Artificial neural network based load balancing scheme for top of rack switches in optical data centers

Q3 Engineering Journal of Optical Communications Pub Date : 2023-08-03 DOI:10.1515/joc-2023-0189
Madhukar Prashant Shukla, Poonam Keswani, B. Keswani
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Abstract

Abstract Data centers serve as dedicated facilities for housing computer systems and their related components, including telecommunications and storage systems. They typically have high levels of security and environmental controls to ensure that the equipment housed within them functions optimally. Data center networks (DCNs) often employ load balancing algorithms to handle large volumes of traffic and ensure that all servers and switches are utilized equally, keeping the network running smoothly. However, as load on the server varies, therefore dynamic traffic management systems that can adjust traffic flow in real-time based on the current traffic state is required. This study presents an artificial neural network-based load balancing method. By training a feed-forward artificial neural network (ANN) using a back propagation (BP) learning algorithm, it evenly distributes workload over all of the nodes. Simulation results are also presented to prove the usefulness of the proposed load balancing mechanism. It is found that the load balancing scheme can reduce the packet blocking probability (PBP) by 10 folds and delay by about nearly 11 percent.
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基于人工神经网络的光数据中心机架顶部交换机负载均衡方案
摘要数据中心是容纳计算机系统及其相关组件(包括电信和存储系统)的专用设施。它们通常具有高度的安全和环境控制,以确保其内的设备以最佳方式运行。数据中心网络(DCN)通常采用负载平衡算法来处理大量流量,并确保所有服务器和交换机都得到平等利用,从而保持网络平稳运行。然而,由于服务器上的负载变化,因此需要能够基于当前流量状态实时调整流量的动态流量管理系统。本研究提出了一种基于人工神经网络的负载平衡方法。通过使用反向传播(BP)学习算法训练前馈人工神经网络(ANN),它将工作负载均匀分布在所有节点上。仿真结果也证明了所提出的负载平衡机制的有效性。研究发现,负载均衡方案可以将分组阻塞概率(PBP)降低10倍,延迟降低近11%。
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来源期刊
Journal of Optical Communications
Journal of Optical Communications Engineering-Electrical and Electronic Engineering
CiteScore
2.90
自引率
0.00%
发文量
86
期刊介绍: This is the journal for all scientists working in optical communications. Journal of Optical Communications was the first international publication covering all fields of optical communications with guided waves. It is the aim of the journal to serve all scientists engaged in optical communications as a comprehensive journal tailored to their needs and as a forum for their publications. The journal focuses on the main fields in optical communications
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