4.6 Article

Synthesizing Rolling Bearing Fault Samples in New Conditions: A Framework Based on a Modified CGAN

Journal

SENSORS
Volume 22, Issue 14, Pages -

Publisher

MDPI
DOI: 10.3390/s22145413

Keywords

generative adversarial networks; fault detection and diagnosis; condition monitoring; signal processing; bearing fault detection

Funding

  1. NTWIST, Inc.
  2. Natural Sciences and Engineering Research Council (NSERC) Canada [ALLRP 555220-20]
  3. Fraunhofer IEM
  4. Duspohl Gmbh
  5. Encoway Gmbh from Germany

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Bearings are essential components of rotating machines, but they are prone to unexpected faults. This study focuses on bearing fault diagnosis and condition monitoring to reduce operational costs and downtime. The proposed algorithm based on CGANs is able to generate fault data from normal data, improving fault diagnosis tools and optimizing operational performance and safety.
Bearings are vital components of rotating machines that are prone to unexpected faults. Therefore, bearing fault diagnosis and condition monitoring are essential for reducing operational costs and downtime in numerous industries. In various production conditions, bearings can be operated under a range of loads and speeds, which causes different vibration patterns associated with each fault type. Normal data are ample as systems usually work in desired conditions. On the other hand, fault data are rare, and in many conditions, there are no data recorded for the fault classes. Accessing fault data is crucial for developing data-driven fault diagnosis tools that can improve both the performance and safety of operations. To this end, a novel algorithm based on conditional generative adversarial networks (CGANs) was introduced. Trained on the normal and fault data on actual fault conditions, this algorithm generates fault data from normal data of target conditions. The proposed method was validated on a real-world bearing dataset, and fault data were generated for different conditions. Several state-of-the-art classifiers and visualization models were implemented to evaluate the quality of the synthesized data. The results demonstrate the efficacy of the proposed algorithm.

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