A Semi-Supervised Siamese Network for Complex Aircraft System Fault Detection with Limited Labeled Fault Samples

被引:2
作者
Zhu, Xinyun [1 ]
Sun, Jianzhong [1 ]
Hu, Hanchun [1 ]
Li, Chunhua [1 ]
机构
[1] Nanjing Univ Aeronaut & Astronaut, Nanjing, Peoples R China
来源
EKSPLOATACJA I NIEZAWODNOSC-MAINTENANCE AND RELIABILITY | 2023年 / 25卷 / 04期
关键词
fault detection; semi-supervised; aircraft system; flight data; time-series data; ANOMALY DETECTION;
D O I
10.17531/ein/174382
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Health monitoring and fault detection of complex aircraft systems are paramount for ensuring reliable and efficient operation. The availability of monitoring data from modern aircraft onboard sensors provides a wealth of big data for developing deep learning-based fault detection methods. However, aircraft onboard systems typically have limited labeled fault samples and large amounts of unlabeled data. To better utilize the information contained in limited labeled fault samples, a deep learning-based semi-supervised fault detection method is proposed, which leverages a small number of labeled fault samples to enhance its performance. A novel sample pairing strategy is introduced to improve algorithm performance by iteratively utilizing fault samples. A comprehensive loss function is employed to accurately reconstruct normal samples and effectively separate fault samples. The results of a case study using real data from a commercial aircraft fleet demonstrate the superiority of the proposed method over existing techniques, with improvements of approximately 16.7% in AP, 9.5% in AUC, and 19.2% in F1 score. Ablation studies confirm that performance can be further improved by incorporating additional labeled fault samples during training. Furthermore, the algorithm demonstrates good generalization ability.
引用
收藏
页数:19
相关论文
共 64 条
  • [1] Angiulli F., 2002, Principles of Data Mining and Knowledge Discovery. 6th European Conference, PKDD 2002. Proceedings (Lecture Notes in Artificial Intelligence Vol.2431), P15
  • [2] Packet-data anomaly detection in PMU-based state estimator using convolutional neural network
    Basumallik, Sagnik
    Ma, Rui
    Eftekharnejad, Sara
    [J]. INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2019, 107 : 690 - 702
  • [3] Deep learning through LSTM classification and regression for transmission line fault detection, diagnosis and location in large-scale multi-machine power systems
    Belagoune, Soufiane
    Bali, Noureddine
    Bakdi, Azzeddine
    Baadji, Bousaadia
    Atif, Karim
    [J]. MEASUREMENT, 2021, 177 (177)
  • [4] LEARNING LONG-TERM DEPENDENCIES WITH GRADIENT DESCENT IS DIFFICULT
    BENGIO, Y
    SIMARD, P
    FRASCONI, P
    [J]. IEEE TRANSACTIONS ON NEURAL NETWORKS, 1994, 5 (02): : 157 - 166
  • [5] Class-balanced siamese neural networks
    Berlemont, Samuel
    Lefebvre, Gregoire
    Duffner, Stefan
    Garcia, Christophe
    [J]. NEUROCOMPUTING, 2018, 273 : 47 - 56
  • [6] LOF: Identifying density-based local outliers
    Breunig, MM
    Kriegel, HP
    Ng, RT
    Sander, J
    [J]. SIGMOD RECORD, 2000, 29 (02) : 93 - 104
  • [7] Multi-head CNN-RNN for multi-time series anomaly detection: An industrial case study
    Canizo, Mikel
    Triguero, Isaac
    Conde, Angel
    Onieva, Enrique
    [J]. NEUROCOMPUTING, 2019, 363 : 246 - 260
  • [8] A systematic literature review of machine learning methods applied to predictive maintenance
    Carvalho, Thyago P.
    Soares, Fabrizzio A. A. M. N.
    Vita, Roberto
    Francisco, Robert da P.
    Basto, Joao P.
    Alcala, Symone G. S.
    [J]. COMPUTERS & INDUSTRIAL ENGINEERING, 2019, 137
  • [9] Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning
    Castellani, Andrea
    Schmitt, Sebastian
    Squartini, Stefano
    [J]. IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2021, 17 (07) : 4733 - 4742
  • [10] Combining multiple deep learning algorithms for prognostic and health management of aircraft
    Che, Changchang
    Wang, Huawei
    Fu, Qiang
    Ni, Xiaomei
    [J]. AEROSPACE SCIENCE AND TECHNOLOGY, 2019, 94