Research on Power Communication Defect Diagnosis Technology based on Unsupervised Learning

Muwei Wang, Yan Liu, Jiaojiao Dong
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引用次数: 0

Abstract

In order to study the power communication defect diagnosis technology based on unsupervised learning, four methods of alarm merging technology, artificial intelligence technology, unsupervised learning technology and graph data mining technology were analyzed. Four technical routes were positioned and graded, and the subject was tested and studied. For alarm data, a self-learning algorithm based on unsupervised clustering and frequent subgraph mining to realize alarm merging and defect pattern discovery is proposed, and a framework for automatic defect diagnosis and disposal is designed. The architecture has good scalability and iterative update ability, and is verified by experiments on real scene datasets, and the results show good performance.
基于无监督学习的电力通信缺陷诊断技术研究
为了研究基于无监督学习的电力通信缺陷诊断技术,分析了报警合并技术、人工智能技术、无监督学习技术和图数据挖掘技术四种方法。对四条技术路线进行定位和分级,对课题进行测试和研究。针对告警数据,提出了一种基于无监督聚类和频繁子图挖掘的自学习算法来实现告警合并和缺陷模式发现,并设计了缺陷自动诊断和处理框架。该架构具有良好的可扩展性和迭代更新能力,并在真实场景数据集上进行了实验验证,结果显示出良好的性能。
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