Neural Network Multipath Routing in Software Defined Networks Based on Genetic Algorithm

D. A. Perepelkin, M. Ivanchikova, V. T. Nguyen
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Abstract

Currently, a wide demand for the implementation and use of various cloud solutions is a modern trend and the driving force behind the development of network technologies. The growth of cloud application services delivered through data centers with varying network traffic needs demonstrates the limitations of traditional routing and load balancing methods. The combination of the advantages of software defined networks (SDN) technology and artificial intelligence (AI) methods ensures efficient management and operation of computer network resources. The paper proposes an approach to neural network multipath routing in SDN based on a genetic algorithm. The architecture and model of an artificial neural network has been developed to solve the problem of multipath routing in the SDN, which is able to predict the shortest paths based on the metrics of communication links. To optimize the hyperparameters of the neural network model, it is proposed to use a modified genetic algorithm. A visual software system SDNLoadBalancer has been developed and an experimental SDN topology has been designed, which makes it possible to study in detail the processes of neural network multipath routing in SDN based on the proposed approach. The obtained results show that the proposed neural network model has the ability to predict routes with high accuracy in real time, which makes it possible to implement various load balancing schemes in order to increase performance of SDN.
基于遗传算法的软件定义网络中的神经网络多路径路由选择
目前,实施和使用各种云解决方案的广泛需求是现代趋势,也是网络技术发展的驱动力。通过数据中心提供的云应用服务不断增长,对网络流量的需求也各不相同,这表明传统路由和负载平衡方法存在局限性。软件定义网络(SDN)技术和人工智能(AI)方法的优势相结合,确保了计算机网络资源的高效管理和运行。本文提出了一种基于遗传算法的 SDN 神经网络多路径路由方法。为了解决 SDN 中的多路径路由问题,本文开发了人工神经网络的架构和模型,它能够根据通信链路的指标预测最短路径。为了优化神经网络模型的超参数,建议使用改进的遗传算法。开发了一个可视化软件系统 SDNLoadBalancer,并设计了一个试验性 SDN 拓扑,从而可以详细研究基于所提方法的 SDN 中神经网络多路径路由过程。研究结果表明,所提出的神经网络模型能够实时、高精度地预测路由,从而可以实施各种负载平衡方案,提高 SDN 的性能。
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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