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A Fault Diagnosis Method for Power Transformers Based on Wavelet Neural Network and D-S Evidence Theory

机译:基于小波神经网络和D-S证据理论的电力变压器故障诊断方法

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Transformer faults are quite complicated phenomena and can occur due to a variety of reasons. There have been several methods for transformer fault synthetic diagnosis, but each of them has its own limitations in real fault diagnosis applications. In order to overcome those shortcomings in the existing methods, a new transformer fault diagnosis method based on a wavelet neural network optimized by adaptive genetic algorithm (AGA) and an improved D-S evidence theory fusion technique is proposed in this paper. The proposed method combines the oil chromatogram data and the off-line electrical test data of transformers to carry out fault diagnosis. Based on the fusion mechanism of D-S evidence theory, the comprehensive reliability of evidence is constructed by considering the evidence importance, the outputs of the neural network and the expert experience. The new method increases the objectivity of the basic probability assignment (BPA) and reduces the basic probability assigned for uncertain and unimportant information. The case study results of using the proposed method show that it has a good performance of fault diagnosis for transformers.
机译:变压器故障是相当复杂的现象,可能由于多种原因而发生。变压器故障综合诊断有几种方法,但是每种方法在实际故障诊断应用中都有其自身的局限性。为了克服现有方法的这些缺点,提出了一种基于小波神经网络的自适应遗传算法(AGA)优化的变压器故障诊断方法和一种改进的D-S证据理论融合技术。该方法结合了油色谱数据和变压器的离线电气测试数据,进行故障诊断。基于D-S证据理论的融合机制,通过综合考虑证据重要性,神经网络的输出和专家经验,构建了证据的综合可靠性。新方法增加了基本概率分配(BPA)的客观性,并减少了为不确定和不重要的信息分配的基本概率。使用该方法的实例研究结果表明,该方法具有良好的变压器故障诊断性能。

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