基于空间特征融合的网络流量预测研究

Junbo Li, Jianxin Zhou, Ning Zhou
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引用次数: 0

摘要

网络流量预测对运营商的日常网络运营和维护决策至关重要。然而,网络流量的非线性、突发性和周期性,以及网络节点之间相当大的地理相关性,给可靠的网络流量预测带来了很大的障碍。现有的流量预测方法大多采用预定义的图或节点嵌入来提取网络节点之间的空间相关性。然而,这两种方法都不能完全提取这种空间相关性。此外,在利用LSTM提取时间特征时,忽略了中间时间步长输出,导致部分时间特征丢失。本文的网络模型通过双图形注意力模块提取空间相关性,通过LSTM-Attention和TCN模块提取时间特征,可以更好地从网络流量数据中提取时空特征。在Abilene数据集上对网络模型进行了训练和预测。结果表明,该方法的预测性能得到了显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on network traffic prediction based on spatial feature fusion
Forecasting network traffic is critical to operators' daily network operating and maintenance decisions. However, nonlinearity, burst, and periodicity of network traffic, as well as the considerable geographical correlation among network nodes, pose significant hurdles to reliable network traffic forecast. Most existing traffic prediction methods use pre-defined graph or node embedding to extract spatial correlation between network nodes. However, neither of these methods may be able to extract this spatial correlation completely. Furthermore, while utilizing LSTM to extract temporal features, intermediate time step output is ignored, resulting in the loss of some temporal features. The network model in the article extracts the spatial correlation by the dual graphic attention module and extracts temporal features by the LSTM-Attention and TCN modules, which can extract spatial and temporal features from the network traffic data better. The network model is trained and predicted on the Abilene data set. The results demonstrate that the prediction performance is significantly improved.
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