alarm Probability (PFA), where the average relative error of prediction for the PD will be equal to10-5.
利用Alpha-Beta滤波器和Neyman-Pearson检测器分析认知无线电网络中的主信号感知测试
认知无线网络(crn)环境下的信号强度感知对于预测基站(PBS)的主信号非常重要,特别是当辅助用户(SU)处于拥塞环境中,以及当辅助用户(SU)移动到PBS覆盖范围结束时。然而,本文介绍了使用Alpha-Beta滤波器(ABF)和Neyman-Pearson检测器(NPD)预测crn中主信号强度的分析。这种贡献的挑战是基于对主信号强度的实际感知,为了做到这一点,我们假设SU和PBS之间的报告信道是用阴影和多径衰落(SMF)合成的,并且还添加了接收器噪声。为此,通过信噪比(SNR)不确定性、检测概率(PD)和虚警概率(PFA)对得到的结果进行了讨论,其中PD预测的平均相对误差将等于10-5。
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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