首页> 外文会议>2002 IEEE Region 10 Conference on Computers, Communications, Control and Power Engineering (IEEE TENCOM'02) Vol.3; Oct 28-31, 2002; Beijing, China >APPLICATION OF A COMBINATORIAL NEURAL NETWORK MODEL BASED ON CLUSTER ANALYSIS IN TRANSFORMER FAULT DIAGNOSIS
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APPLICATION OF A COMBINATORIAL NEURAL NETWORK MODEL BASED ON CLUSTER ANALYSIS IN TRANSFORMER FAULT DIAGNOSIS

机译:基于聚类分析的组合神经网络模型在变压器故障诊断中的应用

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摘要

The multi-resolution identification of transformer faults is significant for the maintenance of transformer. In this paper, a combinatorial artificial neural network (ANN) model, based on cluster analysis of data of dissolved gases in transformer oil, is presented. A more detailed classification is necessary to obtain explicit diagnosis results. Based on the discussion of traditional classification methods, a twelve-fault classification method is established. However there are similarities among these faults, which should be considered before constructing the combinatorial model. Hence, hierachical cluster analysis is chosen to investigate the similarities and helps to construct the model. Finally, the application results show the value of this model for the diagnosis of transformer faults.
机译:变压器故障的多分辨率识别对于维护变压器具有重要意义。本文基于变压器油中溶解气体数据的聚类分析,提出了一种组合人工神经网络模型。为了获得明确的诊断结果,必须进行更详细的分类。在讨论传统分类方法的基础上,建立了十二故障分类方法。但是,这些故障之间存在相似之处,在构造组合模型之前应考虑这些相似之处。因此,选择层次聚类分析来研究相似性并有助于构建模型。最后,应用结果表明了该模型对变压器故障诊断的价值。

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