认知无线电网络中硬组合方案的多阶段交叉熵优化算法

W. Saad, M. Ismail, R. Nordin, Ayman A. El-Saleh, N. Ramli
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引用次数: 2

摘要

频谱感知优化是在满足约束条件的前提下,寻找一组最优的感知参数,使优化目标最大化的过程。采用协同频谱感知(CSS)方案,提高了认知无线网络(CRN)的检测精度。然而,增加SU的数量必然会增加系统的协作开销,从而降低CRN的吞吐量。提出了多阶段交叉熵(MSCE)优化算法,优化融合中心全局检测概率(FC)和可实现吞吐量之间的权衡,并将结果与遗传算法(GA)和粒子群算法(PSO)进行了比较。该方法基于交叉熵(CE)优化方法。一个双目标(BO)函数已经制定了静态PU信号状态的情况下。数值结果表明,与遗传算法、粒子群算法和硬决策组合(HDC)规则相比,MSCE在可实现的PU检测率方面具有更高的性能。此外,基于BO-MSCE优化系统的hdc规则在OR、and和Majority规则上的适应度得分分别高于GA和PSO。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-stage cross entropy optimization algorithm for hard combining schemes in cognitive radio network
Spectrum sensing optimization is the process of finding the optimal set of sensing parameters in order to maximize the optimization objective while meet the restrictions imposed. The detection accuracy of a cognitive radio network (CRN) improves through using a cooperative spectrum sensing (CSS) scheme. However, increasing the number of SU necessitates a growth in the cooperation overhead of the system leading to degradation the throughput of the CRN. Multi stage-cross entropy (MSCE) optimization algorithm has been proposed to optimize the trade-off between global probability of detection at fusion center (FC) and achievable throughput in cooperative CRNs, and then compared the results with genetic algorithm (GA) and particle swarm optimization (PSO) algorithms. The proposed approach is based on cross entropy (CE) optimization method. A bi-objective (BO) function have been formulated for static PU signal state scenarios. Numerical results show that the MSCE performance is superior in terms of achievable PU detection rate when compared with GA, PSO and hard decision combining (HDC) rules. Additionally, the BO-MSCE optimization system based-HDC rules achieve a best fitness score higher than that of the GA and PSO for the OR, AND, and Majority rules, respectively.
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