Ajou University repository

Spectrum-guided GAN with density-directionality sampling: Diverse high-fidelity signal generation for fault diagnosis of rotating machinery
  • Kim, Taehun ;
  • Ko, Jin Uk ;
  • Lee, Jinwook ;
  • Chae Kim, Yong ;
  • Jung, Joon Ha ;
  • Youn, Byeng D.
Citations

SCOPUS

3

Citation Export

Publication Year
2024-10-01
Publisher
Elsevier Ltd
Citation
Advanced Engineering Informatics, Vol.62
Keyword
Class-imbalanceData generationFault diagnosisRandomness of latent vectors sampling
Mesh Keyword
Adversarial networksClass imbalanceData generationFault dataFaults diagnosisHigh-fidelityLatent vectorsRandomness of latent vector samplingSpectra'sVector sampling
All Science Classification Codes (ASJC)
Information SystemsArtificial Intelligence
Abstract
In the field of fault diagnosis for rotating machinery, where available fault data are limited, numerous studies have employed a generative adversarial network (GAN) for data generation. However, the limited fault data for training GAN exacerbate GAN's inherent training instability and mode collapse issues, which are induced by adversarial training. Moreover, the stochastic nature of random sampling for latent vectors sampling often results in low-fidelity and poor diversity generation, which negatively affects the fault diagnosis models. To address these issues, this paper presents two novel approaches: a spectrum-guided GAN (SGAN) and density-directionality sampling (DDS). SGAN mitigates training instability and mode collapse through combinatorial data utilization, adversarial spectral loss, and a tailored model structure. DDS ensures the high-fidelity and high-diversity of the generated data by selectively sampling the latent vectors through two steps: density-based filtering and directionality-based sampling in the feature space. Validation on both rotor and rolling element bearing datasets demonstrates that SGAN-DDS considerably improves classification results under the limited fault data. Furthermore, fidelity and diversity analyses are conducted to validate DDS, which increase the credibility of the proposed method; and offer advancement toward the application of deep-learning and GAN in industrial fields.
ISSN
1474-0346
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/34528
DOI
https://doi.org/10.1016/j.aei.2024.102821
Fulltext

Type
Article
Funding
This work was supported by the Hyundai Motor Chung Mong-Koo Foundation and the International Research & Development Program of the National Research Foundation of Korea (NRF) funded by the Ministry of Science and ICT (No. 2022K1A4A7A04096329 ).
Show full item record

Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

Related Researcher

Jung, Joon Ha Image
Jung, Joon Ha정준하
Department of Industrial Engineering
Read More

Total Views & Downloads

File Download

  • There are no files associated with this item.