瑞利衰落信道协同频谱感知硬决策与软数据融合方案分析

S. Nallagonda, Y. Kumar, P. Shilpa
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引用次数: 19

摘要

研究了在噪声-瑞利衰落信道中协同频谱感知的硬决策和软数据融合方案的性能。在融合中心(FC)对局部二元决策进行硬决策融合,对不同认知无线电(CR)用户获得的能量值进行软数据融合,并对主用户(PU)的状态进行最终决策。更准确地说,本文分析了各种硬决策融合方案(or规则、and规则和多数规则)和软数据融合方案(平方律选择(SLS)、最大比值组合(MRC)、平方律组合(SLC)和选择组合(SC))下CSS的性能。为此,导出了瑞利衰落信道中各种软方案下检测概率的新颖的封闭解析表达式。在不同的网络参数:时间带宽积、平均感知信道信噪比(SNR)和检测阈值下,比较了硬决策和软数据融合方案的性能。给出了软、硬方案总错误率最小的最佳检测阈值。
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Analysis of Hard-Decision and Soft-Data Fusion Schemes for Cooperative Spectrum Sensing in Rayleigh Fading Channel
This paper investigates the performance of hard-decision and soft-data fusion schemes for a cooperative spectrum sensing (CSS) in noisy-Rayleigh faded channel. Hard-decision fusion operations on the local binary decisions and soft-data fusion operations on the energy values obtained from the different cognitive radio (CR) users are performed at fusion center (FC)and a final decision on the status of a primary user (PU) is made. More precisely, the performance of CSS with various hard-decision fusion schemes (OR-rule, AND-rule, and majority-rule) and soft-data fusion schemes (square law selection (SLS), maximal ratio combining (MRC), square law combining (SLC), and selection combining (SC)) is analyzed in this work. Towardsthat, novel and closed-form analytic expressions are derived for probability of detection under all soft schemes in Rayleigh fading channel. A comparative performance between hard-decision and soft-data fusion schemes has been illustrated for different network parameters: time-band width product, average sensingchannel signal-to-noise ratio (SNR), and detection threshold. The optimal detection thresholds for which minimum total error rate is obtained for both soft and hard schemes are also indicated.
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