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Fault Diagnosis of Rotating Machinery under Noisy Environment Conditions Based on a 1-D Convolutional Autoencoder and 1-D Convolutional Neural Network

机译:基于一维卷积自动编码器和一维卷积神经网络的嘈杂环境下旋转机械故障诊断

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Deep learning methods have been widely used in the field of intelligent fault diagnosis due to their powerful feature learning and classification capabilities. However, it is easy to overfit depth models because of the large number of parameters brought by the multilayer-structure. As a result, the methods with excellent performance under experimental conditions may severely degrade under noisy environment conditions, which are ubiquitous in practical industrial applications. In this paper, a novel method combining a one-dimensional (1-D) denoising convolutional autoencoder (DCAE) and a 1-D convolutional neural network (CNN) is proposed to address this problem, whereby the former is used for noise reduction of raw vibration signals and the latter for fault diagnosis using the de-noised signals. The DCAE model is trained with noisy input for denoising learning. In the CNN model, a global average pooling layer, instead of fully-connected layers, is applied as a classifier to reduce the number of parameters and the risk of overfitting. In addition, randomly corrupted signals are adopted as training samples to improve the anti-noise diagnosis ability. The proposed method is validated by bearing and gearbox datasets mixed with Gaussian noise. The experimental result shows that the proposed DCAE model is effective in denoising and almost causes no loss of input information, while the using of global average pooling and input-corrupt training improves the anti-noise ability of the CNN model. As a result, the method combined the DCAE model and the CNN model can realize high-accuracy diagnosis even under noisy environment.
机译:深度学习方法因其强大的特征学习和分类功能而已广泛应用于智能故障诊断领域。但是,由于多层结构带来大量参数,因此很容易过度拟合深度模型。结果,在实验条件下具有优异性能的方法可能在嘈杂的环境条件下严重退化,这在实际工业应用中无处不在。本文提出了一种结合一维(1-D)去噪卷积自动编码器(DCAE)和一维卷积神经网络(CNN)的新方法来解决此问题,其中前者用于降低噪声。原始振动信号,后者用于使用降噪信号进行故障诊断。 DCAE模型经过带噪输入的训练,用于降噪学习。在CNN模型中,全局平均池化层(而不是完全连接的层)用作分类器,以减少参数的数量和过拟合的风险。另外,采用随机破坏的信号作为训练样本,以提高抗噪诊断能力。轴承和齿轮箱数据集与高斯噪声混合验证了该方法的有效性。实验结果表明,提出的DCAE模型在去噪方面是有效的,几乎不会引起输入信息的丢失,而全局平均池和输入腐败训练的使用提高了CNN模型的抗噪能力。结果,即使在嘈杂的环境下,将DCAE模型和CNN模型相结合的方法也可以实现高精度的诊断。

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