基于深度学习的链路故障缓解

Shubham Khunteta, Ashok Kumar Reddy Chavva
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引用次数: 24

摘要

链路故障是网络运营商在当前系统和即将推出的5G系统中提高用户体验的主要问题。导致链路故障的因素有很多,例如切换(HO)故障、覆盖差和蜂窝拥塞。为了克服这些问题,网络运营商正在不断提高其覆盖质量。然而,减少链路故障需要对当前和下一代(5G)系统进行进一步改进。在本文中,我们研究了机器学习(ML)算法在减少链路切换故障方面的适用性。在所提出的方法中,使用递归神经网络(RNN)或长短期记忆网络(LSTM)等深度神经网络连续观察和跟踪信号条件(RSRP/RSRQ),从而将这些信号条件的行为作为另一个神经网络的输入,该神经网络作为分类器,在HO失败或成功时提前对事件进行分类。这种决策的进步使UE能够采取行动来减轻可能的链路故障。本文提出的算法和模型首次将过去的信号条件与未来的HO结果联系起来。我们展示了所提出的算法在系统模拟和现场测井数据中的性能。鉴于在5G系统的大多数链路级决策中需要UE发挥更主动的作用,本文提出的算法更具相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Based Link Failure Mitigation
Link failure is a cause of a major concern for network operators in enhancing user experience in present system and upcoming 5G systems as well. There are many factors which can cause link failures, for example Handover (HO) failures, poor coverage and congested cells. Network operators are constantly improving their coverage qualities to overcome these issues. However reducing the link failures needs further improvements for the present and next generation (5G) systems. In this paper, we study applicability of Machine Learning (ML) algorithms to reduce link failure at handover. In the method proposed, Signal conditions (RSRP/RSRQ) are continuously observed and tracked using Deep Neural Networks such as Recurrent Neural Network (RNN) or Long Short Term Memory network (LSTM) and thus behavior of these signal conditions are taken as inputs to another neural network which acts as a classifier classifying event in either HO fail or success in advance. This advance in decision allows UE to take action to mitigate the possible link failure. Algorithms and model proposed in this paper are first of its kind connecting the link between past signal conditions and future HO result. We show the performance of the proposed algorithms for both system simulated and field log data. Given the need for more proactive role of UE in most of the link level decision in 5G systems, algorithms proposed in this paper are more relevant.
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