Automated Design of Grey-Box Recurrent Neural Networks for Fault Diagnosis using Structural Models and Causal Information

被引:0
作者
Jung, Daniel [1 ]
机构
[1] Linkoping Univ, Dept Elect Engn, SE-58183 Linkoping, Sweden
来源
LEARNING FOR DYNAMICS AND CONTROL CONFERENCE, VOL 168 | 2022年 / 168卷
关键词
Recurrent neural networks; physics-informed machine learning; fault diagnosis; DRIVEN; IDENTIFICATION; CLASSIFIERS; SI;
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Behavioral modeling of nonlinear dynamic systems for control design and system monitoring of technical systems is a non-trivial task. One example is fault diagnosis where the objective is to detect abnormal system behavior due to faults at an early stage and isolate the faulty component. Developing sufficiently accurate models for fault diagnosis applications can be a time-consuming process which has motivated the use of data-driven models and machine learning. However, data-driven fault diagnosis is complicated by the facts that faults are rare events, and that it is not always possible to collect data that is representative of all operating conditions and faulty behavior. One solution to incomplete training data is to take into consideration physical insights when designing the data-driven models. One such approach is grey-box recurrent neural networks where physical insights about the monitored system are incorporated into the neural network structure. In this work, an automated design methodology is developed for grey-box recurrent neural networks using a structural representation of the system. Data from an internal combustion engine test bench is used to illustrate the potentials of the proposed network design method to construct residual generators for fault detection and isolation.
引用
收藏
页数:13
相关论文
共 35 条
  • [21] Remaining useful life estimation in prognostics using deep convolution neural networks
    Li, Xiang
    Ding, Qian
    Sun, Jian-Qiao
    [J]. RELIABILITY ENGINEERING & SYSTEM SAFETY, 2018, 172 : 1 - 11
  • [22] Lu L, 2019, 2019 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI 2019), P610, DOI 10.1109/SSCI44817.2019.9002703
  • [23] Lu YP, 2018, PR MACH LEARN RES, V80
  • [24] Ng KY, 2020, INT C CONTROL DECISI, P76, DOI 10.1109/CoDIT49905.2020.9263792
  • [25] Paszke A., 2017, AUTOMATIC DIFFERENTI
  • [26] Pizzuto Gabriella, 2021, PMLR, P611
  • [27] Possible conflicts:: A compilation technique for consistency-based diagnosis
    Pulido, B
    González, CA
    [J]. IEEE TRANSACTIONS ON SYSTEMS MAN AND CYBERNETICS PART B-CYBERNETICS, 2004, 34 (05): : 2192 - 2206
  • [28] State space neural networks and model-decomposition methods for fault diagnosis of complex industrial systems
    Pulido, Belarmino
    Zamarreno, Jesus M.
    Merino, Alejandro
    Bregon, Anibal
    [J]. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2019, 79 : 67 - 86
  • [29] Survey on data-driven industrial process monitoring and diagnosis
    Qin, S. Joe
    [J]. ANNUAL REVIEWS IN CONTROL, 2012, 36 (02) : 220 - 234
  • [30] Rahimilarki R, 2018, IEEE INTL CONF IND I, P647, DOI 10.1109/INDIN.2018.8471943