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首页> 外文期刊>IEEE transactions on industrial informatics >One-Dimensional Residual Convolutional Autoencoder Based Feature Learning for Gearbox Fault Diagnosis
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One-Dimensional Residual Convolutional Autoencoder Based Feature Learning for Gearbox Fault Diagnosis

机译:基于一维剩余卷积的AutoEncoder齿轮箱故障诊断的特征学习

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Vibration signals are generally utilized for machinery fault diagnosis to perform timely maintenance and then reduce losses. Thus, the feature extraction on one-dimensional vibration signals often determines accuracy of those fault diagnosis models. These typical deep neural networks (DNNs), e.g., convolutional neural networks (CNNs), perform well in feature learning and have been applied in machine fault diagnosis. However, the supervised learning of CNN often requires a large amount of labeled images and thus limits its wide applications. In this article, a new DNN, one-dimensional residual convolutional autoencoder (1-DRCAE), is proposed for learning features from vibration signals directly in an unsupervised-learning way. First, 1-D convolutional autoencoder is proposed in 1-DRCAE for feature extraction. Second, a deconvolution operation is developed as decoder of 1-DRCAE to reconstruct the filtered signals. Third, residual learning is employed in 1-DRCAE to perform feature learning on 1-D vibration signals. The results show that 1-DRCAE has good signal denoising and feature extraction performance on vibration signals. It performs better on feature extraction than the typical DNNs, e.g., deep belief network, stacked autoencoders, and 1-D CNN.
机译:振动信号通常用于机械故障诊断以执行及时维护,然后减少损耗。因此,一维振动信号上的特征提取通常确定这些故障诊断模型的准确性。这些典型的深神经网络(DNN),例如卷积神经网络(CNNS),在特征学习中表现良好,并且已应用于机器故障诊断。然而,CNN的监督学习通常需要大量标记的图像,从而限制其广泛的应用。在本文中,提出了一种新的DNN,一维剩余卷积AutomEncoder(1-DRCAE),用于直接以无监督的学习方式从振动信号的学习特征。首先,在1-DRCAE中提出了1-D卷积的自身摩擦器,用于特征提取。其次,将切屑卷取操作作为1-DRCAE的解码器开发,以重建滤波信号。第三,在1-DRCAE中使用剩余学习以在1-D振动信号执行特征学习。结果表明,1-DRCAE在振动信号上具有良好的信号去噪和特征提取性能。它在特征提取比典型的DNN,例如深度信仰网络,堆叠的AutoEncoders和1-D CNN的特征提取更好。

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