Load Balancing Algorithm of Controller Based on SDN Architecture Under Machine Learning

Siyuan Liang, Wenli Jiang, Fangli Zhao, Feng Zhao
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引用次数: 7

Abstract

Abstract With the rapid development of cloud computing and other related services, higher requirements are put forward for network transmission and delay. Due to the inherent distributed characteristics of traditional networks, machine learning technology is difficult to be applied and deployed in network control. The emergence of SDN technology provides new opportunities and challenges for the application of machine learning technology in network management. A load balancing algorithm of Internet of things controller based on data center SDN architecture is proposed. The Bayesian network is used to predict the degree of load congestion, combining reinforcement learning algorithm to make optimal action decision, self-adjusting parameter weight to adjust the controller load congestion, to achieve load balance, improve network security and stability.
机器学习下基于SDN架构的控制器负载均衡算法
随着云计算等相关业务的快速发展,对网络传输和时延提出了更高的要求。由于传统网络固有的分布式特性,机器学习技术难以在网络控制中得到应用和部署。SDN技术的出现为机器学习技术在网络管理中的应用提供了新的机遇和挑战。提出了一种基于数据中心SDN架构的物联网控制器负载均衡算法。采用贝叶斯网络预测负载拥塞程度,结合强化学习算法做出最优动作决策,自调整参数权值调整控制器负载拥塞情况,达到负载均衡,提高网络的安全性和稳定性。
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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