Self-ensemble satellite anomaly detection method for center-constrained contrastive learning

被引:0
|
作者
Guo, Guohang [1 ,2 ]
Li, Hu [1 ]
Liu, Yurong [1 ]
Hu, Tai [1 ]
机构
[1] National Space Science Center, Chinese Academy of Sciences, Beijing,100190, China
[2] University of Chinese Academy of Sciences, Beijing,100049, China
关键词
Anomaly detection - Benchmarking - Telemetering - Telemetering systems;
D O I
10.11887/j.cn.202406004
中图分类号
学科分类号
摘要
To deal with the problem of the existing telemetry anomaly detection algorilhms, such as the poor discrimination capability of the feature, and loss of anomaly decision-making Information, a self-ensemble anomaly detection method based on center-constrained contrastive learning was proposed. The method mapped the normal samples to a compact feature dislribulion by combining contrastive loss and center loss, and a mulli-view and mulli-level ensembled feature decision method was used to obtain the anomaly detection of the sample. The method improves the adaptability of the model to the complex working conditions of the satellite. The real telemetry parameter data of scientific satellite and benchmark data sei are used for verilieation. The proposed method is robust to noise, and achieves 21. 8% improvement of F score lhan thal of the State of the art method. The resulls of the experimenl demonstrate the feasibility of the method, which can provide effective support for satellite Operation. © 2024 National University of Defense Technology. All rights reserved.
引用
收藏
页码:33 / 42
相关论文
共 50 条
  • [21] Anomaly Detection on Attributed Networks via Contrastive Self-Supervised Learning
    Liu, Yixin
    Li, Zhao
    Pan, Shirui
    Gong, Chen
    Zhou, Chuan
    Karypis, George
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2022, 33 (06) : 2378 - 2392
  • [22] Spatial Contrastive Learning for Anomaly Detection and Localization
    Kim, Daehwan
    Jeong, Daun
    Kim, Hyungmin
    Chong, Kibong
    Kim, Seungryong
    Cho, Hansang
    IEEE ACCESS, 2022, 10 : 17366 - 17376
  • [23] SELF-LLP: Self-supervised learning from label proportions with self-ensemble
    Liu, Jiabin
    Qi, Zhiquan
    Wang, Bo
    Tian, YingJie
    Shi, Yong
    PATTERN RECOGNITION, 2022, 129
  • [24] Online Multivariate Time Series Anomaly Detection Method Based on Contrastive Learning
    Dong, Xiyao
    Liu, Hui
    Du, Junzhao
    Wang, Zhengkai
    Wang, Cheng
    ADVANCED INTELLIGENT COMPUTING TECHNOLOGY AND APPLICATIONS, PT XIII, ICIC 2024, 2024, 14874 : 468 - 479
  • [25] CARLA: Self-supervised contrastive representation learning for time series anomaly detection
    Darban, Zahra Zamanzadeh
    Webb, Geoffrey I.
    Pan, Shirui
    Aggarwal, Charu C.
    Salehi, Mahsa
    PATTERN RECOGNITION, 2025, 157
  • [26] Diagnosing glaucoma on imbalanced data with self-ensemble dual-curriculum learning
    Zhao, Rongchang
    Chen, Xuanlin
    Chen, Zailiang
    Li, Shuo
    MEDICAL IMAGE ANALYSIS, 2022, 75
  • [27] Deep graph level anomaly detection with contrastive learning
    Luo, Xuexiong
    Wu, Jia
    Yang, Jian
    Xue, Shan
    Peng, Hao
    Zhou, Chuan
    Chen, Hongyang
    Li, Zhao
    Sheng, Quan Z.
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [28] Smart contract anomaly detection: The Contrastive Learning Paradigm
    Fadi, Oumaima
    Bahaj, Adil
    Zkik, Karim
    El Ghazi, Abdellatif
    Ghogho, Mounir
    Boulmalf, Mohammed
    COMPUTER NETWORKS, 2025, 260
  • [29] EAGLE: Contrastive Learning for Efficient Graph Anomaly Detection
    Ren, Jing
    Hou, Mingliang
    Liu, Zhixuan
    Bai, Xiaomei
    IEEE INTELLIGENT SYSTEMS, 2023, 38 (02) : 55 - 63
  • [30] Deep graph level anomaly detection with contrastive learning
    Xuexiong Luo
    Jia Wu
    Jian Yang
    Shan Xue
    Hao Peng
    Chuan Zhou
    Hongyang Chen
    Zhao Li
    Quan Z. Sheng
    Scientific Reports, 12