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A novel method based on nonlinear auto-regression neural network and convolutional neural network for imbalanced fault diagnosis of rotating machinery

机译:一种基于非线性自动回归神经网络和卷积神经网络的新型方法,用于旋转机械的不平衡故障诊断

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Although the diagnosis methods of rotating machinery based on convolutional neural network (CNN) have achieved great success, they generally assume the number of normal and fault samples is the same. However, it's difficult to obtain adequate fault samples. Moreover, CNN cannot well handle the imbalanced fault diagnosis. Nonlinear auto-regressive neural network (NARNN) has strong prediction ability and can expand the small number of fault samples. Thus, a novel fault diagnosis approach combining CNN with NARNN has been proposed. First, NARNN is applied to expand the small number of samples. Thereby, the sample sizes of different health conditions are equal. Subsequently, continuous wavelet transform is employed to convert the 1-dimensional vibration signals into 2-dimensional time-frequency images. Finally, CNN is established to automatically learn the characteristics and achieve fault identification. Through the comparative experiments, the superiority of the proposed method has been validated based on the two datasets with different imbalanced levels. (C) 2020 Elsevier Ltd. All rights reserved.
机译:虽然基于卷积神经网络的旋转机械(CNN)的诊断方法取得了巨大的成功,但它们通常假设正常和故障样本的数量是相同的。然而,难以获得足够的故障样本。此外,CNN不能很好地处理不平衡的故障诊断。非线性自动回归神经网络(NARNN)具有很强的预测能力,可以扩展少量故障样本。因此,已经提出了一种新的故障诊断方法,将CNN与NARNN组合起来。首先,纳尔纳纳用于扩展少量样品。因此,不同健康状况的样本尺寸是相等的。随后,采用连续小波变换将1维振动信号转换为二维时频图像。最后,建立CNN以自动学习特征并实现故障识别。通过比较实验,基于具有不同不平衡水平的两个数据集来验证所提出的方法的优越性。 (c)2020 elestvier有限公司保留所有权利。

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