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A deep learning method based on an attention mechanism for wireless network traffic prediction

机译:一种基于无线网络流量预测注意机制的深度学习方法

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摘要

With the rapid development of wireless networks, the self-management and active adjustment capabilities of base stations have become crucial. The accurate prediction of wireless network traffic is an important prerequisite for intelligent base stations. Traffic data has a high degree of nonlinearity and complexity, which is characterized by temporal and spatial correlation. Most of the existing forecasting methods do not consider both the temporal and spatial situations in the process of modeling traffic data. In this paper, a spatio-temporal convolutional network (LA-ResNet) is presented that uses an attention mechanism to solve spatio-temporal modeling and predict wireless network traffic. LA-ResNet consists of three parts: the residual network, the recurrent neural network, and an attention mechanism. Using this method, the temporal and spatial characteristics of wireless network traffic data are modeled and its related features are strengthened. Thus, the spatio-temporal correlation of wireless network traffic data can be effectively captured. The residual network can capture spatial features in the data. The combination of the recurrent neural network and the attention mechanism can capture the temporal dependence of the data. Finally, experiments on a real data set show that the prediction effect of the LA-ResNet model is better than the other existing prediction methods, such as RNN and 3DCNN, and the accurate prediction of traffic can be realized. (C) 2020 Elsevier B.V. All rights reserved.
机译:随着无线网络的快速发展,基站的自我管理和主动调整能力变得至关重要。无线网络流量的准确预测是智能基站的重要前提。交通数据具有高度的非线性和复杂性,其特征在于时间和空间相关性。大多数现有的预测方法都不考虑建模流量数据的过程中的时间和空间情况。本文介绍了一种使用注意机制来解决时空模型和预测无线网络流量的时空卷积网络(LA-RESET)。 La-Reset由三部分组成:剩余网络,经常性神经网络和注意机制。使用此方法,建模无线网络流量数据的时间和空间特性,并加强了其相关特征。因此,可以有效地捕获无线网络业务数据的时空相关性。剩余网络可以捕获数据中的空间功能。经常性神经网络和注意机制的组合可以捕获数据的时间依赖性。最后,在真实数据集上的实验表明,LA-Reset模型的预测效果优于其他现有预测方法,例如RNN和3DCN,并且可以实现交通的准确预测。 (c)2020 Elsevier B.v.保留所有权利。

著录项

  • 来源
    《Ad hoc networks》 |2020年第10期|102258.1-102258.11|共11页
  • 作者单位

    China Univ Min & Technol Sch Comp Sci & Technol Xuzhou 221116 Jiangsu Peoples R China|Minist Educ Peoples Republ China Mine Digitizat Engn Res Ctr Beijing Peoples R China;

    China Univ Min & Technol Sch Comp Sci & Technol Xuzhou 221116 Jiangsu Peoples R China;

    China Univ Min & Technol Sch Comp Sci & Technol Xuzhou 221116 Jiangsu Peoples R China;

    China Univ Min & Technol Sch Comp Sci & Technol Xuzhou 221116 Jiangsu Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Residual network; Wireless network traffic prediction; Recurrent neural network; Attention;

    机译:剩余网络;无线网络流量预测;经常性神经网络;注意力;

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