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面向缺失数据迁移插补的矿用钻机主轴轴承故障诊断

邹筱瑜 唐子侯 刘晓 李鑫

工矿自动化2025,Vol.51Issue(12):27-35,44,10.
工矿自动化2025,Vol.51Issue(12):27-35,44,10.DOI:10.13272/j.issn.1671-251x.2025100003

面向缺失数据迁移插补的矿用钻机主轴轴承故障诊断

Fault diagnosis of main shaft bearings in mining drills for transfer imputation of missing data

邹筱瑜 1唐子侯 2刘晓 2李鑫2

作者信息

  • 1. 中国矿业大学机电工程学院,江苏徐州 221116||智能采矿装备技术全国重点实验室,江苏徐州 221116
  • 2. 中国矿业大学机电工程学院,江苏徐州 221116
  • 折叠

摘要

Abstract

In response to the problems of excessive noise,large drift,and numerous missing values in the monitoring data under complex underground working conditions of mining drilling machines,a bidirectional temporal convolutional joint generative adversarial interpolation network with embedded spatio-temporal attention(BiTCGAIN-STA)was designed.The bidirectional temporal convolutional network(BiTCN)is used to capture the temporal dependency between previous and subsequent time sequences,and the spatio-temporal attention(STA)mechanism is employed to adaptively allocate time and channel weights.Through generative adversarial training,the distribution consistency and diversity of the interpolated samples are improved.At the same time,real data fine-tuning is performed on the target domain to enhance the transfer robustness.A bearing fault diagnosis model based on adaptive weighted fusion and the Informer network is proposed.The Informer long sequence feature extraction network is used to deeply represent the fused signals,thereby improving the ability to identify weak fault features.Experimental results show that,under different missing rates,the root mean square error(RMSE)of the BiTCGAIN-STA model is significantly higher than that of mainstream models such as Mean,MICE,and GAIN,achieving high-quality data reconstruction.The bearing fault diagnosis model has an identification accuracy of 99.87%for weak faults,significantly higher than models such as Transformer and graph neural network(GNN).

关键词

矿用钻机/主轴轴承/轴承故障诊断/缺失数据插补/生成对抗网络/迁移学习/时空注意力

Key words

mining drill/main shaft bearing/bearing fault diagnosis/missing data imputation/generative adversarial network/transfer learning/spatial-temporal attention

分类

矿业与冶金

引用本文复制引用

邹筱瑜,唐子侯,刘晓,李鑫..面向缺失数据迁移插补的矿用钻机主轴轴承故障诊断[J].工矿自动化,2025,51(12):27-35,44,10.

基金项目

国家自然科学基金项目(62273349). (62273349)

工矿自动化

OA北大核心

1671-251X

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