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Cross entropy algorithm for improved soft fusion-based cooperative spectrum sensing in cognitive radio networks

机译:交叉熵算法,用于改进认知无线电网络中基于软融合的协作频谱感知

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In cooperative spectrum sensing of cognitive radio based network, various methods of soft decision fusion (SDF) and hard decision fusion (HDF) schemes have been proposed to optimize the performance of detecting primary users so that they are well-protected from harmful cognitive radio access. In this paper, cross entropy (CE) based algorithm is proposed as an efficient technique for optimizing the weighting coefficients vector of an SDF-based cooperative spectrum sensing scheme. The proposed CE based algorithm is compared with existing deterministic methods as well as with an evolutionary-based genetic algorithm (GA) method. Simulation results show that the proposed CE scheme outperforms the other schemes in terms of the achievable fitness of primary users' detection probability, convergence, and stability.
机译:在基于认知无线电的网络的协作频谱感知中,已经提出了各种软决策融合(SDF)和硬决策融合(HDF)方案的方法,以优化检测主要用户的性能,从而很好地保护他们免受有害的认知无线电访问。本文提出了一种基于交叉熵(CE)的算法,作为优化基于SDF的协作频谱感知方案的加权系数向量的有效技术。将提出的基于CE的算法与现有的确定性方法以及基于进化的遗传算法(GA)进行比较。仿真结果表明,所提出的CE方案在可实现的主要用户检测概率,收敛性和稳定性方面均优于其他方案。

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