对电力变压器故障预测的新贡献

A. Lakehal, Fouad Tachi, H. Cheghib
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引用次数: 1

摘要

目前,战略电力变压器溶解气体分析(DGA)技术已得到普遍应用。该方法基于将Duval三角形映射到贝叶斯网络(BN)。这种方法消除了不确定性存在于决策对断层的性质被困在变压器中,由于气体和错误,同时导致了更多的天然气百分比。该模型通过计算释放气体的概率,并根据其在贝叶斯网络中的关系,准确地提供了变压器故障诊断和预测能力。提出了一个案例研究的论文显示方法的可行性在15.5/6.6 kV 20 MVA降压变压器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new contribution for fault prediction of electrical power transformers
Nowadays, dissolved gas analysis (DGA) technology of strategic electrical power transformers is universally practiced. The proposed approach is based on mapping the triangle of Duval into Bayesian network (BN). This approach eliminates the uncertainty that exists in the decision making regarding the nature of the faults due to gases that are trapped in the transformer, and faults that results in more gas percentages simultaneously. The model accurately provides transformer fault diagnosis and prediction abilities by calculating the probabilities of released gases and further predicting the failures based on their relationships in the Bayesian network. A case study is presented at the end of the paper to show the feasibility of the method on a 15.5 / 6.6 kV 20 MVA step-down transformer.
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