Fault Diagnosis of Variable Speed Bearings Based on GADF and ResNet34 Introduced Transfer Learning
HOU Dong-xiao1, MU Jin-tao1, FANG Cheng1, SHI Pei-ming2
1. School of Control Engineering, Northeastern University at Qinhuangdao, Qinhuangdao 066004, China; 2. School of Electrical Engineering, Yanshan University, Qinhuangdao 066004, China.
HOU Dong-xiao, MU Jin-tao, FANG Cheng, SHI Pei-ming. Fault Diagnosis of Variable Speed Bearings Based on GADF and ResNet34 Introduced Transfer Learning[J]. Journal of Northeastern University(Natural Science), 2022, 43(3): 383-389.
[1]Tang G,Wang Y,Huang Y,et al.Multiple time-frequency curve classification for tacho-less and resampling-less compound bearing fault detection under time-varying speed conditions[J].IEEE Sensors Journal,2021,21(4):5091-5101. [2]Tra V,Kim J,Khan S A,et al.Incipient fault diagnosis in bearings under variable speed conditions using multiresolution analysis and a weighted committee machine[J].The Journal of the Acoustical Society of America,2017,142(1):35-41. [3]Niu J,Lu S,Liu Y,et al.Bearing fault diagnosis of BLDC motor using Vold-Kalman order tracking filter under variable speed condition[C]//IEEE Conference on Industrial Electronics and Applications(ICIEA).Xian,2019:2379-2383. [4]He K M,Zhang X,Ren S,et al.Deep residual learning for image recognition[C]//IEEE Conference on Computer Vision and Pattern Recognition.Seattle,2016:770-778. [5]Chen X H,Zhang B K,Gao D.Bearing fault diagnosis base on multi-scale CNN and LSTM model[J].Journal of Intelligent Manufacturing,2021,32(1):971-987. [6]Eren L,Ince T,Kiranyaz S.A generic intelligent bearing fault diagnosis system using compact adaptive 1D CNN classifier[J].Journal of Signal Processing Systems for Signal Image and Video Technology,2019,91(2):179-189. [7]张立智,徐卫晓,井陆阳,等.基于EMD-SVD和CNN的旋转机械故障诊断[J].振动,测试与诊断,2020,40(6):1063-1070,1228.(Zhang Li-zhi,Xu Wei-xiao,Jing Lu-yang,et al.Fault diagnosis of rotating machinery based on EMD-SVD and CNN[J].Vibration,Test and Diagnosis,2020,40(6):1063-1070,1228.) [8]Zhang W,Li C H,Peng G L,et al.A deep convolutional neural network with new training methods for bearing fault diagnosis under noisy environment and different working load[J].Mechanical Systems and Signal Processing,2018,100(1):439-453. [9]Wang Z,Oates T.Imaging time-series to improve classification and imputation[C]//The 24th International Joint Conference on Artificial Intelligence(IJCAI).Buenos Aires,Argentina,2015:3939-3945. [10]Hoang D T,Kang H J.Rolling element bearing fault diagnosis using convolutional neural network and vibration image[J].Cognitive Systems Research,2018,53:42-50. [11]万齐杨,熊邦书,李新民,等.基于DCAE-CNN的自动倾斜器滚动轴承故障诊断[J].振动与冲击,2020,39(11):273-279.(Wan Qi-yang,Xiong Bang-shu,Li Xin-min,et al.Automatic tilter rolling bearing fault diagnosis based on DCAE-CNN [J].Vibration and Shock,2020,39(11):273-279.) [12]Yuan Z,Zhang L,Duan L,et al.Intelligent fault diagnosis of rolling element bearings based on HHT and CNN[C]//Prognostics and System Health Management Conference(PHM-Chongqing).Chongqing,2018:292-296. [13]Case Western Reserve University Bearing Data Center.Data file[EB/OL].(2018-06-10)[2021-03-10].https://cse groups. case. edu/bearing datacenter/pages/download-data-file. [14]仝钰,庞新宇,魏子涵.基于GADF-CNN的滚动轴承故障诊断方法[J].振动与冲击,2021,40(5):247-253,260.(Tong Yu,Pang Xin-Yu,Wei Zi-Han.A GADF-CNN based rolling bearing fault diagnosis method[J].Vibration and Shock,2021,40(5):247-253,260.) [15]Huang H,Baddour N.Bearing vibration data under time-varying rotational speed conditions[J].Data in Brief,2018,21:1745-1749.