用于聚合网络流量预测的深度学习模型

A. Lazaris, V. Prasanna
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引用次数: 17

摘要

在短时间内生成网络流量预测的能力对于许多网络管理任务(如流量工程、异常检测和流量矩阵估计)至关重要。然而,由于网络流量来源的多样性,构建能够在短时间尺度上预测现代网络流量的模型并不是一项简单的任务。在本文中,我们提出了一个使用长短期记忆(LSTM)神经网络进行全网络链路级流量预测的框架。为了预测未来的链路吞吐量,我们提出的框架利用了可以由软件定义网络(SDN)的控制器或遗留网络中的SNMP测量轻松收集的链路统计信息。我们实现了lstm的几种变体,并将它们的性能与传统基线模型进行了比较。我们使用来自Tier-1 ISP的真实网络轨迹进行的评估研究表明,lstm可以非常准确地预测链路吞吐量,优于各种流量聚合级别和时间尺度的基线。
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Deep Learning Models For Aggregated Network Traffic Prediction
The ability to generate network traffic predictions at short time scales is crucial for many network management tasks such as traffic engineering, anomaly detection, and traffic matrix estimation. However, building models that are able to predict the traffic from modern networks at short time scales is not a trivial task due to the diversity of the network traffic sources. In this paper, we present a framework for network-wide link-level traffic prediction using Long Short-Term Memory (LSTM) neural networks. Our proposed framework leverages link statistics that can be easily collected either by the controller of a Software Defined Network (SDN), or by SNMP measurements in a legacy network, in order to predict future link throughputs. We implement several variations of LSTMs and compare their performance with traditional baseline models. Our evaluation study using real network traces from a Tier-1 ISP illustrates that LSTMs can predict link throughputs with very high accuracy outperforming the baselines for various traffic aggregation levels and time scales.
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