Fault Diagnosis of Energy Networks Based on Improved Spatial-Temporal Graph Neural Network With Massive Missing Data

被引:4
|
作者
Zhang, Jingfei [1 ]
Cheng, Yean [2 ]
He, Xiao [3 ]
机构
[1] Tsinghua Univ, Dept Automat, Beijing 100084, Peoples R China
[2] Peking Univ, Sch Comp Sci, Beijing 100084, Peoples R China
[3] Tsinghua Univ, Dept Automat, BNRIST, Beijing 100084, Peoples R China
基金
中国国家自然科学基金;
关键词
Energy networks; fault diagnosis; data missing; graph neural network (GNN); gated recurrent units (GRU); LEAKAGE DETECTION;
D O I
10.1109/TASE.2023.3281394
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In order to ensure the safe and reliable operation of the energy system, real-time fault diagnosis technology is indispensable. Energy systems are typically complex systems consisting of multiple subsystems that are coupled with each other. Before and after the occurrence of a fault, the system is generally in an abnormal or even harsh environment, which may cause a large number of randomly missing measurement data and make the application of fault diagnosis technology extremely difficult. In this paper, the graph attention network (GAT) is improved by a Gaussian mixture model (GMM) for incomplete-data representation. The iteratively updated expectation of the GMM serves as the characterization of missing data, which significantly improves the ability to fill in missing data. The GAT fuses multi-source data according to the topology structure so as to comprehensively exploit the spatial information. The gated recurrent units (GRU) extract dynamic fault information from embedded spatial features and classify the time series into various fault types. Moreover, we propose a loss function in the form of weighted focal loss so that the fault-class imbalance issue brought by the data deficiency can be solved. The proposed uniform spatial-temporal graph neural network classification framework together with the GMM (GM-STGNN) can effectively improve fault diagnosis performance and is applied on an experimental platform of an authentic industrial estate. Results of comparative experiments under different conditions of both sufficient and deficient data illustrate the efficiency and advancement of the proposed method. Note to Practitioners-This paper presents a fault diagnosis method for large-scale energy systems with massive missing data. The proposed GM-STGNN framework can be applied in complex energy networks consisting of coupling subsystems, such as power grids, heating networks, and gas networks. With an incomplete-data representation mechanism, the proposed method utilizes topology information to comprehensively exploit spatial features, it also recurrently transmits historical embedded features and extracts dynamic fault characteristics. Therefore, it can effectively improve energy-network fault identification accuracy when more than half of the sample exists vacant values randomly. In the training procedure, after pre-setting the model scale, data acquired by multi-source sensors is put into the model according to the real topology structure, and corresponding fault labels serve as the supervision. The statistical characteristics of missing data are learned with neural-network parameters until the loss converges. In practical application, the sampling data is divided by a time window of a few seconds. The missing data is mitigated by the estimated expectation of the GMM. Therefore, real-time fault classification results can be obtained with high accuracy. The effectiveness of the proposed method is illustrated by fault diagnosis of a typical distributed heating network under the noise influence. Benefiting from the ability to learn fault knowledge, the proposed method can be easily applied to new scenarios where the process data and topology structure of the system are known.
引用
收藏
页码:3576 / 3587
页数:12
相关论文
共 50 条
  • [21] Spatial-temporal masked graph autoencoder for rotating machinery fault diagnosis with limited data
    Xiong, Wanquan
    Han, Yanfeng
    Wu, Qile
    Xiao, Ke
    Song, Bin
    JOURNAL OF VIBRATION AND CONTROL, 2025,
  • [22] Pedestrian Fall Detection Based on Improved Spatial-Temporal Graph Convolutional Network
    Lin, Yuanqiang
    Gao, Hui
    Wang, Peng
    Lv, Zhigang
    Li, Xiaoyan
    Wang, Chu
    2023 9th International Conference on Mechanical and Electronics Engineering, ICMEE 2023, 2023, : 455 - 459
  • [23] Spatial-temporal correlated graph neural networks based on neighborhood feature selection for traffic data prediction
    Yang, Jiale
    Xie, Fei
    Yang, Jiquan
    Shi, Jianjun
    Zhao, Jing
    Zhang, Rui
    APPLIED INTELLIGENCE, 2023, 53 (04) : 4717 - 4732
  • [24] Spatial-temporal correlated graph neural networks based on neighborhood feature selection for traffic data prediction
    Jiale Yang
    Fei Xie
    Jiquan Yang
    Jianjun Shi
    Jing Zhao
    Rui Zhang
    Applied Intelligence, 2023, 53 : 4717 - 4732
  • [25] Traffic Flow Prediction Based on Dynamic Graph Spatial-Temporal Neural Network
    Jiang, Ming
    Liu, Zhiwei
    MATHEMATICS, 2023, 11 (11)
  • [26] Traffic Speed Prediction Based on Spatial-Temporal Fusion Graph Neural Network
    Liu, Zhongbo
    Li, Mingkui
    Zhao, Jianli
    Sun, Qiuxia
    Zhuo, Futong
    2021 IEEE 3rd International Conference on Frontiers Technology of Information and Computer, ICFTIC 2021, 2021, : 77 - 81
  • [27] Hierarchical spatial-temporal autocorrelation graph neural network for online wind turbine fault detection
    Zheng, Yi
    Wang, Chengmin
    Huang, Chunyi
    Li, Kangping
    Yang, Jingfei
    Xie, Ning
    Liu, Baoliang
    Zhang, Ying
    NEUROCOMPUTING, 2024, 586
  • [28] Graph learning-based spatial-temporal graph convolutional neural networks for traffic forecasting
    Hu, Na
    Zhang, Dafang
    Xie, Kun
    Liang, Wei
    Hsieh, Meng-Yen
    CONNECTION SCIENCE, 2022, 34 (01) : 429 - 448
  • [29] Automated diagnosis of schizophrenia based on spatial-temporal residual graph convolutional network
    Xu, Xinyi
    Zhu, Geng
    Li, Bin
    Lin, Ping
    Li, Xiaoou
    Wang, Zhen
    BIOMEDICAL ENGINEERING ONLINE, 2024, 23 (01)
  • [30] Spatial-Temporal Data Inference With Graph Attention Neural Networks in Sparse Mobile Crowdsensing
    Yang, Guisong
    Wen, Panpan
    Liu, Yutong
    Kong, Linghe
    Liu, Yunhuai
    IEEE TRANSACTIONS ON NETWORK SCIENCE AND ENGINEERING, 2024, 11 (05): : 4617 - 4626