基于EMD和gru的数据重构混合网络流量预测模型

Shuang Du, Zhanqi Xu, Jianxin Lv
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引用次数: 3

摘要

网络流量可以反映整个网络的运行状况和资源瓶颈。对未来网络的准确预测有助于网络维护、网络优化、路由策略设计、负载均衡、协议设计和异常检测。然而,现代网络流量的自相似性、周期性、混沌性、多尺度性等特点给网络行为预测带来了挑战。现有的预测模型只关注自相似性和突发性,缺乏对网络流量特征更准确和全面的描述。本文提出了一种基于经验模态分解(EMD)和门控循环单元(GRU)神经网络的数据重构预测模型。首先,通过补缺点和剔除离群值的方法重构交通数据;然后,我们通过EMD将重建的交通数据分解成多个分量,并使用每个分量训练相应的GRU神经网络。最后,将各分量的预测值进行组合得到最终结果。数值结果表明,该预测模型比现有模型具有更高的精度和更稳定的性能。
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An EMD- and GRU-based hybrid network traffic prediction model with data reconstruction
Network traffic can reflect the operating status and resource bottleneck of the entire network. Accurate prediction of the future network is helpful in network maintenance, network optimization, routing policy design, load balancing, protocol design, and anomaly detection. However, the self-similarity, periodicity, chaos, multi-scale, and other characteristics of modern network traffic make it challenging to predict network behaviors. The available prediction models focus only on self-similarity and burstiness, lacking a more accurate and comprehensive description of the characteristics of network traffic. In this paper, we propose a prediction model based on Empirical Mode Decomposition (EMD) and the Gated Recurrent Unit (GRU) neural network with data reconstruction. First, the traffic data are reconstructed by complementing missing-points and eliminating outliers. Then, we decompose the reconstructed traffic data into several components through EMD and use each component to train the corresponding GRU neural network. Finally, the predicted values of all components are combined to get the final result. Numerical results show that the proposed prediction model offers higher accuracy and more stable performance than the state-of-the-art models.
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