Performance analysis of cooperative spectrum sensing using double dynamic threshold

N. Chaudhary, R. Mahajan
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Abstract

Increased use of wireless technologies and in turn more utilization of available spectrum is subsequently leading to the increasing demand for wireless spectrum. This research work incorporates spectrum sensing detection consisting of a double dynamic threshold followed by cooperative type spectrum sensing. The performance has been analyzed using two modulation schemes, quadrature-amplitude-modulation (QAM) & binary-phase-shift-keying (BPSK). Improved probability of detection has been witnessed using the double dynamic threshold where a comparison of average values of local decision (LD) and the observed value of energy (EO) has been considered instead of using direct values of local decisions and energy. Further, the probability-of-detection ( ) is found to be better with QAM as compared to the BPSK. From the results, it has been observed that the detection of primary users is also affected by the number of samples. The simulation environment considered for this work is MATLAB and the performance of cooperative spectrum sensing for 500 and 1000 samples with -9db and -12 SNR by considering different false alarm values i. e 0.1,0.3 and 0.5 has been analyzed. The further scope shall be to enhance the primary user detection by considering different QAM schemes and different SNRs.
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基于双动态阈值的协同频谱感知性能分析
无线技术使用的增加以及可用频谱的更多利用随后导致对无线频谱的需求不断增加。本研究采用双动态阈值和协同型频谱感知相结合的频谱感知检测方法。采用正交调幅(QAM)和二相移相键控(BPSK)两种调制方案对其性能进行了分析。采用双动态阈值代替局部决策和能量的直接值,考虑局部决策(LD)的平均值与观测能量(EO)的比较,提高了检测概率。此外,与BPSK相比,发现QAM的检测概率()更好。从结果中可以看出,主要用户的检测也受到样本数量的影响。本文采用MATLAB仿真环境,分析了在信噪比为-9db和-12的情况下,考虑不同虚警值(即0.1、0.3和0.5)的500和1000个样本下的协同频谱感知性能。进一步的范围应是通过考虑不同的QAM方案和不同的信噪比来增强对主用户的检测。
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来源期刊
IAES International Journal of Artificial Intelligence
IAES International Journal of Artificial Intelligence Decision Sciences-Information Systems and Management
CiteScore
3.90
自引率
0.00%
发文量
170
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