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Method of inter-turn fault detection for next-generation smart transformers based on deep learning algorithm

机译:基于深度学习算法的下一代智能变压器匝间故障检测方法

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In this study, an inter-turn fault diagnosis method is proposed based on deep learning algorithm. 12-channel data is obtained in MATLAB/Simulink as the time-domain monitoring signals and labelled with 16 different fault tags, including both primary and secondary voltage and current waveforms. An auto-encoder is presented to classify the fault type of the abundant and comprehensive fault waveforms. The overall waveforms compose a two-dimension data matrix and the auto-encoder is trained to extract the features in the multi-channel waveforms. The selected features are convoluted with the original data, generating a one-dimensional vector as the input to the softmax classifier. Variables such as type, activation function and depth of auto-encoder, sparsity of sparse auto-encoder, number of features and pooling strategies are studied, which gives an intuitive process to train a proper learning model. The overall recognition accuracy reaches 99.5%. Signal characteristics such as channel selection, time span of the input signal and signal sampling frequency are studied to find the best solution for the inter-turn fault detection of the three-phase transformer. The proposed method under deep learning framework increases the accuracy and robustness in transformer fault diagnosis, indicating its potential and prospect in the next-generation smart transformers.
机译:在本研究中,基于深度学习算法提出了一种变频故障诊断方法。在Matlab / Simulink中获得12通道数据作为时域监视信号,并用16个不同的故障标记标记,包括初级和次级电压和电流波形。提出了一个自动编码器以对丰富和综合故障波形的故障类型进行分类。整体波形构成二维数据矩阵,并且训练自动编码器以提取多通道波形中的特征。所选功能与原始数据复杂化,生成一维向量作为SoftMax分类器的输入。研究等变量,如自动编码器,稀疏自动编码器的稀疏性,特征数量和汇集策略的稀疏性,这使得培训适当的学习模型提供了直观的过程。整体识别准确性达到99.5%。研究了诸如信道选择的信号特性,输入信号的时间跨度和信号采样频率的时间跨度为三相变压器的匝间故障检测找到最佳解决方案。深度学习框架下的提议方法提高了变压器故障诊断的准确性和稳健性,表明其在下一代智能变压器中的潜力和前景。

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