Fuzzy State-Driven Cross-Time Spatial Dependence Learning for Multivariate Time-Series Anomaly Detection

被引:3
|
作者
Zhu, Kun [1 ]
Song, Pengyu [1 ]
Zhao, Chunhui [1 ]
机构
[1] Zhejiang Univ, Coll Control Sci & Engn, Hangzhou 310027, Peoples R China
基金
中国国家自然科学基金;
关键词
Anomaly detection; cross-time spatial dependence; fuzzy state; multivariate time series; temporal state; NEURAL-NETWORK;
D O I
10.1109/TNNLS.2024.3371109
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Cross-time spatial dependence (i.e., the interaction between different variables at different time points) is indispensable for detecting anomalies in multivariate time series, as certain anomalies may have time delays in their propagation from one variable to another. However, accurately capturing cross-time spatial dependence remains a challenge. Specifically, real-world time series usually exhibits complex and incomprehensible evolutions that may be compounded by multiple temporal states (i.e., temporal patterns, such as rising, fluctuating, and peak). These temporal states mix and overlap with each other and exhibit dynamic and heterogeneous evolution laws in different time series, making the cross-time spatial dependence extremely intricate and mutable. Therefore, a cross-time spatial graph network with fuzzy embedding is proposed to disentangle latent and mixing temporal states and exploit it to meticulously learn cross-time spatial dependence. First, considering that temporal states are diversiform and their mixing modes are unknown, we introduce a fuzzy state set to uniformly characterize potential temporal states and adaptively generate corresponding membership degrees to depict how these states mix. Further, we propose a cross-time spatial graph, quantifying similarities among fuzzy states and sensing their dynamic evolutions, to flexibly learn mutable cross-time spatial dependence. Finally, we design state diversity and temporal proximity constraints to ensure the differences among fuzzy states and the evolution continuity of fuzzy states. Experiments on real-world datasets show that the proposed model outperforms the state-of-the-art models.
引用
收藏
页码:1 / 13
页数:13
相关论文
共 50 条
  • [21] Anomaly detection using spatial and temporal information in multivariate time series
    Tian, Zhiwen
    Zhuo, Ming
    Liu, Leyuan
    Chen, Junyi
    Zhou, Shijie
    SCIENTIFIC REPORTS, 2023, 13 (01)
  • [22] Anomaly detection using spatial and temporal information in multivariate time series
    Zhiwen Tian
    Ming Zhuo
    Leyuan Liu
    Junyi Chen
    Shijie Zhou
    Scientific Reports, 13
  • [23] Enhancing multivariate time-series anomaly detection with positional encoding mechanisms in transformers
    Alioghli, Abdul Amir
    Okay, Feyza Yildirim
    JOURNAL OF SUPERCOMPUTING, 2025, 81 (01):
  • [24] Multivariate Anomaly Detection in Mixed Telemetry time-series Using A Sparse Decomposition
    Pilastre, Barbara
    Tourneret, Jean-Yves
    D'Escrivan, Stephane
    Boussouf, Loic
    2019 IEEE 8TH INTERNATIONAL WORKSHOP ON COMPUTATIONAL ADVANCES IN MULTI-SENSOR ADAPTIVE PROCESSING (CAMSAP 2019), 2019, : 430 - 434
  • [25] Graph-Attention Diffusion for Enhanced Multivariate Time-Series Anomaly Detection
    Lanko, Vadim
    Makarov, Ilya
    IEEE OPEN JOURNAL OF THE INDUSTRIAL ELECTRONICS SOCIETY, 2024, 5 : 1353 - 1364
  • [26] Multivariate Time Series Anomaly Detection with Fourier Time Series Transformer
    Ye, Yufeng
    He, Qichao
    Zhang, Peng
    Xiao, Jie
    Li, Zhao
    2023 IEEE 12TH INTERNATIONAL CONFERENCE ON CLOUD NETWORKING, CLOUDNET, 2023, : 381 - 388
  • [27] Anomaly Detection for Multivariate Time Series Based on Contrastive Learning and Autoformer
    Shang, Xuwen
    Zhang, Jue
    Jiang, Xingguo
    Luo, Hong
    PROCEEDINGS OF THE 2024 27 TH INTERNATIONAL CONFERENCE ON COMPUTER SUPPORTED COOPERATIVE WORK IN DESIGN, CSCWD 2024, 2024, : 2614 - 2619
  • [28] Generative Anomaly Detection in Multivariate Time Series
    Hoh, M.
    Schöttl, A.
    Schaub, H.
    Leuze, N.
    Automation, Robotics and Communications for Industry 4.0/5.0, 2023, 2023 : 171 - 174
  • [29] Real-Time Deep Anomaly Detection Framework for Multivariate Time-Series Data in Industrial IoT
    Nizam, Hussain
    Zafar, Samra
    Lv, Zefeng
    Wang, Fan
    Hu, Xiaopeng
    IEEE SENSORS JOURNAL, 2022, 22 (23) : 22836 - 22849
  • [30] Spacecraft Time-Series Online Anomaly Detection Using Deep Learning
    Baireddy, Sriram
    Desai, Sundip R.
    Foster, Richard H.
    Chan, Moses W.
    Comer, Mary L.
    Delp, Edward J.
    2023 IEEE AEROSPACE CONFERENCE, 2023,