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基于SOFM神经网络的变压器故障诊断研究
引用本文:丁硕,常晓恒,巫庆辉,杨友林.基于SOFM神经网络的变压器故障诊断研究[J].河南科学,2014(6):1037-1041.
作者姓名:丁硕  常晓恒  巫庆辉  杨友林
作者单位:渤海大学工学院,辽宁锦州121013
基金项目:国家自然科学基金(61104071)
摘    要:SOFM神经网络具有强大的非线性映射能力和高度的自组织和自学习能力,将SOFM神经网络应用于变压器的故障诊断.利用改进的罗杰斯三比值法获取变压器故障诊断的特征向量,建立了SOFM网络故障诊断模型,并对模型进行训练.为了检验模型的实际诊断能力,以变压器的4种典型故障诊断为例进行仿真实验.仿真结果表明:SOFM神经网络能够根据获胜神经元在竞争层的位置对变压器故障进行判断,诊断准确率高,收敛速度快,泛化能力强,表明基于SOFM网络的变压器的故障诊断是一种行之有效的方法.

关 键 词:SOFM神经网络  故障诊断  改进的罗杰斯三比值法  变压器  泛化能力

Study of Transformer Fault Diagnosis Based on SOFM Neural Network
Ding Shuo,Chang Xiaoheng,Wu Qinghui,Yang Youlin.Study of Transformer Fault Diagnosis Based on SOFM Neural Network[J].Henan Science,2014(6):1037-1041.
Authors:Ding Shuo  Chang Xiaoheng  Wu Qinghui  Yang Youlin
Institution:( College of Engineering, Bohai University, Jinzhou 121013, Liaoning China)
Abstract:Self-organizing feature mapping(SOFM)neural network has a strong nonlinear mapping ability as well as a powerful self-organizing and self-learning ability. It is applied to fault diagnosis of transformers. Improved Rogers three-ratio method is used to obtain the characteristic vectors of transformer fault diagnosis. First,a diagnosis model based on SOFM neural network is established and trained. To test the practical diagnosis ability of the model , 4 kinds of typical faults of transformers are taken as examples in the simulation experiment. The simulation results show that SOFM neural network can identify the fault types according to the location of winning neurons in the com-peting layer. And it has high accuracy,fast convergence speed and strong generalization ability,which indicates that the transformer fault diagnosis method based on SOFM neural network is effective .
Keywords:SOFM neural network  fault diagnosis  improved Rogers three-ratio method  transformer  general-ization ability
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