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A learning-based approach for autonomous outage detection and coverage optimization

机译:一种基于学习的自动中断检测和覆盖优化方法

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摘要

To be able to provide uninterrupted high quality of experience to the subscribers, operators must ensure high reliability of their networks while aiming for zero downtime. With the growing complexity of the networks, there exists unprecedented challenges in network optimization and planning, especially activities such as cell outage detection (COD) and mitigation that are labour-intensive and costly. In this paper, we address the challenge of autonomous COD and cell outage compensation in self-organising networks (SON). COD is a pre-requisite to trigger fully automated self-healing recovery actions following cell outages or network failures. A special case of cell outage, referred to as sleeping cell, remains particularly challenging to detect in state-of-the-art SON, because it triggers no alarms for operation and maintenance entity. Consequently, no SON compensation function can be launched unless site visits or drive tests are performed, or complaints are received by affected customers. To address this issue, our COD solution leverages minimization of drive test functionality, recently specified in third generation partnership project Release 10 for LTE networks, in conjunction with state-of-the art machine learning methods. Subsequently, the proposed cell outage compensation mechanism utilises fuzzy-based reinforcement learning mechanism to fill the coverage gap and improve the quality of service, for the users in the identified outage zone, by reconfiguring the antenna and power parameters of the neighbouring cells. The simulation results show that the proposed framework can detect cell outage situations in an autonomous fashion and also compensate for the detected outage in a reliable manner.
机译:为了能够为订户提供不间断的高质量体验,运营商必须确保其网络的高度可靠性,同时旨在实现零停机时间。随着网络的复杂性不断增长,网络优化和规划面临着前所未有的挑战,尤其是诸如劳动强度大且成本高的小区中断检测(COD)和缓解等活动。在本文中,我们解决了自组织网络(SON)中自主COD和信元中断补偿的挑战。 COD是在单元故障或网络故障后触发全自动自我修复恢复操作的先决条件。在最新的SON中,检测到特殊情况的电池故障(称为休眠电池)仍然特别具有挑战性,因为它不会触发操作和维护实体的警报。因此,除非进行现场访问或路测或受影响的客户收到投诉,否则无法启动SON补偿功能。为了解决这个问题,我们的COD解决方案结合了最新的机器学习方法,将驱动测试功能的最小化(最近在LTE网络的第三代合作伙伴计划版本10中指定)。随后,所提出的小区中断补偿机制利用基于模糊的强化学习机制,通过重新配置相邻小区的天线和功率参数,为识别出的中断区域的用户填补覆盖范围并提高服务质量。仿真结果表明,所提出的框架能够以自主的方式检测小区中断情况,并且能够以可靠的方式补偿检测到的中断。

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