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Deep Learning Based Hotspot Prediction and Beam Management for Adaptive Virtual Small Cell in 5G Networks

机译:基于深度学习的5G网络自适应虚拟小型小区的热点预测和光束管理

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摘要

To meet the extremely stringent but diverse requirements of 5G, cost-effective network deployment and traffic-aware adaptive utilization of network resources are becoming essential. In this paper, a hotspot prediction based virtual small cell (VSC) operation scheme is adopted to improve both the cost efficiency and operational efficiency of 5G networks. This paper focuses on how to predict the hotspots by using deep learning, and then demonstrates how the predictions can be leveraged to support adaptive beamforming and VSC operation. We first leverage the feature extraction capabilities of deep learning and exploit use of a long short-term memory (LSTM) neural network to achieve hotspot prediction for the potential formation of the VSCs. To support the operation of VSCs, large-scale antenna array enabled hybrid beamforming is adaptively adjusted for highly directional transmission to cover these hotspot-based VSCs. Within each VSC, an appropriate user equipment is selected as a cell head to collect the intra-cell traffic in the unlicensed band and relays the aggregated traffic to the macro-cell base station by using the licensed band. Our simulation results illustrate that the proposed LSTM-based method can extract spatial and temporal traffic features of hotspot with higher accuracy, compared with some existing deep and non-deep learning approaches. Numerical results also show that VSCs with hotspot prediction and hybrid beamforming can improve the energy efficiency dramatically with flexible deployment and low latency, compared with the scenario of the convolutional fixed small cells.
机译:为了满足极其严格但多样化的5G要求,经济高效的网络部署和网络资源的交通感知自适应利用变得必不可少。本文采用了一种热点预测的虚拟小电池(VSC)操作方案来提高5G网络的成本效率和运行效率。本文侧重于如何通过使用深度学习来预测热点,然后演示如何利用预测以支持自适应波束成形和VSC操作。我们首先利用深度学习的特征提取功能,利用长期内记忆(LSTM)神经网络的利用,实现VSC潜在地层的热点预测。为了支持VSC的操作,可以自适应地调整大规模天线阵列的混合波束成形以覆盖这些基于热点的VSC。在每个VSC内,选择适当的用户设备作为小区头,以通过使用许可频带将集合流量中继到宏小区基站中的集合流量。我们的仿真结果表明,与一些现有的深度和非深度学习方法相比,所提出的基于LSTM的方法可以提取高精度的热点的空间和时间流量特征。数值结果还表明,与热点预测和混合波束形成的VSC可以随着柔性部署和低延迟而显着提高能量效率,与卷积固定的小细胞的场景相比。

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