Unsupervised Manufacturing Fault Detection Based on Self-labeled Training of Fingerprint Image Constructed from Time-Series Data

被引:2
|
作者
Seo, Jaedeok [1 ]
Kim, Wonjung [1 ,2 ]
Lee, Jeongsu [3 ]
机构
[1] Sogang Univ, Dept Mech Engn, Seoul 04107, South Korea
[2] Sogang Univ, Inst Emergent Mat, Seoul 04107, South Korea
[3] Gachon Univ, Dept Mech Smart & Ind Engn, Seongnam 13120, South Korea
关键词
Fault detection; Unsupervised learning; Anomaly detection; One-class classification; Deep learning; CONVOLUTIONAL NEURAL-NETWORK; ROTATING MACHINERY; ANOMALY DETECTION; DIAGNOSIS; CLASSIFICATION;
D O I
10.1007/s12541-023-00947-9
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The acquisition of properly labeled datasets is challenging, which hampers the implementation of industrial deep learning technology in actual manufacturing sites. This paper proposes an unsupervised manufacturing fault detection method based on self-labeled training to remedy the lack of properly labeled datasets. The proposed method comprises a two-step process of time-series imaging, termed fingerprinting, and normality calculation using self-labeled classification in a deep learning architecture. We compared our model with state-of-art one-class classification algorithms using an unlabeled dataset, which was obtained by varying the ratio of production failure samples in datasets. The proposed model exhibited better performance than baseline algorithms in terms of area under receiver operating curve (AUROC), even for the one-class classification using datasets comprising production success cases only. Moreover, more robust performance was observed compared to the baseline algorithms in several contamination conditions of datasets where the datasets comprised different proportions of production failure cases to simulate unlabeled manufacturing data. Our results suggest that the self-labeling-based fault detection model we propose is adaptable to both unsupervised and semi-supervised conditions. It can effectively enhance the detection of defects in scenarios characterized by exceptionally rare failure cases that closely resemble real-world situations.
引用
收藏
页码:699 / 711
页数:13
相关论文
共 50 条
  • [41] Normal Data-Based Motor Fault Diagnosis Using Stacked Time-Series Imaging Method
    Jung, W.
    Lim, D. G.
    Lim, B. H.
    Park, Y. H.
    HEALTH MONITORING OF STRUCTURAL AND BIOLOGICAL SYSTEMS XVIII, 2024, 12951
  • [42] Aircraft Engine Fault Detection Algorithm Based on Multivariate Time Series Sensor Data
    Bian, Hongning
    Zou, Qian
    Kong, Xinyi
    2024 SECOND INTERNATIONAL CONFERENCE ON INVENTIVE COMPUTING AND INFORMATICS, ICICI 2024, 2024, : 622 - 629
  • [43] Anomaly detection of industrial state quantity time-Series data based on correlation and long short-term memory
    Tang, Mingxin
    Chen, Wei
    Yang, Wen
    CONNECTION SCIENCE, 2022, 34 (01) : 2048 - 2065
  • [44] Light-weight federated learning-based anomaly detection for time-series data in industrial control systems
    Truong, Huong Thu
    Ta, Bac Phuong
    Le, Quang Anh
    Nguyen, Dan Minh
    Le, Cong Thanh
    Nguyen, Hoang Xuan
    Do, Ha Thu
    Nguyen, Hung Tai
    Tran, Kim Phuc
    COMPUTERS IN INDUSTRY, 2022, 140
  • [45] Unsupervised Change Point Detection and Trend Prediction for Financial Time-Series Using a New CUSUM-Based Approach
    Kim, Kyungwon
    Park, Ji Hwan
    Lee, Minhyuk
    Song, Jae Wook
    IEEE ACCESS, 2022, 10 : 34690 - 34705
  • [46] Toward Predictive Fault Tolerance in a Core-Router System: Anomaly Detection Using Correlation-Based Time-Series Analysis
    Jin, Shi
    Zhang, Zhaobo
    Chakrabarty, Krishnendu
    Gu, Xinli
    IEEE TRANSACTIONS ON COMPUTER-AIDED DESIGN OF INTEGRATED CIRCUITS AND SYSTEMS, 2018, 37 (10) : 2111 - 2124
  • [47] Time-Series Transfer Learning: An Early Stage Imbalance Fault Detection Method Based on Feature Enhancement and Improved Support Vector Data Description
    Ni, Xueqing
    Yang, Dongsheng
    Zhang, Huaguang
    Qu, Fuming
    Qin, Jia
    IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2023, 70 (08) : 8488 - 8498
  • [48] Temporal-Domain Adaptation for Satellite Image Time-Series Land-Cover Mapping With Adversarial Learning and Spatially Aware Self-Training
    Capliez, Emmanuel
    Ienco, Dino
    Gaetano, Raffaele
    Baghdadi, Nicolas
    Salah, Adrien Hadj
    IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2023, 16 : 3645 - 3675
  • [49] A graph embedding based fault detection framework for process systems with multi-variate time-series datasets
    Goswami, Umang
    Rani, Jyoti
    Kodamana, Hariprasad
    Tamboli, Prakash Kumar
    Vaswani, Parshotam Dholandas
    DIGITAL CHEMICAL ENGINEERING, 2024, 10
  • [50] Anomaly detection based on time series data from industrial automatic sewing machines
    Vranjes, Daniel
    Niggemann, Oliver
    2022 IEEE 5TH INTERNATIONAL CONFERENCE ON INDUSTRIAL CYBER-PHYSICAL SYSTEMS, ICPS, 2022,