基于包络跟踪和信号矩的频谱传感

D. K. Sunil, S. L. Sabat
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引用次数: 1

摘要

频谱感知是认知无线电体系结构的重要组成部分之一。能量检测(ED)和协方差绝对值(CAV)是频谱感知中比较有名的算法。然而,CAV在检测相关信号方面是有效的,而ED则受到信噪比墙的限制。本文提出了一种M4-Edge算法来克服CAV和ED算法的局限性。该算法在时域内跟踪主用户突发信号的包络。对包络线的第四个中心矩进行评估并与阈值进行比较,以检测突发的上升沿和下降沿,从而检测信号的存在。此外,在Xilinx Vertex 6现场可编程门阵列开发板上实现了该算法,以评估其实时性能。在实时情况下,将受加性高斯白噪声(AWGN)破坏的BFSK和DVBT信号作为待检测的主要用户信号,与ED和CAV算法进行性能比较。检测概率、感知时间和资源利用率是衡量算法效率的指标。在其信噪比能力范围内,所有三种算法的传感时间在2到4毫秒之间变化。ED的FPGA资源利用率最低,M4-Edge算法的FPGA资源利用率最高。在信噪比(SNR)为- 12 ~ +10 dB的范围内,该算法优于ED,性能与CAV相当。该算法还具有在信号不相关时性能良好的优点。实验结果表明,对于(数字视频广播地面)DVBT信号,在信噪比为- 12dB时,M4-Edge算法检测到信号的概率为0.9,而CAV算法由于信号缺乏相关性而无法检测到信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectrum sensing using envelope tracking and signal moment
Spectrum sensing is one of the major component of the cognitive radio architecture. Energy Detection (ED) and Covariance Absolute Value(CAV) are well known algorithms for spectrum sensing. However, CAV is efficient for sensing correlated signals whereas ED suffers from SNR Wall limitation. In this paper, we propose an M4-Edge algorithm to overcome the limitations of CAV and ED algorithms. The proposed algorithm tracks the envelope of the signal burst, of the primary user, in the time domain. The fourth central moment of the envelope is evaluated and compared with a threshold to detect the rising and falling edges of the burst and hence detecting the presence of signal. Further, the algorithm is implemented on a Xilinx Vertex 6 Field Programmable Gate Array development board for evaluating its real time performance. In the real time, the performance of the proposed algorithm is compared with ED and CAV algorithm by cosidering both BFSK and DVBT signal corrupted by Additive White Gaussian Noise (AWGN) and flat fading, as the Primary user signal to be sensed. The probability of detection, sensing time and resource utilisation are used as the metrics for measuring the efficiency of the algorithms. The sensing time for all three algorithms vary between 2 to 4 milliseconds within their SNR capability envelopes. The FPGA resource utilization is lowest for ED and highest for M4-Edge algorithm. The proposed algorithm outperforms ED and has equivalent performance to CAV in Signal-to-Noise-Ratio (SNR) range of −12 to +10 dB. The proposed algorithm has the additional benefit that it performs well when the signal is not correlated. The experimental results reveal that, in the case of the (Digital Video Broadcast Terrestrial) DVBT signal, the proposed M4-Edge algorithm detects the signal with probability of detection 0.9 at −12dB SNR, whereas CAV algorithm fails to detect, due to lack of correlation in the signal.
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