不平衡数据下基于交互式生成特征空间超采样自动编码器的滚动轴承故障诊断方法

Fengfei Huang, Kai Zhang, Zhixuan Li, Qing Zheng, Guofu Ding, Minghang Zhao, Yuehong Zhang
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引用次数: 1

摘要

随着铁路的快速发展和运营规模的逐年扩大,铁路列车的安全运营和维护变得尤为重要。其中,基于深度学习的轴承故障诊断方法在铁路列车运行维护中受到越来越多的关注。然而,轨道列车通常是正常运行的。收集完整的故障数据进行深度学习模型训练往往比较困难。这种正常数据与故障数据数量相差较大的情况通常会影响故障诊断模型的性能。本文提出了一种基于交互式生成特征空间过采样的自动编码器(IGFSO-AE),以实现不平衡数据下的故障样本生成。首先,通过快速傅立叶变换将原始振动信号转换为语义稳定的幅频信号,并将其输入自动编码器;其次,随机交换自动编码器隐层空间特征的顺序,并采用交互式样本生成学习策略训练自动编码器;然后,使用插值超采样对样本间欧氏距离较大的隐层空间样本进行插值,并输入解码器,生成的样本与原始样本混合形成新的训练集,用于训练智能故障诊断模型并输出诊断结果。最后,利用公开的轴承数据集和我们实验室的转向架轴承故障模拟台对所提出方法的性能进行了评估。实验结果表明,IGFSO-AE 可以生成具有增量信息的多样化样本,并在不同比例的不平衡数据中表现出鲁棒性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A rolling bearing fault diagnosis method based on interactive generative feature space oversampling-based autoencoder under imbalanced data
With the rapid development of railroads and the yearly increase in the scale of operation, the safe operation and maintenance of rail trains have become particularly important. Among them, deep learning-based bearing fault diagnosis methods have attracted more and more attention in rail train operation and maintenance. However, rail trains usually operate normally. Collecting complete fault data for deep learning model training is often difficult. Such scenarios with a large difference between the number of normal data and fault data usually affect the performance of fault diagnosis models. Here, an interactive generative feature space oversampling-based autoencoder (IGFSO-AE) is proposed to realize fault sample generation under imbalanced data. First, the original vibration signal is converted into a semantically stable amplitude–frequency signal by fast Fourier transform and input into the autoencoder; second, the order of the hidden layer space features of the autoencoder is randomly exchanged, and the interactive sample generation learning strategy trains the autoencoder; then, interpolation oversampling is used to interpolate samples in the hidden layer space where the Euclidean distance between samples is large, and is input into the decoder, the generated samples are mixed with the original samples to form a new training set, which is used to train the intelligent fault diagnosis model and output the diagnosis results. Finally, the performance of the proposed method is evaluated using the publicly available bearing dataset and the bogie-bearing fault simulation bench in our lab. The experimental results show that IGFSO-AE can generate diverse samples with incremental information and exhibits robustness and superiority in different imbalanced proportions of data.
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