Search Results - "Jipu Li"

Refine Results
  1. 1

    Dynamic Distribution Adaptation Based Transfer Network for Cross Domain Bearing Fault Diagnosis by Liao, Yixiao, Huang, Ruyi, Li, Jipu, Chen, Zhuyun, Li, Weihua

    Published in Chinese journal of mechanical engineering (01-12-2021)
    “…In machinery fault diagnosis, labeled data are always difficult or even impossible to obtain. Transfer learning can leverage related fault diagnosis knowledge…”
    Get full text
    Journal Article
  2. 2
  3. 3

    Clustering Federated Learning for Bearing Fault Diagnosis in Aerospace Applications with a Self-Attention Mechanism by Li, Weihua, Yang, Wansheng, Jin, Gang, Chen, Junbin, Li, Jipu, Huang, Ruyi, Chen, Zhuyun

    Published in Aerospace (01-09-2022)
    “…Bearings, as the key mechanical components of rotary machinery, are widely used in modern aerospace equipment, such as helicopters and aero-engines…”
    Get full text
    Journal Article
  4. 4

    A perspective survey on deep transfer learning for fault diagnosis in industrial scenarios: Theories, applications and challenges by Li, Weihua, Huang, Ruyi, Li, Jipu, Liao, Yixiao, Chen, Zhuyun, He, Guolin, Yan, Ruqiang, Gryllias, Konstantinos

    Published in Mechanical systems and signal processing (15-03-2022)
    “…Deep Transfer Learning (DTL) is a new paradigm of machine learning, which can not only leverage the advantages of Deep Learning (DL) in feature representation,…”
    Get full text
    Journal Article
  5. 5

    Deep Semisupervised Domain Generalization Network for Rotary Machinery Fault Diagnosis Under Variable Speed by Liao, Yixiao, Huang, Ruyi, Li, Jipu, Chen, Zhuyun, Li, Weihua

    “…In recent years, deep learning has become a promising tool for rotary machinery fault diagnosis, but it works well only when testing samples and training…”
    Get full text
    Journal Article
  6. 6

    Domain Adversarial Transfer Network for Cross-Domain Fault Diagnosis of Rotary Machinery by Chen, Zhuyun, He, Guolin, Li, Jipu, Liao, Yixiao, Gryllias, Konstantinos, Li, Weihua

    “…Recently, deep learning-based intelligent fault diagnosis techniques have obtained good classification performance with amount of supervised training data…”
    Get full text
    Journal Article
  7. 7

    A Robust Weight-Shared Capsule Network for Intelligent Machinery Fault Diagnosis by Huang, Ruyi, Li, Jipu, Wang, Shuhua, Li, Guanghui, Li, Weihua

    “…In practical industrial applications, the working conditions of machinery are changing with long-term operation, and the health status is declining with the…”
    Get full text
    Journal Article
  8. 8

    A Two-Stage Transfer Adversarial Network for Intelligent Fault Diagnosis of Rotating Machinery With Multiple New Faults by Li, Jipu, Huang, Ruyi, He, Guolin, Liao, Yixiao, Wang, Zhen, Li, Weihua

    Published in IEEE/ASME transactions on mechatronics (01-06-2021)
    “…Recently, deep transfer learning based intelligent fault diagnosis has been widely investigated, and the tasks that source and target domains share the same…”
    Get full text
    Journal Article
  9. 9

    Deep Ensemble Capsule Network for Intelligent Compound Fault Diagnosis Using Multisensory Data by Huang, Ruyi, Li, Jipu, Li, Weihua, Cui, Lingli

    “…With the manufacturing industry stepping into the emerging new era of big data and intelligence, the amount of data collected from perception and monitoring…”
    Get full text
    Journal Article
  10. 10

    Deep Adversarial Capsule Network for Compound Fault Diagnosis of Machinery Toward Multidomain Generalization Task by Huang, Ruyi, Li, Jipu, Liao, Yixiao, Chen, Junbin, Wang, Zhen, Li, Weihua

    “…With advanced measurement technologies and signal analytics algorithms developed rapidly, the past decades have witnessed large amount of successful…”
    Get full text
    Journal Article
  11. 11

    Federated Transfer Learning for Bearing Fault Diagnosis With Discrepancy-Based Weighted Federated Averaging by Chen, Junbin, Li, Jipu, Huang, Ruyi, Yue, Ke, Chen, Zhuyun, Li, Weihua

