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A Deep-Learning-Based Radio Resource Assignment Technique for 5G Ultra Dense Networks

机译:基于深度学习的5G超密集网络无线资源分配技术

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Recently, deep learning has emerged as a state-of-the-art machine learning technique with promising potential to drive significant breakthroughs in a wide range of research areas. The application of deep learning for network traffic control, however, remains immature due to the difficulty in uniquely characterizing the network traffic features as an appropriate input and output dataset to the learning structures. The network traffic features are anticipated to be even more dynamic and complex in the UDNs of the emerging 5G networks with high traffi c demands coupled with beamforming and massive MIMO technologies. Therefore, it is critical for 5G network operators to carry out radio resource control in an efficient manner instead of adopting the simple conventional F/TDD. This is because the conventional uplink-downlink configuration change in the existing dynamic TDD method, typically used for resource assignment in beamforming and massive-MIMO-based UDNs, is prone to repeated congestion. In this article, we address this issue and discuss how to leverage the deep LSTM learning technique to make localized prediction of the traffic load at the UDN base station (i.e., the eNB). Based on localized prediction, our proposed algorithm executes the appropriate action policy a priori to avoid/alleviate the congestion in an intelligent fashion. Simulation results demonstrate that our proposal outperforms the conventional method in terms of packet loss rate, throughput, and MOS.
机译:近年来,深度学习已成为一种最先进的机器学习技术,具有有望在广泛的研究领域中取得重大突破的潜力。然而,由于难以将网络流量特征唯一地表征为学习结构的适当输入和输出数据集,因此深度学习在网络流量控制中的应用仍然不成熟。在具有高流量需求以及波束成形和大规模MIMO技术的新兴5G网络的UDN中,预计网络流量功能将更加动态和复杂。因此,对于5G网络运营商而言,至关重要的是以有效的方式进行无线电资源控制,而不是采用简单的常规F / TDD。这是因为现有动态TDD方法中的常规上行链路-下行链路配置更改(通常用于波束赋形和基于大规模MIMO的UDN中的资源分配)容易重复出现拥塞。在本文中,我们解决了这个问题并讨论了如何利用深度LSTM学习技术对UDN基站(即eNB)的流量负载进行本地化预测。基于局部预测,我们提出的算法会先验地执行适当的操作策略,以智能方式避免/缓解拥塞。仿真结果表明,我们的建议在丢包率,吞吐量和MOS方面均优于传统方法。

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