欢迎访问昆明冶金高等专科学校学报官方网站,今天是 分享到:

昆明冶金高等专科学校学报 ›› 2025, Vol. 41 ›› Issue (1): 95-.DOI: 10.3969/j.issn.1009-0479.2025.01.014

• 机械设计制造与自动化技术 • 上一篇    

基于 CAGNet网络的行星齿轮箱故障诊断

  

  1. 1.昆明冶金高等专科学校实训与创新创业学院,云南 昆明 650033; 2.昆明理工大学信息工程与自动化学院,云南 昆明 65050
  • 收稿日期:2024-06-17 出版日期:2025-02-07 发布日期:2025-09-28
  • 作者简介:郝中波 (1976-),男,江苏沛县人,副教授,工学硕士,主要从事机电一体化教学和实践教学管理与研究。

Fault Diagnosis of Planetary Gearbox Based on CAGNet Network

  1. 1. Faculty of Training and lnnovation Entrepreneurship, Kunming Metallurgy College, Kunming 650033, China;2. Faculty of Information Engineering and Automation, Kunming tniversity of Seience and Technology, Kunming 650500, China
  • Received:2024-06-17 Online:2025-02-07 Published:2025-09-28

摘要: 针对实际工程中行星齿轮箱故障数据难以获取,导致传统的机器学习算法诊断精度不高的问题,提出 一种基于 CAGNet(ConvAttentionGearNet)网络的行星齿轮箱故障诊断方法。首先,利用建立的唯象模型得到 不同故障下的振动仿真信号,通过对仿真信号进行分段截取,构建网络训练数据集,以解决行星齿轮箱训练样 本不足的问题;其次,为了提升网络训练效率和收敛速度,先利用 2个卷积层进行有效的特征提取和信息传递, 加速网络训练过程,并将卷积注意力机制嵌入残差网络中,提取信号的深层特征,利用筛选特征,建立 CAGNet 网络模型,提高了模型诊断准确率;最后,基于仿真和实验数据完成所提模型与残差网络 (ResNet)、深度残差 收缩网络 (DRSN)和 MSACNN网络的对比分析,其诊断精度分别提高了 15%、25%、45%。

关键词: 行星齿轮箱, 残差网络, 注意力机制, 故障诊断

Abstract: Aiming to address the challenge of insufficient fault data for planetary gearboxes in practicalengineering, which results in low diagnostic aeeuracy of traditional machine learning algorithms, a fauldiagnosis method based on the CAGNet (Conv Attention Gear Net) network is proposed. Firstly, vibration simulation signals under different fault conditions are generated using an established phenomenologieal model. By segmenting these simulation signals, a network training dataset is constructed to overcomethe issue of limited training samples for planetary gearboxes. Secondly, to enhance network training effi.cieney and convergence speed , two convolutional layers are utilized for elfective feature extraction and in.lormation transmission , aecelerating the training process. Additionally, the convolutional attention mech.anism is embedded in the Residual Network to capture deep features of the signal. By selecting these fea.tures, the CAGNet network model is developed, which improves the model's diagnostic accuracy. Final-ly, based on both simulation and experimental data, the proposed model is compared with the ResidualNetwork ( ResNet), Deep Residual Shrinkage Network ( DRSN), and MSACNN network. The diagnosticaccuracy of the proposed model is improved by 1.5% , 2.5% , and 4. 5%6 , respectively.

Key words: planetary gearbox, Residual Network : attention mechanism, fault diagnosis