Uncertainty-aware deep learning for monitoring and fault diagnosis from synthetic data

被引:3
|
作者
Das, Laya [1 ]
Gjorgiev, Blazhe [1 ]
Sansavini, Giovanni [1 ]
机构
[1] Swiss Fed Inst Technol, Inst Energy & Proc Engn, Dept Mech & Proc Engn, Reliabil & Risk Engn Lab, CH-8092 Zurich, Switzerland
关键词
Uncertainty quantification; Assumed density filtering; Bayesian neural networks; Heteroskedastic neural networks; QUANTIFICATION;
D O I
10.1016/j.ress.2024.110386
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Deep neural networks (DNNs) are often coupled with physics-based and data-driven models to perform fault detection and health monitoring. The system models serve as digital surrogates that generate large quantities of data for training DNNs which would otherwise be difficult to obtain from the real-life system. In such a scenario, the uncertainty in the system model and in the DNN parameters will influence the predictions of the DNN. Here, we quantify the impact of this uncertainty on the performance of DNNs. The uncertainty from the system model is captured with two methods, namely assumed density filtering and heteroskedastic modelling. In addition to quantification, these methods allow training DNNs in an uncertainty-aware manner. The uncertainty in the DNN parameters is captured with Monte Carlo dropout. The proposed approach is demonstrated for fault diagnosis of electric power lines. Data generated from a physics-based model calibrated with real-life measurements is used to train three neural network architectures for fault diagnosis. The results reveal that uncertainty-aware models can provide 1% to 19% improvement in classification accuracy than their deterministic counterparts. The uncertainty-aware models also exhibit better robustness to uncertainty and, thus, offer more reliable models for deployment. Remarkably, the article provides a system-agnostic framework for uncertainty-aware training of DNN models for fault diagnosis and monitoring that explicitly accounts for the synthetic nature of training data.
引用
收藏
页数:11
相关论文
共 50 条
  • [41] Uncertainty-Aware Prognosis via Deep Gaussian Process
    Biggio, Luca
    Wieland, Alexander
    Chao, Manuel Arias
    Kastanis, Iason
    Fink, Olga
    IEEE ACCESS, 2021, 9 : 123517 - 123527
  • [42] GUMBLE: Uncertainty-Aware Conditional Mobile Data Generation Using Bayesian Learning
    Skocaj, Marco
    Amorosa, Lorenzo Mario
    Lombardi, Michele
    Verdone, Roberto
    IEEE TRANSACTIONS ON MOBILE COMPUTING, 2024, 23 (12) : 13158 - 13171
  • [43] Uncertainty-aware data pipeline of calibrated MEMS sensors used for machine learning
    Dorst T.
    Gruber M.
    Seeger B.
    Vedurmudi A.P.
    Schneider T.
    Eichstädt S.
    Schütze A.
    Measurement: Sensors, 2022, 22
  • [44] Uncertainty-Aware Bootstrap Learning for Joint Extraction on Distantly-Supervised Data
    Li, Yufei
    Yu, Xiao
    Liu, Yanchi
    Chen, Haifeng
    Liu, Cong
    61ST CONFERENCE OF THE THE ASSOCIATION FOR COMPUTATIONAL LINGUISTICS, ACL 2023, VOL 2, 2023, : 1349 - 1358
  • [45] An Uncertainty-Aware Deep Learning Model for Reliable Detection of Steel Wire Rope Defects
    Yi, Wenting
    Chan, Wai Kit
    Lee, Hiu Hung
    Boles, Steven T.
    Zhang, Xiaoge
    IEEE TRANSACTIONS ON RELIABILITY, 2024, 73 (02) : 1187 - 1201
  • [46] Uncertainty-Aware Health Diagnostics via Class-Balanced Evidential Deep Learning
    Xia, Tong
    Dang, Ting
    Han, Jing
    Qendro, Lorena
    Mascolo, Cecilia
    IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS, 2024, 28 (11) : 6417 - 6428
  • [47] Uncertainty-aware deep learning for robot touch: Application to Bayesian tactile servo control
    Vazquez, Manuel Floriano
    Lepora, Nathan F.
    2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021), 2021, : 1615 - 1621
  • [48] Application of Deep Learning Method for Condition Monitoring and Fault Diagnosis from Vibration Data in Bearings
    Gursel Ozmen, Nurhan
    Karabacak, Yunus Emre
    KONYA JOURNAL OF ENGINEERING SCIENCES, 2022, 10 (02): : 346 - 365
  • [49] An uncertainty-aware deep reinforcement learning framework for residential air conditioning energy management
    Lork, Clement
    Li, Wen-Tai
    Qin, Yan
    Zhou, Yuren
    Yuen, Chau
    Tushar, Wayes
    Saha, Tapan K.
    APPLIED ENERGY, 2020, 276 (276)
  • [50] Hierarchical deep network with uncertainty-aware semi-supervised learning for vessel segmentation
    Li, Chenxin
    Ma, Wenao
    Sun, Liyan
    Ding, Xinghao
    Huang, Yue
    Wang, Guisheng
    Yu, Yizhou
    NEURAL COMPUTING & APPLICATIONS, 2022, 34 (04): : 3151 - 3164