The following publications are possibly variants of this publication:
- Anomaly Detection based on Broad Leaning System for Rolling Element Bearing Fault DiagnosisLe Yang, Zelin Yang, Ziwei Zheng, Lijun He, Fan Li, C. L. Philip Chen. huc 2022: 462-467 [doi]
- Rolling element bearing weak fault diagnosis based on optimal wavelet scale cyclic frequency extractionRui Yang, Hongkun Li, Changbo He, Zhixin Zhang. jsce, 232(7):895-908, 2018. [doi]
- Intelligent fault diagnosis of rolling bearing based on a deep transfer learning networkZhenghong Wu, Hongkai Jiang, Sicheng Zhang, Xin Wang, Haidong Shao, Haoxuan Dou. icphm 2023: 105-111 [doi]
- Rolling-Element Bearing Fault Diagnosis Using Improved LeNet-5 NetworkLanjun Wan, Yiwei Chen, Hongyang Li, Changyun Li. sensors, 20(6):1693, 2020. [doi]
- K-means singular value decomposition method based on self-adaptive matching pursuit and its application in fault diagnosis of rolling bearing weak faultHongchao Wang, Wenliao Du. ijdsn, 16(5), 2020. [doi]
- Rolling bearing fault diagnosis based on variational mode decomposition and permutation entropyGuiji Tang, Xiaolong Wang, Yuling He, Shangkun Liu. urai 2016: 626-631 [doi]
- Mechanical fault diagnosis of rolling bearing based on locality-constrained sparse codingYang Li, Shuhui Bu, Zhenbao Liu, Chao Zhang. icphm 2015: 1-7 [doi]