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Bearing Fault Diagnosis Based on the Switchable Normalization SSGAN with 1-D Representation of Vibration Signals as Input

机译:基于振动信号一维表示作为输入的可切换归一化SSGAN的轴承故障诊断

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摘要

The bearing is a component of the support shaft that guides the rotational movement of the shaft, widely used in the mechanical industry and also called a mechanical joint. In bearing fault diagnosis, the accuracy much depends on the feature extraction, which always needs a lot of training samples and classification in the commonly used methods. Neural networks are good at latent feature extraction and fault classification, however, they have problems with instability and over-fitting, and more labeled samples must be trained. Switchable normalization and semi-supervised learning are introduced to solve the above obstacles in this paper, which proposes a novel bearing fault diagnosis method based on switchable normalization semi-supervised generative adversarial networks (SN-SSGAN) with 1-dimensional representation of vibration signals as input. Experimental results showed that the proposed method has a desirable 99.93% classification accuracy in the case of less labeled data from the public data set of West Reserve University, which is better than the state-of-the-art methods.
机译:轴承是引导轴旋转运动的支撑轴组件,在机械工业中广泛使用,也称为机械接头。在轴承故障诊断中,精度很大程度上取决于特征提取,而在通常的方法中,总是需要大量的训练样本和分类。神经网络擅长进行潜在特征提取和故障分类,但是它们存在不稳定和过拟合的问题,必须训练更多的带标签样本。为了克服上述障碍,本文引入可切换归一化和半监督学习,提出了一种基于可交换归一化半监督生成对抗网络(SN-SSGAN)的一维轴承振动信号诊断方法。输入。实验结果表明,在西储大学的公共数据集中标注的数据较少的情况下,该方法具有令人满意的99.93%的分类准确率,优于最新方法。

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