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Energy detector based spectrum sensing by adaptive threshold for low SNR in CR networks

机译:基于能量检测器基于CR网络低SNR的自适应阈值

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Cognitive radio now-a-days has opened a new horizon for researchers to mitigate the up-growing demand for RF spectrum within our limited resources. The threshold plays very important role for sensing process in energy based detectors as it is widely used in CR network due to its fast performance and ability to perform without any prior knowledge or information. Conventional energy detectors has fixed threshold which performs very poor in low SNR conditions for achieving targeted performance. In this paper, we propose an adaptive threshold method consists of two control parameters to adapt the requirements utilizing targeted probability of detection and false alarm. To prove the effectiveness of our proposed method, we first determine thresholds based on different principles like Constant Detection Rate (CDR), Constant False Alarm Rate (CFAR) and Minimizing spectrum sensing error (MSSE) from Berkeley model for low SNR and then compare it with these thresholds and exhibit promising improvements. Comparative results from simulation show the variety of thresholds can be utilized by our method to cope up with the requirement efficiently which leads to improve the throughput by decreasing the number of samples which means the sensing time while protecting the primary user and avoiding the collision probability.
机译:现在,认知收音机现在已经开辟了一个新的地平线,用于研究人员,以减轻我们有限资源内对RF谱的上涨需求。对于在基于能量的探测器中感测过程中,阈值起着非常重要的作用,因为它由于其快速性能和在没有任何先前知识或信息的情况下而在CR网络中广泛使用。传统的能量探测器具有固定阈值,其在低SNR条件下执行非常差的阈值,以实现目标性能。在本文中,我们提出了一种自适应阈值方法,包括两个控制参数,以适应利用检测和误报的目标概率。为了证明我们提出的方法的有效性,我们首先根据恒定检测率(CDR),常数假报警速率(CFAR),恒定误报率(CFAR)和从伯克利模型的频谱传感误差(MSSE)以低SNR来确定阈值,然后比较它具有这些门槛并表现出有希望的改进。来自仿真的比较结果显示了我们的方法可以利用各种阈值,以便有效地应对要求,这导致通过降低样品的数量来提高吞吐量,这意味着保护主用户的感测时间并避免碰撞概率。

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