Downlink Throughput Prediction in LTE Cellular Networks Using Time Series Forecasting

Ali Mostafa, M. Elattar, T. Ismail
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引用次数: 3

Abstract

Long-Term Evolution (LTE) cellular networks have transformed the mobile business, as users increasingly require various network services such as video streaming, online gaming, and video conferencing. A network planning approach is required for network services to meet user expectations and meet their needs. The User DownLink (UE DL) throughput is considered the most effective Key Performance Indicator (KPI) for measuring the user experience. As a result, the forecast of UE DL throughput is essential in network dimensioning for the network planning team throughout the network design stage. The proposed system employs several KPIs to predict UE DL throughput by combining machine learning and deep learning framework for a time series forecasting rather than the traditional statistical technique based on downlink traffic only. The proposed scheme identifies the most significant KPIs that affect UE DL throughput and provides accurate results based on prediction.
基于时间序列预测的LTE蜂窝网络下行吞吐量预测
长期演进(LTE)蜂窝网络已经改变了移动业务,因为用户越来越需要各种网络服务,如视频流、在线游戏和视频会议。网络服务要满足用户的期望和需求,就需要一种网络规划方法。用户下行链路(UE DL)吞吐量被认为是衡量用户体验最有效的关键性能指标(KPI)。因此,在整个网络设计阶段,对UE DL吞吐量的预测对于网络规划团队的网络尺寸至关重要。该系统通过结合机器学习和深度学习框架进行时间序列预测,而不是仅基于下行流量的传统统计技术,采用多个kpi来预测UE DL吞吐量。该方案确定了影响UE DL吞吐量的最重要kpi,并基于预测提供了准确的结果。
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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