Data-driven analytics for automated cell outage detection in Self-Organizing Networks

A. Zoha, Arsalan Saeed, A. Imran, M. Imran, A. Abu-Dayya
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引用次数: 28

Abstract

In this paper, we address the challenge of autonomous cell outage detection (COD) in Self-Organizing 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 (SC) remains particularly challenging to detect in state-of-the-art SON, since it triggers no alarms for Operation and Maintenance (O&M) 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, we present and evaluates a COD framework, which is based on minimization of drive test (MDT) reports, a functionality recently specified in third generation partnership project (3GPP) Release 10, for LTE Networks. Our proposed framework aims to detect cell outages in an autonomous fashion by first pre-processing the MDT measurements using multidimensional scaling method and further employing it together with machine learning algorithms to detect and localize anomalous network behaviour. We validate and demonstrate the effectiveness of our proposed solution using the data obtained from simulating the network under various operational settings.
自组织网络中自动小区中断检测的数据驱动分析
在本文中,我们解决了自组织网络(SON)中自主小区中断检测(COD)的挑战。COD是在单元中断或网络故障后触发全自动自愈恢复操作的先决条件。在最先进的SON中,一种特殊的电池中断情况,即睡眠电池(SC),仍然很难检测到,因为它不会触发操作和维护(O&M)实体的警报。因此,除非进行实地考察或驾驶测试,或收到受影响客户的投诉,否则无法启动SON补偿功能。为了解决这个问题,我们提出并评估了一个COD框架,该框架基于最小化驱动测试(MDT)报告,这是第三代合作伙伴项目(3GPP) Release 10最近为LTE网络指定的功能。我们提出的框架旨在通过首先使用多维缩放方法预处理MDT测量,并进一步将其与机器学习算法一起用于检测和定位异常网络行为,以自主方式检测细胞中断。我们使用模拟网络在各种操作设置下获得的数据来验证和证明我们提出的解决方案的有效性。
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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