首页> 外文会议>International Conference on Prognostics and System Health Management >Data Augmentation Method for Fault Diagnosis of Mechanical Equipment Based on Improved Wasserstein GAN
【24h】

Data Augmentation Method for Fault Diagnosis of Mechanical Equipment Based on Improved Wasserstein GAN

机译:基于改进的Wassersein GaN的机械设备故障诊断数据增强方法

获取原文

摘要

Most of the time the mechanical equipment is in normal operation state, which results in high imbalance between fault data and normal data. In addition, traditional signal processing methods rely heavily on expert experience, making it difficult for classification or prediction algorithms to obtain accurate results. In view of the above problem, this paper proposed a method to augment failure data for mechanical equipment diagnosis based on Wasserstein generative adversarial networks with gradient penalty (WGAN-GP). First, the multi-dimensional sensor data are converted into two-dimensional gray images in order to avoid the interference of tedious parameters preset on the model and the dependence on the professional knowledge of signal preprocessing. Based on this foundation, the gray images of the minority sample are used as the input of WGAN-GP to carry out adversarial training until the network reaches the Nash Equilibrium. Then the generated images are added to the original failure samples, reducing the imbalance of the original data samples. Finally, by calculating the structural similarity index between the generated images and the original images, the difficulty of quantitative evaluation of WGAN-GP data generated by itself is solved. Taking the accelerated bearing failure dataset as an example, the classification prediction effects of different classifiers are compared. The results of multiple experiments shown that the proposed method can more effectively improve the prediction accuracy in the case of sparse fault samples.
机译:机械设备的大部分时间都处于正常运行状态,导致故障数据和正常数据之间的高不平衡。此外,传统的信号处理方法严重依赖于专家体验,使分类或预测算法难以获得准确的结果。鉴于上述问题,本文提出了一种基于Wassersein生成对冲网络的基于梯度惩罚(WAN-GP)的机械设备诊断的消毒数据的方法。首先,将多维传感器数据转换为二维灰度图像,以避免繁琐参数预设的繁琐参数的干扰以及对信号预处理的专业知识的依赖性。基于该基础,少数群体样本的灰色图像用作Wgan-GP的输入,以进行对抗性训练,直到网络达到纳什均衡。然后将所生成的图像添加到原始失败样本中,从而降低了原始数据样本的不平衡。最后,通过计算所生成的图像和原始图像之间的结构相似性指数,解决了由自身产生的Wgan-GP数据的定量评估的难度。以加速的轴承失效数据集采用加速的轴承失效数据集,比较了不同分类器的分类预测效果。多个实验结果表明,在稀疏故障样本的情况下,可以更有效地提高预测精度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号