Q-learning Approach for Load-balancing in Software Defined Networks

Deepal Tennakoon, S. Karunarathna, B. Udugama
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引用次数: 8

Abstract

—In this paper, we propose a Q-Learning approach for load balancing in Software Defined Networks to reduce the number of Unsatisfied Users in a 5G network. This solution integrates Q-Learning techniques with a fairness function to improve the user experience at peak traffic conditions. With typical high rates offered by 5G and future networks single user behavior shall have a significant impact on the Quality of Service (QoS) on the rest of the users. Therefore, we are in need of responsive networks based on their utilization and on the number of users occupied. In this paper we classify users into different groups and normalize the resources to provide the best QoS. The simulation results verify the improvement in terms of the number of Unsatisfied Users and of the connections dropped. Additionally, it enhances per-flow resource allocation while avoiding over-utilization of certain network resources. In a nutshell, this proposal will serve any future network with high traffic conditions to deliver the best QoS to their end users.
软件定义网络负载均衡的q -学习方法
在本文中,我们提出了一种用于软件定义网络负载平衡的Q-Learning方法,以减少5G网络中不满意用户的数量。该解决方案将Q-Learning技术与公平性功能相结合,提高了高峰流量下的用户体验。在5G和未来网络提供的典型高速率下,单个用户的行为将对其他用户的服务质量(QoS)产生重大影响。因此,我们需要基于其利用率和占用的用户数量的响应性网络。在本文中,我们将用户划分为不同的组,并对资源进行规范化以提供最佳的QoS。仿真结果验证了在不满意用户数量和断开连接数量方面的改进。此外,它增强了每个流的资源分配,同时避免了某些网络资源的过度使用。简而言之,该提案将服务于任何未来具有高流量条件的网络,为其最终用户提供最佳的QoS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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