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On error variance for autoregressive process-based spectrum occupancy prediction with energy detector for cognitive networks

机译:能量检测器用于认知网络的基于自回归过程的频谱占用预测的误差方差

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Spectrum sensing is considered to be the most important task for both cognitive radio (CR) networks and next generation wireless networks (NGWNs). Spectrum sensing operation allows wireless nodes to identify vacant bands so that radio frequency (RF) spectrum could be used more efficiently. It is clear that a powerful spectrum sensing method equipped with an effective prediction strategy will carry utilization of the RF spectrum to the utmost level. Analysis of the performances of prediction strategies plays a critical role in quantifying the efficiency of the overall spectrum sensing operation. Therefore, in this study, autoregressive process-based prediction strategy for energy detection is investigated. It is shown that prediction error variance relies heavily on both the intercept of the autoregressive model and the threshold value selected. Theoretical findings are validated and verified by measurement data which are obtained by capturing the complete Global System for Mobile (GSM) downlink band at Nyquist rate of in-phase/quadrature (I/Q) level. Results and relevant discussions are provided along with future research directions as well.
机译:频谱感测被认为是认知无线电(CR)网络和下一代无线网络(NGWN)的最重要任务。频谱感测操作允许无线节点识别空闲频段,以便可以更有效地使用射频(RF)频谱。显然,配备有有效预测策略的强大频谱感测方法将最大限度地利用RF频谱。预测策略性能的分析在量化整体频谱感测操作的效率方面起着至关重要的作用。因此,在这项研究中,研究了基于自回归过程的能量检测预测策略。结果表明,预测误差方差很大程度上取决于自回归模型的截距和所选的阈值。理论发现是通过测量数据验证和验证的,这些数据是通过以Nyquist同相/正交(I / Q)速率捕获完整的全球移动系统(GSM)下行链路频带而获得的。还提供了结果和相关讨论以及未来的研究方向。

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