兰州理工大学学报 ›› 2025, Vol. 51 ›› Issue (6): 55-64.

• 机械工程与动力工程 • 上一篇    下一篇

基于SDP和W-DCGAN的滚动轴承故障数据增强方法

宋慧贤, 邓林峰*, 郑玉巧   

  1. 兰州理工大学 机电工程学院, 甘肃 兰州 730050
  • 收稿日期:2023-02-28 发布日期:2025-12-31
  • 通讯作者: 邓林峰(1984-),男,甘肃舟曲人,副教授.Email:denglinfeng2002@163.com
  • 基金资助:
    国家自然科学基金(62241308),甘肃省技术创新引导计划(22CX8GA130)

Data augmentation of rolling bearing faults based on SDP and W-DCGAN

SONG Hui-xian, DENG Lin-feng, ZHENG Yu-qiao   

  1. School of Mechanical and Electrical Engineering, Lanzhou University of Technology, Lanzhou 730050, China
  • Received:2023-02-28 Published:2025-12-31

摘要: 利用深度生成对抗网络进行滚动轴承小样本故障诊断时,存在生成样本质量不高、模型训练不稳定的缺陷.因此,提出了对称极坐标法(SDP)与Wasserstein距离深度卷积生成对抗网络(W-DCGAN)相结合的方法增强小样本轴承数据. 首先,利用参数优选的SDP转换一维时域信号,得到可输入W-DCGAN的二维图像;然后,采用控制变量法优化生成器和判别器的超参数,确定W-DCGAN基本结构;同时,为了增强W-DCGAN训练过程的稳定性,在判别器中加入谱归一化处理,提升模型生成样本的质量;最后,利用滚动轴承公开数据集对该方法的性能进行了实验验证.结果表明,改进后数据增强方法所生成样本的质量得到了明显提升,生成样本与原始样本的结构相似度和峰值信噪比分别提高了10.12%和12.46%.利用不同方法对滚动轴承故障进行识别,改进后数据增强方法的故障识别准确率最高,达到了99.47%,证明该方法能够有效实现滚动轴承故障小样本数据增强和模式识别.

关键词: 滚动轴承, 小样本, 数据增强, Wasserstein距离深度卷积生成对抗网络, 对称极坐标法

Abstract: When the traditional generative adversarial network is used to solve the fault diagnosis of rolling bearing with small samples, low quality of generated samples and unstable training process are the main defects of the network. Therefore, a new method combining symmetrized dot pattern (SDP) and Wasserstein-distance deep convolutional generative adversarial network (W-DCGAN) is proposed to augment the bearing data with small samples. First, the SDP with optimized parameters is used to transform the one-dimensional time-domain signal to the two-dimensional image suitable for inputting into W-DCGAN. Then, the controlled variable method is used to optimize the hyperparameters of the generator and discriminator to determine the basic structure of the W-DCGAN. Meantime, in order to enhance the stability of training process of W-DCGAN, spectral normalization is added into discriminator to improve the quality of generated samples. The performance of the method is verified by an open rolling bearing dataset. The results show that the quality of the generated samples of the proposed method is significantly improved. The structural similarity and peak signal-to-noise ratio of the generated samples relative to the original samples increase by 10.12% and 12.46%, respectively. For the rolling bearing fault identification, the proposed method has the highest accuracy of fault identification, reaching 99.47%, indicating its effectiveness in small sample data augmentation andpattern recognition for rolling bearing fault.

Key words: rolling bearing, small sample, data augmentation, W-DCGAN, symmetrized dot pattern

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