Out-of-Distribution Data Generation for Fault Detection and Diagnosis in Industrial Systems

被引:0
|
作者
Kafunah, Jefkine [1 ,2 ]
Verma, Priyanka [1 ,2 ]
Ali, Muhammad Intizar [3 ]
Breslin, John G. [1 ,2 ]
机构
[1] Univ Galway, Sch Engn, Galway H91 TK33, Ireland
[2] Univ Galway, Data Sci Inst, Galway H91 TK33, Ireland
[3] Dublin City Univ, Sch Elect Engn, Dublin 9, Ireland
基金
爱尔兰科学基金会;
关键词
Deep generative models; fault diagnosis; process monitoring; safety-critical; out-of-distribution data; variational autoencoder; uncertainty estimation; DEEP NEURAL-NETWORKS;
D O I
10.1109/ACCESS.2023.3337658
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The emergence of Industry 4.0 has transformed modern-day factories into high-tech industrial sites through rapid automation and increased access to real-time data. Deep learning approaches possessing superior capabilities for intelligent, data-driven fault diagnosis have become critical in ensuring process safety and reliability in these industrial sites. However, such applications trained exclusively on in-distribution process data face challenges in the wake of previously unseen out-of-distribution (OOD) data in the real world. This paper addresses the challenge of out-of-distribution data detection for deep learning-based fault diagnosis models by generating synthetic data to simulate real-world anomalies not present in the training set. We propose Manifold Guided Sampling (MGS), a data-driven method for generating synthetic OOD samples from the in-distribution data-supporting manifold estimated through a deep generative model. Synthetic data from MGS enhances the model capacity for prediction uncertainty quantification, resulting in safe and reliable models for real-world industrial process monitoring. Furthermore, the MGS algorithm maintains the in-distribution data feature space as a reference point during data generation to ensure the resulting synthetic OOD data is realistic. We analyze the effectiveness of MGS through experiments conducted on the steel plates faults dataset and demonstrate that augmenting training data with synthetic data from MGS enhances the model performance in OOD detection tasks and provides robustness against dataset distributional shifts. The findings underscore the effectiveness of utilizing synthetic MGS-generated OOD data in scenarios where real-world OOD data is limited, enabling better generalization and more reliable fault detection in practical applications.
引用
收藏
页码:135061 / 135073
页数:13
相关论文
共 50 条
  • [1] Fault Diagnosis of PV Modules based on Convolution Neural Network and Out-of-distribution Detection
    Liu, Mengcheng
    Hong, Liu
    Sheng, Jie
    Li, Feng
    Zhu, Jin
    Ling, Qiang
    [J]. 2023 35TH CHINESE CONTROL AND DECISION CONFERENCE, CCDC, 2023, : 1170 - 1175
  • [2] A Model for Machine Fault Diagnosis based on Mutual Exclusion Theory and Out-of-Distribution Detection
    Cui, Peng
    Luo, Xuan
    Liu, Jing
    [J]. KSII TRANSACTIONS ON INTERNET AND INFORMATION SYSTEMS, 2022, 16 (09): : 2927 - 2941
  • [3] Out-of-distribution Detection Learning with Unreliable Out-of-distribution Sources
    Zheng, Haotian
    Wang, Qizhou
    Fang, Zhen
    Xia, Xiaobo
    Liu, Feng
    Liu, Tongliang
    Han, Bo
    [J]. ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 36 (NEURIPS 2023), 2023,
  • [4] OODCN: Out-Of-Distribution Detection in Capsule Networks for Fault Identification
    Mitiche, Imene
    Salimy, Alireza
    Werner, Falk
    Boreham, Philip
    Nesbitt, Alan
    Morison, Gordon
    [J]. 29TH EUROPEAN SIGNAL PROCESSING CONFERENCE (EUSIPCO 2021), 2021, : 1686 - 1690
  • [5] An Object Detection Model Robust to Out-of-Distribution Data
    Park, Ho-rim
    Hwang, Kyu-hong
    Ha, Young-guk
    [J]. 2021 IEEE INTERNATIONAL CONFERENCE ON BIG DATA AND SMART COMPUTING (BIGCOMP 2021), 2021, : 275 - 278
  • [6] Data Invariants to Understand Unsupervised Out-of-Distribution Detection
    Doorenbos, Lars
    Sznitman, Raphael
    Marquez-Neila, Pablo
    [J]. COMPUTER VISION, ECCV 2022, PT XXXI, 2022, 13691 : 133 - 150
  • [7] On the Learnability of Out-of-distribution Detection
    Fang, Zhen
    Li, Yixuan
    Liu, Feng
    Han, Bo
    Lu, Jie
    [J]. Journal of Machine Learning Research, 2024, 25
  • [8] Entropic Out-of-Distribution Detection
    Macedo, David
    Ren, Tsang Ing
    Zanchettin, Cleber
    Oliveira, Adriano L., I
    Ludermir, Teresa
    [J]. 2021 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2021,
  • [9] Watermarking for Out-of-distribution Detection
    Wang, Qizhou
    Liu, Feng
    Zhang, Yonggang
    Zhang, Jing
    Gong, Chen
    Liu, Tongliang
    Han, Bo
    [J]. ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 35 (NEURIPS 2022), 2022,
  • [10] On the Learnability of Out-of-distribution Detection
    Fang, Zhen
    Li, Yixuan
    Liu, Feng
    Han, Bo
    Lu, Jie
    [J]. JOURNAL OF MACHINE LEARNING RESEARCH, 2024, 25