基于数据驱动的B5G网络性能预测:一种图神经网络方法

Mahnoor Yaqoob, R. Trestian, H. Nguyen
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引用次数: 1

摘要

5G和超5G(B5G)网络的极致连通性、动态资源供给和质量保证需求需要先进的网络建模解决方案。我们需要能够以低成本准确预测关键性能指标(KPI)(如延迟、总延迟、抖动或丢包)的功能网络模型。图神经网络(GNN)已经显示出网络性能预测的巨大潜力,因为它们能够理解网络配置。在本文中,我们着重于提高下一代网络中相对复杂的IP传输网络场景下GNN的泛化能力。本文以RouteNet GNN为参考模型,提出了一种备选的GNN模型。我们用相对较小的网络场景来训练这两个模型,而对于评估,我们使用复杂的大型网络配置。对RouteNet和提出的GNN进行超参数调优后,结果表明我们的模型在评估阶段优于基线架构。在训练阶段未看到的场景的验证损失明显低于RouteNet。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Network Performance Prediction for B5G Networks: A Graph Neural Network Approach
Extreme connectivity, dynamic resource provisioning and demand of quality assurance in 5G and Beyond 5G(B5G) networks calls for advance network modeling solutions. We need functional network models that are able to produce accurate prediction of Key Performance Indicators (KPI) such as latency, overall delay, jitter or packet loss at low cost. Graph Neural Networks (GNN) have already shown great potential for network performance prediction, because of their ability to understand the network configurations. In this paper, we focus on improving the generalization capabilities of GNN in relatively complex IP transport network scenarios of future generation networks. We take RouteNet GNN as a reference model and present an alternative GNN. We train both models with relatively smaller network scenarios while for evaluation we use complex and large network configurations. After hyper-parameter tuning for RouteNet and proposed GNN, the results show that our model outperforms baseline architecture in evaluation phase. The validation losses for scenarios not seen during training phase, are significantly lower than the RouteNet.
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