AN IMPROVED PARTICLE SWARM OPTIMIZATION ALGORITHM FOR SPECTRUM ALLOCATION IN COGNITIVE RADIO NETWORKS

Kurdistan Mohsin Salih, Mohammed Ahmed Shakir, Sagvan Ali Saleh
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Abstract

The seriousness of the spectrum scarcity has increased dramatically due to the rapid increase of wireless services. The key enabling technology that can be viewed as a novel approach for utilizing the spectrum more efficiently is known as Cognitive Radio. Therefore, assigning the spectrum opportunistically to the unlicensed users without interfering with the licensed users, concurrently with maximizing the spectrum utilization is addressed as a major challenge problem in cognitive radio networks. In this paper, an improved metaheuristic optimization algorithm has been proposed to solve this problem that contingent on a graph coloring model. The proposed approach is a hybrid algorithm composed of a Particle Swarm Optimization algorithm with Random Neighborhood Search. The key objective function is maximizing the spectrum utilization in the cognitive radio networks with the subjected constraints. MATLAB R2021a was used for conducting the simulation. The proposed hybrid algorithm improved the system utilization by 1.23% compared to Particle Swarm Optimization algorithm, 5.57% compared to Random Neighborhood Search, 7.9% compared to Color Sensitive Graph Coloring algorithm, and 27.33% compared to Greedy algorithm. Moreover, the system performance was evaluated with various deployment scenarios of the primary users, secondary users, and channels for investigating the impact of varying these parameters on the system performance.
一种改进的粒子群算法在认知无线电网络中的频谱分配
由于无线业务的快速增长,频谱短缺的严重程度急剧增加。关键的使能技术可以被视为一种更有效地利用频谱的新方法,被称为认知无线电。因此,如何在不干扰已授权用户的情况下,将频谱机会性地分配给未授权用户,同时最大限度地提高频谱利用率,是认知无线电网络中的一个重大挑战问题。本文提出了一种改进的元启发式优化算法来解决这一依赖于图着色模型的问题。该方法是由粒子群优化算法和随机邻域搜索算法组成的混合算法。在受约束的认知无线电网络中,频谱利用率最大化是其关键目标函数。采用MATLAB R2021a进行仿真。该混合算法比粒子群优化算法提高1.23%,比随机邻域搜索算法提高5.57%,比颜色敏感图着色算法提高7.9%,比贪婪算法提高27.33%。此外,通过主用户、辅助用户和通道的各种部署场景来评估系统性能,以调查改变这些参数对系统性能的影响。
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35
审稿时长
6 weeks
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