Rush Hour Capacity Enhancement in 5G Network Based on Hot Spot Floating Prediction

Shoufeng Wang, Fan Li, Hao Ni, Lexi Xu, Meifang Jing, Junyi Yu, Xidong Wang
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引用次数: 2

Abstract

Rush hour network capacity enhancement is one of the most hard-to-solve problems in the field of network optimization. With the bust of data traffic requirement in cellular communication, 5G network will face this challenge in future. However, there is few effective solutions to this problem for 5G network optimization. In this paper, a novel solution based on hot spot floating prediction is proposed. Our solution consists of a traffic prediction method for hot spot floating trend estimation, and a semi-dynamic distributed unit (DU) and active antenna unit (AAU) mapping to fit the forecasted high traffic burst with proper DU-AAU mapping. The proposed solution could fit real network irregular gNB distribution. Simulation outcomes indicate that the hot spot floating prediction precision outperforms around 10% in normalized root mean squired error with the existing prediction methods, and our semi-dynamic DU-AAU mapping solution receives a 20% throughput gain on average compared with that without DU-AAU mapping network solution.
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基于热点浮动预测的5G网络高峰时段容量增强
高峰时段网络容量提升是网络优化领域最难解决的问题之一。随着蜂窝通信中数据流量需求的激增,未来5G网络将面临这一挑战。然而,对于5G网络的优化,目前还没有有效的解决方案。本文提出了一种基于热点浮动预测的解决方案。我们的解决方案包括一种用于热点浮动趋势估计的流量预测方法,以及一种半动态分布单元(DU)和有源天线单元(AAU)映射,通过适当的DU-AAU映射来拟合预测的高流量突发。所提出的解决方案能够很好地拟合实际网络中gNB的不规则分布。仿真结果表明,热点浮动预测精度比现有预测方法的归一化均方根误差提高了10%左右,并且我们的半动态DU-AAU映射网络方案比没有DU-AAU映射网络方案的吞吐量平均提高了20%。
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