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Improving of 5G Wireless Networks using Optimization Method

机译:使用优化方法改进5G无线网络

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Due to the emerging of modern evolution of the Fifth Generation (5G) wireless technology and the growth of data traffic to meet various communication requirements of future applications. Routing and path planning in 5G wireless networks is one of the challenges brought about by the variation of network features like traffic load and topology which may differ in stochastic and time varying manner. However, as the mobile users’ growth, there is a need to efficient routing strategy for shortest path to forward user requests to the servers to reach services. To meet this aim, an adaptive Meta-heuristic Ant Colony Optimization (ACO) algorithm has proposed in this paper. ACO based on swarm intelligence techniques that has considered inspired algorithm by imitating the sociological attitude related to ants crowd. ACO like the other evolutionary algorithms based on population; it initiates with random solutions of the population. This work was implemented using NS3 simulation tool with different scenarios and parameters. The computational results have shown that the ACO method is better to find the optimal solution in 5G networks than the traditional inelastic way. The simulation outcome indicates the efficiency of the proposed method where the packet delivery ratio increased while the drop packets ratio and the transmission delay reduced.
机译:由于新出现了第五代(5G)无线技术的现代演变和数据流量的增长,满足未来应用的各种通信要求。在5G无线网络中的路由和路径规划是通过交通负载和拓扑等网络功能的变化所带来的挑战之一,这可能在随机和时间变化的方式不同。然而,随着移动用户的增长,需要有效地提供用于将用户请求转发到服务器的最短路径的路由策略以达到服务。为了满足此目的,本文提出了一种自适应元启发式蚁群优化(ACO)算法。 ACO基于群体智能技术,通过模仿与蚂蚁人群相关的社会学态度进行了激励算法。 ACO像其他基于人口的进化算法;它引发了随机的人口解决方案。使用具有不同方案和参数的NS3仿真工具实现此工作。计算结果表明,ACO方法最好在5G网络中找到比传统的非弹性方式的最佳解决方案。仿真结果表明,当下丢包比率和传输延迟减小时,分组输送比增加的所提出的方法的效率。

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