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Construction of a batch-normalized autoencoder network and its application in mechanical intelligent fault diagnosis

机译:批量标准化的自动化器网络的构建及其在机械智能故障诊断中的应用

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摘要

Among various fault diagnosis methods, deep learning has shown state-of-the-art performance in processing mechanical big data. This paper investigates a reliable deep learning method known as autoencoder, which is most suitable for automatic feature extraction of fault signals. However, traditional autoencoders have two deficiencies: (1) the multi-layer structure of autoencoder has an internal covariate shift problem, which will cause great difficulty for the network training. (2) The application of autoencoder in the case of rotating speed fluctuation is not mature. To overcome the aforementioned deficiencies, batch normalization strategy is employed in every layer of the autoencoder network to obtain a steady distribution of activation values during training. It can regularize the network without parameter adjustment, and deal with the speed fluctuation problem perfectly. So, a new network named batchnonnalized autoencoder is first proposed for intelligent fault diagnosis. The raw vibration signals are directly fed into the network and the extracted features are employed to train a softmax classifier for health state identification. A bearing and a gearbox data set are finally used to confirm the effectiveness of the proposed method. The results manifest that the proposed method can extract salient features from the raw signals and handle the fault diagnosis problem under the speed fluctuation problem.
机译:在各种故障诊断方法中,深度学习在处理机械大数据时表现出最先进的性能。本文调查了可靠的深度学习方法,称为AutoEncoder,最适合于故障信号的自动特征提取。然而,传统的AutoEncoders具有两种缺陷:(1)AutoEncoder的多层结构具有内部协变速换档问题,这将对网络培训造成很大困难。 (2)在旋转速度波动的情况下,AutoEncoder在旋转速度波动的情况下不成熟。为了克服上述缺陷,在AutoEncoder网络的每层中采用批量归一化策略,以获得训练期间激活值的稳定分布。它可以在没有参数调整的情况下正规化网络,并完美地处理速度波动问题。因此,首先提出了一个名为Batchnonalized AutoEncoder的新网络,以实现智能故障诊断。原始振动信号直接进入网络,采用提取的特征来训练软MAX分类器以进行健康状态识别。轴承和变速箱数据集最终用于确认所提出的方法的有效性。结果表明,所提出的方法可以从原始信号中提取显着特征,并在速度波动问题下处理故障诊断问题。

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