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New Models for Long-Term Internet Traffic Forecasting Using Artificial Neural Networks and Flow Based Information

机译:使用人工神经网络和基于流的信息的长期互联网流量预测的新模型

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This paper investigates the use of ensembles of artificial neural networks in predicting long-term Internet traffic. It discusses a method for collecting traffic information based on flows, obtained with the NetFlow protocol, to build the time series. It also proposes four traffic forecasting models based on ensembles of TLFNs (Time-Lagged FeedFoward Networks), each one differing from the others by the way it reads the training data and by the number of artificial neural networks used in the forecasts. The proposed prediction models are confronted with the classic method of Holt-Winters, by comparing the mean absolute percentage error (MAPE) of the forecasts. It is concluded that the proposed models perform well, and can be considered a good option for planning network links that transport Internet traffic.
机译:本文调查了人工神经网络集合在预测长期互联网交通中的使用。它讨论了一种基于使用Netflow协议获得的流量的流量信息的方法来构建时间序列。它还提出了基于TLFNS的集合(时间滞后的FeedFoward网络)的四种流量预测模型,通过其读取培训数据以及预测中使用的人工神经网络的数量不同的每个交通预测模型。通过比较预测的平均绝对百分比误差(MAPE),所提出的预测模型与Holt-Winters的经典方法面对。结论是,拟议的模型表现良好,并且可以被视为规划运输互联网流量的网络链接的好选择。

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