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Enhanced data-driven fault diagnosis for machines with small and unbalanced data based on variational auto-encoder

机译:基于变分自动编码器的小和不平衡数据的机器增强了数据驱动的故障诊断

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摘要

Deep learning (DL) has become a popular option for data-driven fault diagnosis, because it can avert the influence of subjective factors in an artificial feature extraction process. However, it also suffers from the adverse effects accompanied with small fault sample and unbalanced data, resulting in limited accuracy improvement. For the aforementioned problem, this paper introduces a variational auto-encoder (VAE) into a fault diagnosis framework to realize data amplification by vibration signal generation, then an enhanced fault diagnosis approach is proposed combining with a convolution neural network. The well-trained VAE can realize the infinite generation of vibration signal by using the hidden variables sampled from Gaussian distribution, and then the generated artificial signals are mixed with the real original signals to form an enhanced training set, which can be utilized for classifier training to realize fault identification. Experimental results show that the generated artificial signals have similar time-frequency characteristics compared with the original real ones, and the enhanced fault diagnosis method holds a higher and more stable recognition accuracy than the unenhanced version and other typical methods.
机译:深度学习(DL)已成为数据驱动的故障诊断的流行选择,因为它可以避免主观因素在人工特征提取过程中的影响。然而,它也存在伴随着小故障样本和不平衡数据的不利影响,从而提高了有限的准确性。对于上述问题,本文将一个变分自动编码器(VAE)引入故障诊断框架,以通过振动信号产生实现数据放大,然后提出了一种增强的故障诊断方法与卷积神经网络相结合。训练有素的VAE可以通过使用从高斯分布采样的隐藏变量来实现振动信号的无限产生,然后将所产生的人工信号与真实原始信号混合以形成增强训练集,这可以用于分类器训练实现故障识别。实验结果表明,与原始真实的,所产生的人工信号具有类似的时频特性,而增强的故障诊断方法比未加入版本和其他典型方法具有更高且更稳定的识别精度。

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