现代制造工程 ›› 2026, Vol. 545 ›› Issue (2): 117-128.doi: 10.16731/j.cnki.1671-3133.2026.02.015

• 仪器仪表/检测/监控 • 上一篇    下一篇

基于时频域信号优化器的Mi-MkTCN轴承寿命预测模型*

刘毅1, 高雪莲1, 李一弘1, 王永琦1, 孔玲丽2, 康立军2   

  1. 1 华北电力大学电气与电子工程学院,北京 102206;
    2 北京博纳电气股份有限公司,北京 102206
  • 收稿日期:2025-05-19 出版日期:2026-02-18 发布日期:2026-03-18
  • 作者简介:刘毅,硕士研究生,主要研究方向为人工智能,E-mail:ly13102798997@163.com。高雪莲,博士,副教授,主要研究方向为人工智能算法应用、电子系统电磁兼容特性。E-mail:xuelian_gao@ncepu.edu.cn
  • 基金资助:
    *国家自然科学基金青年基金项目(62401205)

Mi-MkTCN bearing remaining useful life prediction model based on time frequency domain signal ratio optimizer

LIU Yi1, GAO Xuelian1, LI Yihong1, WANG Yongqi1, KONG Lingli2, KANG Lijun2   

  1. 1 School of Electrical and Electronic Engineering, North China Electric Power University, Beijing 102206, China;
    2 Beijing Bonacon Electric Co., Ltd., Beijing 102206, China
  • Received:2025-05-19 Online:2026-02-18 Published:2026-03-18

摘要: 滚动轴承是机械设备中的常见关键部件,准确预测其剩余使用寿命对机械设备的安全稳定运行至关重要。针对目前轴承寿命预测存在的轴承退化特征不明显、模型泛化能力差以及数据长期依赖关系难以捕捉的问题,提出基于时频域信号优化器(Time-Frequency domain signal Ratio Optimizer,TFRO)的多重膨胀多核时间卷积网络(Multi inflated Multi kernel Time Convolutional Network,Mi-MkTCN)模型。TFRO优化器为了精准记忆重要信息,在每一个时间节点上,将过去信息和当前信息重组,其中过去信息中的重要的时频域特征经过了有比例的分配。Mi-MkTCN利用多重膨胀确保重要特征不丢失,再利用多核时间卷积网络实现对不同尺度特征的提取。最终的消融对比实验验证了改进方法的有效性,模型的平均绝对误差、均方误差及均方根误差指标分别为0.001 45、0.050 69和0.120 45。实验结果表明,所提方法显著提升了轴承剩余使用寿命的预测精度,为轴承剩余使用寿命预测提供了高精度、高鲁棒性的解决方案。

关键词: 时频域信号比例优化器, 精准记忆TPA, 多重膨胀, 多核时间卷积网络, 轴承剩余使用寿命预测

Abstract: Rolling bearings were recognized as common key components in mechanical equipment. Accurate prediction of their remaining service life was considered crucial for safe and stable operation. A Multi inflated Multi kernel Time Convolutional Network (Mi-MkTCN) model was proposed to address current challenges in bearing life prediction. The model was based on a Time-Frequency domain signal Ratio Optimizer (TFRO). Three main problems were targeted:unclear bearing degradation characteristics,poor model generalization ability,and difficulty in capturing long-term data dependencies. The TFRO optimizer was designed to accurately retain important information. At each time node,past and current information were reassembled. Important time-frequency domain features from past information were proportionally allocated.Multiple dilation methods were employed in Mi-MkTCN to prevent loss of important features. A multi-kernel temporal convolutional network was then used to extract features at different scales. The effectiveness of the proposed model improvement method was demonstrated through ablation experiments. Algorithm comparison studies were conducted to verify the superiority of the TFRO-based Mi-MkTCN model. Performance metrics were recorded as follows: MAE(0.001 45),MSE(0.050 69),and RMSE(0.120 45). The experimental results showed that the proposed method significantly improved the prediction accuracy of the remaining service life of bearings,providing a high-precision and highly robust solution for predicting the remaining service life of bearings.

Key words: Time-Frequency domain signal Ratio Optimizer (TFRO), precision memory TPA, multi inflated, Multi inflated Multi kernel Time Convolutional Network(Mi-MkTCN), prediction of remaining useful life of bearings

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