Patch-Wise-Based Self-Supervised Learning for Anomaly Detection on Multivariate Time Series Data

被引:0
作者
Oh, Seungmin [1 ]
Anh, Le Hoang [1 ]
Vu, Dang Thanh [1 ]
Yu, Gwang Hyun [1 ]
Hahn, Minsoo [2 ]
Kim, Jinsul [1 ]
机构
[1] Chonnam Natl Univ, Dept Intelligent Elect & Comp Engn, 77,Yongbong Ro, Gwangju 61186, South Korea
[2] Astana IT Univ, Dept Computat & Data Sci, Astana 010000, Kazakhstan
关键词
time series anomaly detection; multivariate time series; patch-wise learning; pre-trained model; self-supervised learning; channel dependencies;
D O I
10.3390/math12243969
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Multivariate time series anomaly detection is a crucial technology to prevent unexpected errors from causing critical impacts. Effective anomaly detection in such data requires accurately capturing temporal patterns and ensuring the availability of adequate data. This study proposes a patch-wise framework for anomaly detection. The proposed approach comprises four key components: (i) maintaining continuous features through patching, (ii) incorporating various temporal information by learning channel dependencies and adding relative positional bias, (iii) achieving feature representation learning through self-supervised learning, and (iv) supervised learning based on anomaly augmentation for downstream tasks. The proposed method demonstrates strong anomaly detection performance by leveraging patching to maintain temporal continuity while effectively learning data representations and handling downstream tasks. Additionally, it mitigates the issue of insufficient anomaly data by supporting the learning of diverse types of anomalies. The experimental results show that our model achieved a 23% to 205% improvement in the F1 score compared to existing methods on datasets such as MSL, which has a relatively small amount of training data. Furthermore, the model also delivered a competitive performance on the SMAP dataset. By systematically learning both local and global dependencies, the proposed method strikes an effective balance between feature representation and anomaly detection accuracy, making it a valuable tool for real-world multivariate time series applications.
引用
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页数:17
相关论文
共 57 条
[1]  
An J., 2015, Technical Report
[2]   Continual Deep Learning for Time Series Modeling [J].
Ao, Sio-Iong ;
Fayek, Haytham .
SENSORS, 2023, 23 (16)
[3]   USAD : UnSupervised Anomaly Detection on Multivariate Time Series [J].
Audibert, Julien ;
Michiardi, Pietro ;
Guyard, Frederic ;
Marti, Sebastien ;
Zuluaga, Maria A. .
KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, :3395-3404
[4]   Water Flow Modeling and Forecast in a Water Branch of Mexico City through ARIMA and Transfer Function Models for Anomaly Detection [J].
Barrientos-Torres, David ;
Martinez-Rios, Erick Axel ;
Navarro-Tuch, Sergio A. ;
Pablos-Hach, Jose Luis ;
Bustamante-Bello, Rogelio .
WATER, 2023, 15 (15)
[5]  
Braei M, 2020, Arxiv, DOI arXiv:2004.00433
[6]   Bifurcation and Controller Design of 5D BAM Neural Networks With Time Delay [J].
Cui, Qingyi ;
Xu, Changjin ;
Xu, Yiya ;
Ou, Wei ;
Pang, Yicheng ;
Liu, Zixin ;
Shen, Jianwei ;
Baber, Muhammad Zafarullah ;
Maharajan, Chinnamuniyandi ;
Ghosh, Uttam .
INTERNATIONAL JOURNAL OF NUMERICAL MODELLING-ELECTRONIC NETWORKS DEVICES AND FIELDS, 2024, 37 (06)
[7]   A Multimodal Anomaly Detector for Robot-Assisted Feeding Using an LSTM-Based Variational Autoencoder [J].
Park, Daehyung ;
Hoshi, Yuuna ;
Kemp, Charles C. .
IEEE Robotics and Automation Letters, 2018, 3 (03) :1544-1551
[8]  
Das A, 2024, Arxiv, DOI [arXiv:2310.10688, DOI 10.48550/ARXIV.2310.10688]
[9]  
Deng AL, 2021, AAAI CONF ARTIF INTE, V35, P4027
[10]   Big data, artificial intelligence and machine learning: A transformative symbiosis in favour of financial technology [J].
Duc Khuong Nguyen ;
Sermpinis, Georgios ;
Stasinakis, Charalampos .
EUROPEAN FINANCIAL MANAGEMENT, 2023, 29 (02) :517-548