Novel Algorithm to Reduce Handover Failure Rate in 5G Networks

Vikash Mishra, D. Das, Namo Narayan Singh
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引用次数: 2

Abstract

Ultra-reliable low latency communication (URLLC) is a key feature in 5G which requires improved mobility performance and reliability. In future, the number of devices are going to increase many times in 5G compared to current 4G, so the number of mobility (handover) scenarios are bound to increase many folds, and without proper technologies it may induce more handover failures. According to tests done in North America it is observed that handover failure (HOF) rate is 7.6% in urban areas and 21.7% in downtown area while successful recovery from HOF is only 38% [9]. Also, it is observed that if user equipment (UE) faces radio link failure (RLF) which leads to HOF, then the service interruption time is more. Therefore, to ensure better quality of experience (QoE) in 5G NR (New Radio), it is important to have minimal interruption time, and high handover success rate. In this paper we propose a novel Machine Learning (ML) and beam measurement based advance handover (HO) algorithm. In this concept, HO is initiated in advance before UE runs into RLF to ensure less HOF. In our proposed algorithm, the Network parameters used to train the ML model is based on serving cell reference signal received power (RSRP), block error rate (BLER), Timing Advance (TA) and serving beam direction. The proposed idea performance with existing Handover mechanism shows reduction of HOF rate by 35%.
降低5G网络切换失败率的新算法
超可靠低延迟通信(URLLC)是5G的关键特性,需要提高移动性能和可靠性。未来5G的设备数量会比现在的4G增加很多倍,所以移动性(切换)场景的数量必然会增加很多倍,如果没有合适的技术,可能会导致更多的切换失败。根据北美地区的测试,市区切换失败率为7.6%,市区切换失败率为21.7%,而成功恢复HOF的比例仅为38%[9]。此外,如果用户设备(UE)面临无线电链路故障(RLF)导致HOF,则业务中断时间更长。因此,为了确保5G NR (New Radio)中更好的体验质量(QoE),重要的是要尽量减少中断时间,并提高切换成功率。本文提出了一种基于机器学习和波束测量的超前切换算法。在这个概念中,在UE进入RLF之前,提前启动HO,以确保较少的HOF。在我们提出的算法中,用于训练ML模型的网络参数是基于服务小区参考信号接收功率(RSRP)、分组错误率(BLER)、时序推进(TA)和服务波束方向。在现有的切换机制下,所提出的思想性能降低了35%的HOF率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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