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Deep Learning Based Localization and HO Optimization in 5G NR Networks

机译:5G NR网络中基于深度学习的本地化和HO优化

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In the emerging 5G radio networks, beamforming-capable nodes are able to densely cover narrow areas with a high-quality signal. Such systems require high-level handover management system to proactively react to upcoming changes in signal quality, while restricting common issues such as ping-ponging or fast-shadowing of the signal. The utilization of deep learning in such a system allows for dynamic optimization of the system policies, based directly on the past behavior of the users and their channel responses. Our approach on handover optimization is purely non-deterministic, proving the idea that a self-learning network is able to efficiently manage user mobility in dense network scenario. The proposed network consists of feature extractors and dense layers. The model is trained in two stages, first serves as an initial weight setting in supervised fashion based on 3GPP model. The second stage is an optimization problem to reduce the number of unnecessary handovers while sustaining a high-quality connection. The model is also trained to predict the user location information as the second output. The presented results show that the number of handovers can be significantly reduced without decreasing the throughput of the system. The predicted location of the user has meter-level accuracy.
机译:在新兴的5G无线电网络中,具有波束成形能力的节点能够以高质量的信号密集地覆盖狭窄的区域。这样的系统需要高级切换管理系统来主动对即将出现的信号质量变化做出反应,同时限制诸如ping响应或信号的快速阴影之类的常见问题。在这样的系统中利用深度学习可以直接基于用户的过去行为及其渠道响应来动态优化系统策略。我们的切换优化方法纯粹是不确定的,证明了自学习网络能够在密集网络情况下有效管理用户移动性的想法。拟议的网络由特征提取器和密集层组成。该模型分两个阶段进行训练,首先基于3GPP模型以监督方式用作初始权重设置。第二阶段是优化问题,以在维持高质量连接的同时减少不必要的切换次数。还训练模型以预测用户位置信息作为第二输出。呈现的结果表明,可以在不降低系统吞吐量的情况下显着减少切换次数。用户的预测位置具有仪表级别的准确性。

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