Deep-Mobility: A Deep Learning Approach for an Efficient and Reliable 5G Handover

R. Paropkari, Anurag Thantharate, C. Beard
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引用次数: 4

Abstract

5G cellular networks are being deployed all over the world and this architecture supports ultra-dense network (UDN) deployment. Small cells have a very important role in providing 5G connectivity to the end users. Exponential increases in devices, data and network demands make it mandatory for the service providers to manage handovers better, to cater to the services that a user desire. In contrast to any traditional handover improvement scheme, we develop a ‘Deep-Mobility’ model by implementing a deep learning neural network (DLNN) to manage network mobility, utilizing in-network deep learning and prediction. We use network key performance indicators (KPIs) to train our model to analyze network traffic and handover requirements. In this method, (i) RF signal conditions are continuously observed and tracked using deep learning neural networks such as the Recurrent neural network (RNN) or Long Short-Term Memory network (LSTM) and (ii) system level inputs are also considered in conjunction, to take a collective decision for a handover. We can study multiple parameters and interactions between system events along with the user mobility, which would then trigger a handoff in any given scenario. Here, we show the fundamental modeling approach and demonstrate usefulness of our model while investigating impacts and sensitivities of certain KPIs from the user equipment (UE) and network side.
深度移动性:实现高效可靠5G切换的深度学习方法
5G蜂窝网络正在全球范围内部署,这种架构支持超密集网络(UDN)部署。小型基站在向最终用户提供5G连接方面发挥着非常重要的作用。设备、数据和网络需求的指数级增长使得服务提供商必须更好地管理移交,以满足用户所需的服务。与任何传统的切换改进方案相比,我们通过实现深度学习神经网络(DLNN)来开发“深度移动性”模型,利用网络内深度学习和预测来管理网络移动性。我们使用网络关键绩效指标(kpi)来训练我们的模型来分析网络流量和切换需求。在这种方法中,(i)使用深度学习神经网络(如循环神经网络(RNN)或长短期记忆网络(LSTM))连续观察和跟踪射频信号条件,(ii)也同时考虑系统级输入,以对切换采取集体决策。我们可以研究多个参数和系统事件之间的交互以及用户移动性,然后在任何给定的场景中触发切换。在这里,我们展示了基本的建模方法,并演示了我们模型的有用性,同时从用户设备(UE)和网络端调查某些kpi的影响和敏感性。
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