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Resource optimizer for Cognitive Network using multi-objective particle swarm system

机译:使用多目标粒子群系统的认知网络资源优化器

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Recently, Cognitive network has drawn the attention as a promising technology to enhance communication system performance by efficiently utilizing system resources. It provides prompt response to dynamic changes. In this paper, a modified multi-objective particle swarm optimization (M-MOPSO) is proposed in Cognitive IP Multimedia Subsystem (CogIMS) to improve the global network performance. The implementation and evaluation results of the system design using the algorithm is provided and compared with those obtained using Non-Dominated Sorting Genetic Algorithm (NSGA-II). Extensive simulations are carried out by using MATLAB software showed that M-MOPSO is comparable to NSGA-II in the network throughput. However, on average, M-MOPSO is faster than NSGA-II by 6.25 times considering the needed computation time for algorithm convergence.
机译:最近,认知网络将注意力引起了一个有希望的技术,以通过有效利用系统资源来提高通信系统性能。它提供了提示对动态更改的响应。本文在认知IP多媒体子系统(CoGims)中提出了一种修改的多目标粒子群优化(M-MOPSO),以提高全局网络性能。提供了使用该算法的系统设计的实现和评估结果,并与使用非主导分类遗传算法(NSGA-II)获得的那些进行比较。通过使用MATLAB软件进行广泛的仿真显示M-MOPSO与网络吞吐量中的NSGA-II相当。然而,考虑到算法收敛的所需计算时间,平均而言,M-MOPSO比NSGA-II快6.25倍。

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