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A Machine Learning Approach of Load Balance Routing to Support Next-Generation Wireless Networks

机译:支持下一代无线网络的负载均衡路由的机器学习方法

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With the development of Next-generation Wireless Networks (NWNs), delay-sensitive traffic triggered by mobile applications (such as video stream and online games) will become an important part of the NWNs. With the increasing demand for massive video content transmission and good quality of users' experience, NWNs have to face up to some serious challenges. As a remedy, efficient routing schemes are capable of achieving load balance. In this article, we propose a load balance routing based on machine learning. First, a dimension-reduced vector matrix can be obtained from the original adjacency matrix of the network topology by Principal Component Analysis (PCA). Then, a neural network is used for the prediction of the network queue status, which can be used as a metric for making intelligent routing decisions. Finally, a load balance routing algorithm considering Queue Utilization (QU) is designed accordingly. Simulation results show the performance of our proposed machine learning-based routing scheme compared to the shortest path algorithm (Bellman-Ford (BF)) and its variant (QUBF) in terms of the packet loss ratio, the throughput and the delay.
机译:随着下一代无线网络(NWN)的发展,由移动应用程序(例如视频流和在线游戏)触发的对延迟敏感的流量将成为NWN的重要组成部分。随着海量视频内容传输需求的增长和用户体验质量的提高,NWN必须面对一些严峻的挑战。作为补救措施,有效的路由方案能够实现负载平衡。在本文中,我们提出了一种基于机器学习的负载平衡路由。首先,可以通过主成分分析(PCA)从网络拓扑的原始邻接矩阵中获得降维向量矩阵。然后,将神经网络用于网络队列状态的预测,该神经网络可以用作制定智能路由决策的度量。最后,设计了一种考虑队列利用率(QU)的负载均衡路由算法。仿真结果表明,相对于最短路径算法(Bellman-Ford(BF))及其变体(QUBF),我们提出的基于机器学习的路由方案在丢包率,吞吐量和延迟方面均具有出色的性能。

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