    “…Generally, high performance of deep learning (DL)-based machinery fault diagnosis methods relies on abundant labeled fault samples under various working…”
    Get full text
    Journal Article
  12. 12

    Deep Self-Supervised Domain Adaptation Network for Fault Diagnosis of Rotating Machine With Unlabeled Data by Li, Jipu, Huang, Ruyi, Chen, Junbin, Xia, Jingyan, Chen, Zhuyun, Li, Weihua

    “…Recently, domain adaptation (DA)-based fault diagnosis (FD) approaches have been receiving increasing attention in intelligent FD of rotating machinery due to…”
    Get full text
    Journal Article
  13. 13

    A Multi-Source Weighted Deep Transfer Network for Open-Set Fault Diagnosis of Rotary Machinery by Chen, Zhuyun, Liao, Yixiao, Li, Jipu, Huang, Ruyi, Xu, Lei, Jin, Gang, Li, Weihua

    Published in IEEE transactions on cybernetics (01-03-2023)
    “…In real industries, there often exist application scenarios where the target domain holds fault categories never observed in the source domain, which is an…”
    Get full text
    Journal Article
  14. 14

    A Deep Adversarial Transfer Learning Network for Machinery Emerging Fault Detection by Li, Jipu, Huang, Ruyi, He, Guolin, Wang, Shuhua, Li, Guanghui, Li, Weihua

    Published in IEEE sensors journal (01-08-2020)
    “…Deep transfer learning has attracted many attentions in machine intelligent fault diagnosis. However, most existed deep transfer learning algorithms encounter…”
    Get full text
    Journal Article
  15. 15

    Multiscale Wavelet Prototypical Network for Cross-Component Few-Shot Intelligent Fault Diagnosis by Yue, Ke, Li, Jipu, Chen, Junbin, Huang, Ruyi, Li, Weihua

    “…The techniques of machine learning, as well as deep learning (DL) methods, have seen a wide application in the intelligent fault diagnosis field these years…”
    Get full text
    Journal Article
  16. 16

    Generalized open-set domain adaptation in mechanical fault diagnosis using multiple metric weighting learning network by Chen, Zhuyun, Xia, Jingyan, Li, Jipu, Chen, Junbin, Huang, Ruyi, Jin, Gang, Li, Weihua

    Published in Advanced engineering informatics (01-08-2023)
    “…•A generalized open-set fault diagnosis (OSFD) scenario is defined.•A multiple metric weighting learning network is constructed to address two OSFD issues…”
    Get full text
    Journal Article
  17. 17

    Multiple Source-free Domain Adaptation Network based on Knowledge Distillation for Machinery Fault Diagnosis by Yue, Ke, Li, Jipu, Chen, Zhuyun, Huang, Ruyi, Li, Weihua

    “…Data privacy protection is a hot-button issue in the field of intelligent fault diagnosis. For this purpose, plenty of methods are recently proposed to adapt a…”
    Get full text
    Journal Article
  18. 18

    Digital Twin-Assisted Fault Diagnosis of Rotating Machinery Without Measured Fault Data by Xia, Jingyan, Huang, Ruyi, Li, Jipu, Chen, Zhuyun, Li, Weihua

    “…Timely and accurate data-driven fault diagnosis approaches are essential for ensuring the reliable operation and efficient maintenance of rotating machinery…”
    Get full text
    Journal Article
  19. 19

    Deep continual transfer learning with dynamic weight aggregation for fault diagnosis of industrial streaming data under varying working conditions by Li, Jipu, Huang, Ruyi, Chen, Zhuyun, He, Guolin, Gryllias, Konstantinos C., Li, Weihua

    Published in Advanced engineering informatics (01-01-2023)
    “…Catastrophic forgetting of learned knowledges and distribution discrepancy of different data are two key problems within fault diagnosis fields of rotating…”
    Get full text
    Journal Article
  20. 20

    An auto-regulated universal domain adaptation network for uncertain diagnostic scenarios of rotating machinery by Li, Jipu, Zhang, Xiaoge, Yue, Ke, Chen, Junbin, Chen, Zhuyun, Li, Weihua

    Published in Expert systems with applications (01-09-2024)
    “…In recent years, domain adaptation techniques have garnered significant attention in the field of intelligent fault diagnosis for mechanical equipment. Domain…”
    Get full text
    Journal Article