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Unsupervised fault diagnosis of rolling bearings using a deep neural network based on generative adversarial networks

机译:基于生成对抗网络的深度神经网络的滚动轴承无监督故障诊断

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摘要

Fault diagnosis of rolling bearing has been research focus to improve the productivity and guarantee the operation security. In general, traditional approaches need prior knowledge of possible features and a mass of labeled data. Due to the complexity of working conditions, it costs a lot of time to label the monitoring data. In this paper, Categorical Adversarial Autoencoder (CatAAE) is proposed for unsupervised fault diagnosis of rolling bearings. The model trains an autoencoder through an adversarial training process and imposes a prior distribution on the latent coding space. Then a classifier tries to cluster the input examples by balancing mutual information between examples and their predicted categorical class distribution. The latent coding space and training process are presented to investigate the advantage of proposed model. Classic rotating machinery datasets have been employed to testify the effectiveness of the proposed diagnosis method. The experimental results indicate that the proposed method achieved satisfactory performance and high clustering indicators with strong robustness when environmental noise and motor load changed. (c) 2018 Elsevier B.V. All rights reserved.
机译:滚动轴承的故障诊断一直是提高生产率,保证运行安全的研究重点。通常,传统方法需要事先了解可能的特征和大量标记数据。由于工作条件的复杂性,标记监视数据需要花费大量时间。本文提出了分类对抗自编码器(CatAAE),用于滚动轴承的无监督故障诊断。该模型通过对抗训练过程训练自动编码器,并在潜在编码空间上施加先验分布。然后,分类器尝试通过平衡示例之间的相互信息及其预测的分类类别分布来对输入示例进行聚类。提出了潜在的编码空间和训练过程,以研究所提模型的优势。经典的旋转机械数据集已被用来证明所提出的诊断方法的有效性。实验结果表明,该方法在环境噪声和电机负载变化时,具有良好的鲁棒性和良好的聚类指标,性能良好。 (c)2018 Elsevier B.V.保留所有权利。

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