Proactive Network Maintenance using Fast, Accurate Anomaly Localization and Classification on 1-D Data Series

J. Zhu, K. Sundaresan, J. Rupe
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引用次数: 5

Abstract

Proactive network maintenance (PNM) is the concept of using data from a network to identify and locate network faults, many or all of which could worsen to become service failures. The separation between the network fault and the service failure affords early detection of problems in the network to allow PNM to take place. Consequently, PNM is a form of prognostics and health management (PHM).The problem of localizing and classifying anomalies on 1-dimensional data series has been under research for years. We introduce a new algorithm that leverages Deep Convolutional Neural Networks to efficiently and accurately detect anomalies and events on data series, and it reaches 97.82% mean average precision (mAP) in our evaluation.
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基于一维数据序列的快速、准确异常定位和分类的主动网络维护
主动网络维护(PNM)是一种利用网络中的数据来识别和定位网络故障的概念,这些故障中的许多或全部可能恶化为业务故障。将网络故障和业务故障分离开来,可以及早发现网络中的问题,从而实现PNM。因此,PNM是预后和健康管理(PHM)的一种形式。一维数据序列的异常定位与分类问题已经研究多年。我们引入了一种新的算法,利用深度卷积神经网络高效准确地检测数据序列上的异常和事件,在我们的评估中,它达到了97.82%的平均精度(mAP)。
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