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Automatic alarm prioritization by data mining for fault management in cellular networks

机译:蜂窝网络中故障管理数据挖掘自动报警优先级

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摘要

Network management systems play an important role to deal with the large size and complexity of current cellular networks. Thus, operators and vendors focus much of their efforts on developing new techniques and tools for network management. One of the most critical processes in network management is fault management, since a failure in a network element might have a strong impact on user satisfaction due to service degradation. Unfortunately, cellular networks generate thousands of alarms daily, which have to be checked manually by operator personnel. With the latest advances in big data analytics, different methods for reducing the number of alarms to be monitored have been proposed in the literature. In this work, an automatic method for prioritizing alarms based on the need for specialized personnel is presented. The core of the method is an ensemble model built with supervised learning that estimates the probability that an alarm generates a trouble ticket. The model is trained with trouble ticket data from the network operation center. A performance comparison of four classical base classifiers (naive Bayes, random forest, artificial neural network and support vector machine) for the ensemble is presented. The model is implemented in IBM SPSS Modeler and tested with a real alarm and trouble ticket dataset taken from a live cellular network. Results show that the proposed model correctly flags those alarms that need further analysis by the operator and filter out those alarms that do not have impact on network performance. The main contribution of this work is unveiling a new application (the automatic prioritization of alarms in a cellular network based on the need for specialized personnel) and presenting for the first time a performance comparison of base classifiers used for this purpose (since the required dataset is extremely difficult to find for privacy reasons). (C) 2020 Elsevier Ltd. All rights reserved.
机译:网络管理系统发挥了重要作用,以处理当前蜂窝网络的大尺寸和复杂性。因此,运营商和供应商关注他们在开发网络管理的新技术和工具方面的大部分努力。网络管理中最关键的过程之一是故障管理,因为网络元件中的故障可能对由于服务劣化而对用户满意产生强烈影响。不幸的是,蜂窝网络每天生成数千个警报,必须由操作员人员手动检查。随着大数据分析的最新进展,在文献中提出了在文献中提出了减少要监控的警报数量的不同方法。在这项工作中,介绍了一种基于对专业人员需求的优先级优先考虑警报的自动方法。该方法的核心是由监督学习构建的集合模型,估计警报产生故障票证的概率。该模型接受了来自网络运营中心的麻烦票据数据。介绍了四种经典基本分类器(天真贝叶斯,随机森林,人工神经网络和支持向量机)的性能比较。该模型是在IBM SPSS建模器中实现的,并使用从实时蜂窝网络中获取的真正警报和故障单数据集进行测试。结果表明,该建议的模型正确地标记了操作员需要进一步分析的警报,并过滤耗尽没有影响网络性能的警报。这项工作的主要贡献是揭示新的应用程序(基于专业人员的需要,蜂窝网络中的警报自动优先级),并首次呈现用于此目的的基本分类器的性能比较(自从所需的数据集以来非常难以找到隐私原因)。 (c)2020 elestvier有限公司保留所有权利。

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