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Integrated ANN-based proactive fault diagnostic scheme for power transformers using dissolved gas analysis

机译:基于集成神经网络的基于溶解气体分析的电力变压器主动故障诊断方案

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摘要

This paper focuses on a Smart Fault Diagnostic Approach (SFDA) based on the integration among the output results of recognized dissolved gas analysis (DGA) techniques. These techniques are Dornenburg method, Electro-technical Commission standard (IEC) Code, the Central Electricity Generating Board (CEGB) Code based on Rogers' four ratios, Rogers method given in IEEE-C57 standard, and the Duval triangle. The artificial neural networks (ANN) model is constructed to monitor the transformer fault conditions and trained for each technique individually. The fault decision of each ANN model supplies the proposed integrated SFDA. The integration between these DGA approaches not only improves the fault condition monitoring of the transformers but also overcomes the individual weakness and the differences between the above methods. Toward a better diagnostic scheme, a new SFDA is developed based on the integration of the most three appropriate DGA methods. Further gas concentrations have been considered as raw data (California State University Sacramento (CSUS) as an example) to enhance the proposed SFDA performance. Comparison of each DGA concept with respect to the proposed one is reported, where the results provide evidences of the efficacy of the proposed SFDA.
机译:本文着重于基于公认的溶解气体分析(DGA)技术的输出结果之间的集成的智能故障诊断方法(SFDA)。这些技术是Dornenburg方法,电工委员会标准(IEC)代码,基于Rogers四个比率的中央发电局(CEGB)代码,IEEE-C57标准中给出的Rogers方法以及Duval三角形。构造了人工神经网络(ANN)模型来监视变压器故障状况,并分别针对每种技术进行训练。每个ANN模型的故障决策都可以提供建议的集成SFDA。这些DGA方法之间的集成不仅改善了变压器的故障状态监视,而且克服了上述方法之间的个体缺陷和差异。为了寻求更好的诊断方案,在最适当的三种DGA方法集成的基础上,开发了一种新的SFDA。进一步的气体浓度已被视为原始数据(以加利福尼亚州立大学萨克拉门托(CSUS)为例),以提高建议的SFDA性能。报告了每个DGA概念与所提议的DGA概念的比较,结果为所提议的SFDA的功效提供了证据。

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