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Power equipment state diagnosis based on multi-source monitoring data mining

机译:基于多源监控数据挖掘的电力设备状态诊断

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With the construction of UHV power grid, state assessment and diagnosis of power equipment in transmission and transformation systems have increasingly become the key technology to ensure the safety and stability of power system. Currently, state diagnosis of power equipment is mostly based on one single monitoring parameter. In this paper, a comprehensive analysing method was presented based on the mining of multi-source monitoring data, offering a new thought to analyse the states and defects of power equipment. The proposed method was applied on analysing the time-sequence and correlation of multi-source online monitoring data of a defective UHV reactor. According to the analysis results, the cause of the defects were investigated. The practice shows that the analysing method proposed in this paper can be applied on the defect diagnosis of power equipment, and the multi-source monitoring data contributes to improve the diagnosis accuracy.
机译:随着特高压电网的建设,输变电系统中电力设备的状态评估和诊断已越来越成为确保电力系统安全和稳定的关键技术。当前,电力设备的状态诊断主要基于一个监测参数。本文提出了一种基于多源监控数据挖掘的综合分析方法,为分析电力设备的状态和缺陷提供了新思路。该方法被用于分析特高压反应堆多源在线监测数据的时间序列和相关性。根据分析结果,调查了产生缺陷的原因。实践表明,本文提出的分析方法可以应用于电力设备的故障诊断,多源监测数据有助于提高诊断的准确性。

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