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A cooperative spectrum sensing scheme using multiobjective hybrid IWO/PSO algorithm in cognitive radio networks

机译:一种在认知无线电网络中使用多目标混合IWO / PSO算法的协作频谱感测方案

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摘要

Spectrum sensing is a key technology in cognitive radio networks (CRNs) to detect the unused spectrum. To achieve better performance cognitive radio (CR) users need to be able to adapt their transmission parameters according to the rapid changes in the surroundings. This paper proposes multi-objective hybrid invasive weed optimization and particle swarm optimization (MO hybrid IWO/PSO) based soft decision fusion (SDF) approach for optimizing the global decision threshold and weight coefficient vector assigned to each cognitive users (CUs) in order to maximize the detection probability, and minimize the false alarm probability and overall probability of error at the same time. Simulation results are analyzed, and performance metrics are compared qualitatively to evaluate the different multiobjective evolutionary algorithms. It is observed that our proposed method outperforms the nondominated sorting genetic algorithm (NSGA-II), multiobjective particle swarm optimization (MOPSO) and nondominated sorting invasive weed optimization (NSIWO) in the terms of detection accuracy and nondominated solutions.
机译:频谱感测是认知无线电网络(CRNS)中的关键技术,用于检测未使用的光谱。为了实现更好的性能认知无线电(CR),用户需要能够根据周围环境的快速变化来调整其传输参数。本文提出了基于多目标混合侵入杂草优化和粒子群优化(MO混合IWO / PSO)的软判决融合(SDF)方法,用于优化分配给每个认知用户(CUS)的全局判定阈值和权重系数矢量,以便最大化检测概率,并在同一时间最小化错误警报概率和错误的总体概率。分析模拟结果,定性比较了性能度量,以评估不同的多目标进化算法。观察到我们所提出的方法优于NondoMinated分类遗传算法(NSGA-II),多目标粒子群优化(MOPSO)和NondoMination分类杂草杂草优化(NSIWO),在检测精度和NondoMinate溶液中。

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