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Performance of GA in Power Allocation for Underlay Cognitive Radio Systems

机译:遗传算法在底层认知无线电系统的功率分配中的性能

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摘要

Power allocation plays a significant role in performance enhancement of cognitive radio (CR) system as it needs to not only limit the interference to primary users (PUs) but also maintains a minimum quality-of-service (QoS) requirements of secondary users (SUs) with a limited available resource. In many cases, traditional analytical optimization methods require a specific structure of objective function and constraints, hence, may not be applied directly to power allocation and also demand high computational complexity. This paper investigates the effectiveness of classical genetic algorithm (GA) in power distribution of sensing-free, location-aware underlay spectrum sharing based CR system models. GA has been implemented to optimize the various performance parameters of the system models. The performance of GA has been validated and compared with that of interior point method (IPM) and successive approximation solved by CVX toolbox. Simulation results depict that GA reaches closer to optimal value with a reduced computational time.
机译:功率分配在认知无线电(CR)系统的性能增强中起着重要作用,因为它不仅需要限制对主要用户(PU)的干扰,还需要保持次要用户(SU)的最低服务质量(QoS)要求)的可用资源有限。在许多情况下,传统的分析优化方法需要目标函数和约束的特定结构,因此可能无法直接应用于功率分配,并且还要求很高的计算复杂度。本文研究了经典遗传算法(GA)在基于CR系统模型的无感测,可感知位置的底层频谱共享的功率分配中的有效性。已实施GA,以优化系统模型的各种性能参数。 GA的性能已经过验证,并与内点法(IPM)进行了比较,并通过CVX工具箱解决了逐次逼近问题。仿真结果表明,GA减少了计算时间,从而更接近最佳值。

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