Mobile Traffic Prediction Based on Densely Connected CNN for Cellular Networks in Highway Scenarios

Dongtian Liang, Jiaxin Zhang, Shuai Jiang, Xing Zhang, Jie Wu, Qi Sun
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引用次数: 9

Abstract

With the explosive growth of communication traffic and the arrival of 5G technologies, wireless big data has become an enabler for operators to manage and improve their wireless communication systems. Although many mobile traffic prediction methods have been proposed in the past few years, few prediction methods combine with the distribution features of base stations to predict the mobile traffic of cellular networks. In this paper, by leveraging on the 4G mobile data collected from one typical city in southeastern China, we propose a mobile traffic prediction approach based on one-dimensional densely connected convolutional neural networks (CNN) to predict the mobile traffic of base stations in highway scenarios. After data acquisition, data analysis and modeling, comparisons are made between the proposed mobile traffic prediction approach and the widely used prediction approaches based on machine learning models like LSTM and SVR, and numerical results show that the proposed mobile traffic prediction approach has outstanding performances.
基于密集连接CNN的高速公路蜂窝网络移动交通预测
随着通信流量的爆炸式增长和5G技术的到来,无线大数据已经成为运营商管理和改进无线通信系统的助力。虽然近年来提出了许多移动流量预测方法,但很少有预测方法能结合基站的分布特点对蜂窝网络的移动流量进行预测。本文利用中国东南部某典型城市的4G移动数据,提出了一种基于一维密集连接卷积神经网络(CNN)的高速公路场景下基站移动流量预测方法。通过数据采集、数据分析和建模,将本文提出的移动流量预测方法与目前广泛使用的基于LSTM、SVR等机器学习模型的预测方法进行比较,数值结果表明本文提出的移动流量预测方法具有优异的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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