Spatiotemporal-Enhanced Recurrent Neural Network for Network Traffic Prediction

Zhiyong Chen, Junyu Lai, Junhong Zhu, Wanyi Ma, Lianqiang Gan, Tian Xia
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Abstract

Network traffic prediction can serve as a proactive approach for network resource planning, allocation, and management. Besides, it can also be applied for load generation in digital twin networks (DTNs). This paper focuses on background traffic prediction of typical local area networks (LANs), which is vital for synchronous traffic generation in DTN. Conventional traffic prediction models are firstly reviewed. The challenges of DTN traffic prediction are analyzed. On that basis, a spatiotemporal-enhanced recurrent neural network (RNN) based approach is elaborated to accurately predict the background traffic matrices of target LANs. Experiments compare this proposed model with four baseline models, including LSTM, CNN-LSTM, ConvLSTM, and PredRNN. The results turn out that the spatiotemporal-enhanced RNN model outperforms the baselines on accuracy. In particular, it can decrease the MSE of PredRNN more than 18%, with acceptable efficiency degradation.
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用于网络流量预测的时空增强递归神经网络
网络流量预测可以作为网络资源规划、分配和管理的一种前瞻性方法。此外,该方法还可用于数字双网(DTNs)的负载生成。本文重点研究了典型局域网(LANs)的背景业务预测,这对DTN中同步业务的产生至关重要。首先回顾了传统的交通预测模型。分析了DTN流量预测面临的挑战。在此基础上,提出了一种基于时空增强递归神经网络(RNN)的目标局域网背景流量矩阵准确预测方法。实验将该模型与LSTM、CNN-LSTM、ConvLSTM和PredRNN四种基线模型进行比较。结果表明,时空增强RNN模型在精度上优于基线模型。特别是,它可以使PredRNN的MSE降低18%以上,并且效率下降是可以接受的。
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