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Performance Evaluation of Anomaly Detection in Cellular Core Networks using Self-Organizing Map

机译:使用自组织地图对细胞核心网络异常检测的性能评估

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One of the preconditions to guarantee the Quality of Service (QoS) of cellular mobile networks is the rapid and accurate detection of Key Performance Index (KPI) anomalies. This paper applies a neural network algorithm called self-organizing map (SOM) to monitor traffic measurement anomalies collected from an actual cellular network service provider. Results show that the SOM algorithm is able to detect global anomalies as well as identify which KPIs of the core network are abnormal. These results suggest that SOM can indeed help facilitate human operation, making it easier, faster and more efficient for human to troubleshoot, optimize or correct the configuration of the core network.
机译:保证蜂窝移动网络的服务质量(QoS)的前提是一种快速准确地检测关键性能指数(KPI)异常。本文适用于称为自组织地图(SOM)的神经网络算法,以监控从实际蜂窝网络服务提供商收集的流量测量异常。结果表明,SOM算法能够检测到全局异常以及识别核心网络的哪个KPI是异常的。这些结果表明,SOM可以确实有助于促进人工操作,使人类更容易,更快,更高效地进行故障排除,优化或纠正核心网络的配置。

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