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Detection and classification of transmission line faults based on unsupervised feature learning and convolutional sparse autoencoder

机译:基于无监督特征学习和卷积稀疏自动编码器的输电线路故障检测与分类

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We present in this paper a novel method for fault detection and classification in power transmission lines based on convolutional sparse autoencoder (CSAE). In contrary to conventional methods, the proposed method automatically learns features from a dataset of voltage and current signals, on the basis of which a framework for fault detection and classification is created. Convolutional feature mapping and mean pooling are implemented in order to generate feature vectors with local translation-invariance for half-cycle multi-channel signal segments. Detection and classification are done by a softmax classifier using the feature vectors. Further, the proposed method is tested under different sampling frequencies and signal types. Results show that the proposed method is fast and accurate in detecting and classifying faults, and is practical for online transmission line protection.
机译:我们在本文中提出了一种基于卷积稀疏自动编码器(CSAE)的输电线路故障检测和分类的新方法。与常规方法相反,提出的方法从电压和电流信号的数据集中自动学习特征,在此基础上创建了故障检测和分类的框架。卷积特征映射和均值池的实现是为了为半周期多通道信号段生成具有局部平移不变性的特征向量。检测和分类是由softmax分类器使用特征向量完成的。此外,在不同的采样频率和信号类型下对提出的方法进行了测试。结果表明,该方法能够快速,准确地进行故障的检测和分类,对于在线输电线路的保护具有实用价值。

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