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A novel feature extraction method based on discriminative graph regularized autoencoder for fault diagnosis ?

机译:基于判别图正则化自动编码器的特征提取新方法用于故障诊断

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Autoencoder has been popularly used as an effective feature extraction method in fault diagnosis. However, the autoencoder algorithms neglect local structure and class information that is available in the training set. To address this problem, a novel feature extraction approach based on discriminative graph regularized autoencoder is proposed for fault diagnosis task. A single-layer autoencoder with nonlinear layers is adopted to extract nonlinear features automatically from input signals. Locality relationship of original data is propagated to the feature extraction stage via a graph to learn internal representations that go beyond reconstruction and on to locality preservation. To better exploit the discriminative information, the label information of training samples is embedded to the graph to improve the fault diagnosis performance. A real industrial process are used to comparing the performance with commonly used diagnosis method, the promising experimental results validate the superiority of the proposed method.
机译:自动编码器已广泛用作故障诊断中的有效特征提取方法。但是,自动编码器算法忽略了训练集中可用的局部结构和类别信息。针对这一问题,提出了一种基于判别图正则化自动编码器的特征提取方法,用于故障诊断。采用具有非线性层的单层自动编码器可从输入信号中自动提取非线性特征。原始数据的位置关系通过图形传播到特征提取阶段,以学习超越重建和位置保留的内部表示。为了更好地利用判别信息,将训练样本的标签信息嵌入到图形中以提高故障诊断性能。实际的工业过程用于与常用诊断方法进行性能比较,有希望的实验结果证明了该方法的优越性。

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