A deep graph neural network-based link prediction model for proactive anomaly detection in discrete manufacturing workshop

被引:0
|
作者
Wang, Shengbo [1 ]
Guo, Yu [1 ]
Huang, Shaohua [1 ]
Lai, Ruixi [1 ]
Zhang, Litong [1 ]
Qian, Weiwei [1 ,2 ]
机构
[1] Nanjing Univ Aeronaut & Astronaut, Coll Mech & Elect Engn, Nanjing 210016, Peoples R China
[2] Ningbo Univ Technol, Ningbo 315211, Peoples R China
基金
中国国家自然科学基金;
关键词
Anomaly detection; Link prediction; Multi-source data; Manufacturing knowledge graph; Local graph learning;
D O I
10.1016/j.jmsy.2025.01.022
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Production anomaly has always been one of the main influencing factors that prevent discrete manufacturing workshops from maintaining stability and agility. Proactive anomaly detection can evaluate the production state and serves as a crucial foundation for preventive maintenance decision. Knowledge graph enables the use of multi-source manufacturing data as a data foundation for proactive anomaly detection. Although rich manufacturing data can comprehensively depict complex manufacturing process, constructing an accurate proactive anomaly detection model remains challenging because of insufficient analysis of the local and temporal features of the manufacturing process. This paper presents a link prediction model based on a deep graph neural network to solve the problem. Specifically, the manufacturing knowledge graph is constructed through OPC UA information model, Bert model and OWL semantic mapping model to organize multi-source heterogeneous data. The deep autoencoder model with local graph learning and the Seq2Seq model with attention mechanism are trained to analyze the neighboring relationship and the temporal correlation of the manufacturing elements, respectively. Finally, the link prediction model is designed by integrating both local and temporal features, with a restructured loss function to improve training effectiveness. Experiments suggest that the designed link prediction model has better prediction performance and is at least 25.6 % higher than the baseline models on the mean reciprocal rank.
引用
收藏
页码:301 / 317
页数:17
相关论文
共 50 条
  • [1] Graph neural network-based anomaly detection for human cyber physical systems
    Xue, Chengwen
    Lin, Limei
    Huang, Yanze
    Wang, Xiaoding
    JOURNAL OF THE CHINESE INSTITUTE OF ENGINEERS, 2024, 47 (08) : 977 - 984
  • [2] A graph attention network-based model for anomaly detection in multivariate time series
    Zhang, Wei
    He, Ping
    Qin, Chuntian
    Yang, Fan
    Liu, Ying
    JOURNAL OF SUPERCOMPUTING, 2024, 80 (06) : 8529 - 8549
  • [3] Anomaly detection based on a deep graph convolutional neural network for reliability improvement
    Xu, Gang
    Hu, Jie
    Qie, Xin
    Rong, Jingguo
    FRONTIERS IN ENERGY RESEARCH, 2024, 12
  • [4] Discrete log anomaly detection: A novel time-aware graph-based link prediction approach
    Yan, Lejing
    Luo, Chao
    Shao, Rui
    INFORMATION SCIENCES, 2023, 647
  • [5] EvAnGCN: Evolving Graph Deep Neural Network Based Anomaly Detection in Blockchain
    Patel, Vatsal
    Rajasegarar, Sutharshan
    Pan, Lei
    Liu, Jiajun
    Zhu, Liming
    ADVANCED DATA MINING AND APPLICATIONS (ADMA 2022), PT I, 2022, 13725 : 444 - 456
  • [6] DeepNet: A Deep Learning Architecture for Network-Based Anomaly Detection
    Zabihi, Javad
    Janeja, Vandana
    ON THE MOVE TO MEANINGFUL INTERNET SYSTEMS, OTM 2019, 2020, 11878 : 229 - 238
  • [7] Graph Neural Network-Based Efficient Subgraph Embedding Method for Link Prediction in Mobile Edge Computing
    Deng, Xiaolong
    Sun, Jufeng
    Lu, Junwen
    SENSORS, 2023, 23 (10)
  • [8] A Graph Attention Network-Based Link Prediction Method Using Link Value Estimation
    Zhang, Zhiwei
    Wu, Xiaoyin
    Zhu, Guangliang
    Qin, Wenbo
    Liang, Nannan
    IEEE ACCESS, 2024, 12 : 34 - 45
  • [9] Asymmetric Learning for Graph Neural Network based Link Prediction
    Yao, Kai-Lang
    Li, Wu-Jun
    ACM TRANSACTIONS ON KNOWLEDGE DISCOVERY FROM DATA, 2024, 18 (05)
  • [10] Link Prediction Based on Deep Convolutional Neural Network
    Wang, Wentao
    Wu, Lintao
    Huang, Ye
    Wang, Hao
    Zhu, Rongbo
    INFORMATION, 2019, 10 (05)