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Deep variational auto-encoders: A promising tool for dimensionality reduction and ball bearing elements fault diagnosis

机译:深度变分自动编码器:一种用于降低尺寸和球轴承元件故障诊断的有前途的工具

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One of the main challenges that the industry faces when dealing with massive data for failure diagnosis is high dimensionality of such data. This can be tackled by dimensionality reduction method such as principal components analysis, which usually results in an improved fault diagnosis. Other available techniques include auto-encoders and its variants denoising auto-encoders and sparse auto-encoders. Most recently, variational auto-encoders are one of the most promising techniques for unsupervised learning with successful applications in image processing and speech recognition. Differently from other auto-encoder methods, variational auto-encoders use variational inference to generate a latent representation of the data and impose a distribution over the latent variables and the data itself. In this article, we propose a fully unsupervised deep variational auto-encoder-based approach for dimensionality reduction in fault diagnosis and explore the variational auto-encoder capabilities for such a task. This is achieved by comparing the latent representations provided by variational auto-encoders to the ones from principal components analysis as well as when no reduction is performed in ball bearings' fault classification using vibration signals. To tackle massive sensor data, we propose different architectures for the variational auto-encoder's encoder and decoder that are based on deep neural networks and deep convolutional neural networks. Experiments are also carried out by varying the data preprocessing methods for generating spectrograms and hand-engineering features as well as the use of raw vibration data, the architecture of the neural networks fault classifiers operating on the latent representations from variational auto-encoder and principal components analysis, the degree of data dimension reduction, and the size of the available labeled data used for training the fault classifiers. The results show that variational auto-encoders are a competent and promising tool for dimensionality reduction for use in fault diagnosis and worth further exploring their capabilities beyond vibration signals of ball bearing elements.
机译:在处理海量数据以进行故障诊断时,行业面临的主要挑战之一是此类数据的高维度。这可以通过降维方法(例如主成分分析)解决,通常可以改善故障诊断能力。其他可用的技术包括自动编码器及其变体,它们使自动编码器和稀疏自动编码器降噪。最近,变分自动编码器是无监督学习最成功的技术之一,并在图像处理和语音识别中取得了成功的应用。与其他自动编码器方法不同,可变自动编码器使用可变推断来生成数据的潜在表示,并在潜在变量和数据本身上施加分布。在本文中,我们提出了一种基于完全无监督的深度变分自动编码器的方法来减少故障诊断中的维数,并探讨了这种任务的变分自动编码器功能。这是通过将变分自动编码器提供的潜在表示与主成分分析以及在未通过振动信号对滚珠轴承的故障分类中未进行任何还原的情况下进行比较来实现的。为了处理大量的传感器数据,我们为基于深度神经网络和深度卷积神经网络的变分自动编码器的编码器和解码器提出了不同的架构。还通过改变用于生成频谱图和手动工程特征的数据预处理方法以及使用原始振动数据,神经网络故障分类器的体系结构(基于变分自动编码器和主要组件的潜在表示进行操作)来进行实验分析,数据降维的程度以及用于训练故障分类器的可用标记数据的大小。结果表明,变分自动编码器是一种用于故障诊断的降维方法,是功能强大且很有前途的工具,值得进一步探索其功能,超越球轴承元件的振动信号。

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