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Dynamic Load Balancing of Software-Defined Networking Based on Genetic-Ant Colony Optimization

机译:基于遗传蚁群算法的软件定义网络动态负载均衡

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摘要

Load Balancing (LB) is one of the most important tasks required to maximize network performance, scalability and robustness. Nowadays, with the emergence of Software-Defined Networking (SDN), LB for SDN has become a very important issue. SDN decouples the control plane from the data forwarding plane to implement centralized control of the whole network. LB assigns the network traffic to the resources in such a way that no one resource is overloaded and therefore the overall performance is maximized. The Ant Colony Optimization (ACO) algorithm has been recognized to be effective for LB of SDN among several existing optimization algorithms. The convergence latency and searching optimal solution are the key criteria of ACO. In this paper, a novel dynamic LB scheme that integrates genetic algorithm (GA) with ACO for further enhancing the performance of SDN is proposed. It capitalizes the merit of fast global search of GA and efficient search of an optimal solution of ACO. Computer simulation results show that the proposed scheme substantially improves the Round Robin and ACO algorithm in terms of the rate of searching optimal path, round trip time, and packet loss rate.
机译:负载平衡(LB)是最大化网络性能,可伸缩性和鲁棒性所需的最重要任务之一。如今,随着软件定义网络(SDN)的出现,SDN的LB已成为一个非常重要的问题。 SDN将控制平面与数据转发平面分离,以实现整个网络的集中控制。 LB以一种资源没有过载的方式将网络流量分配给资源,因此整体性能得以最大化。在几种现有的优化算法中,蚁群优化(ACO)算法已被认为对SDN的LB有效。收敛等待时间和搜索最优解是ACO的关键标准。本文提出了一种新的动态LB方案,该方案将遗传算法(GA)与ACO集成在一起,以进一步提高SDN的性能。它充分利用了GA快速全局搜索和ACO最佳解决方案高效搜索的优点。计算机仿真结果表明,该方案在搜索最优路径的速率,往返时间和丢包率方面都大大改进了Round Robin和ACO算法。

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