An Unsupervised Deep Learning Framework for Anomaly Detection

被引:0
|
作者
Kuo, Che-Wei [1 ]
Ying, Josh Jia-Ching [1 ]
机构
[1] Natl Chung Hsing Univ, Dept Management Informat Syst, Taichung, Taiwan
来源
INTELLIGENT INFORMATION AND DATABASE SYSTEMS, ACIIDS 2023, PT I | 2023年 / 13995卷
关键词
Deep learning; Anomaly detection; Temporal convolution network; TIME;
D O I
10.1007/978-981-99-5834-4_23
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In recent years, with the evolution of technology and hardware, people can per-form anomaly detection on machines by collecting immediate time series data, thereby realizing the vision of an unmanned chemical factory. However, the data is often collected from multiple sensors, and multivariate time series anomaly detection is a difficult and complex problem because of the different scales and the unclear interaction of each feature. In addition, there usually exist noises in the data, and those make it difficult to predict the trend of the data. Moreover, practically, it's hard to collect abnormal data, thus the imbalance is an important issue. Recently, with the rapid development of data science, unsupervised methods based on deep learning manner have gradually dominated the field of multivariate time series anomaly detection. In this paper, we propose a 3D-causal Temporal Convolutional Network based framework, namely TCN3DPredictor, to detect anomaly signals from sensors data. Our proposed TCN3DPredictor modifies multi-scale convolutional recurrent encoder-decoder by 3D-causal Temporal Convolutional Network which can learn the interaction and temporal correlation between features and even predict the next data. Based on the results of 3D-causal Temporal Convolutional Network, a new breed of statistical method is proposed in our proposed TCN3DPredictor to measure the anomaly score precisely. Through a series of experiments using dataset crawled from a computer numerical control (CNC) metal cutting machine tool in a precision machinery factory, we have validated the proposed TCN3DPredictor and shown that it has excellent effectiveness compared with state-of-the-art anomaly prediction methods under various conditions.
引用
收藏
页码:284 / 295
页数:12
相关论文
共 50 条
  • [31] Spectrum Anomaly Detection for Optical Network Monitoring Using Deep Unsupervised Learning
    Natalino, Carlos
    Udalcovs, Aleksejs
    Wosinska, Lena
    Ozolins, Oskars
    Furdek, Marija
    IEEE COMMUNICATIONS LETTERS, 2021, 25 (05) : 1583 - 1586
  • [32] Unsupervised deep learning framework for ultrasonic-based distributed damage detection in concrete: integration of a deep auto-encoder and Isolation Forest for anomaly detection
    Toufigh, Vahab
    Ranjbar, Iman
    STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL, 2024, 23 (03): : 1313 - 1333
  • [33] Manifold learning techniques for unsupervised anomaly detection
    Olson, C. C.
    Judd, K. P.
    Nichols, J. M.
    EXPERT SYSTEMS WITH APPLICATIONS, 2018, 91 : 374 - 385
  • [34] Anomaly Detection through Unsupervised Federated Learning
    Nardi, Mirko
    Valerio, Lorenzo
    Passarella, Andrea
    2022 18TH INTERNATIONAL CONFERENCE ON MOBILITY, SENSING AND NETWORKING, MSN, 2022, : 495 - 501
  • [35] A COPULA-DRIVEN UNSUPERVISED LEARNING FRAMEWORK FOR ANOMALY DETECTION WITH MULTIVARIATE HETEROGENEOUS DATA
    Damodaran, Swaroop
    Padmanabhan, Ram
    Maahin, R.
    Gurugopinath, Sanjeev
    2021 IEEE 31ST INTERNATIONAL WORKSHOP ON MACHINE LEARNING FOR SIGNAL PROCESSING (MLSP), 2021,
  • [36] Energy Anomaly Detection with Forecasting and Deep Learning
    Hollingsworth, Keith
    Rouse, Kathryn
    Cho, Jin
    Harris, Austin
    Sartipi, Mina
    Sozer, Sevin
    Enevoldson, Bryce
    2018 IEEE INTERNATIONAL CONFERENCE ON BIG DATA (BIG DATA), 2018, : 4921 - 4925
  • [37] Robust Deep Learning Methods for Anomaly Detection
    Chalapathy, Raghavendra
    Khoa, Nguyen Lu Dang
    Chawla, Sanjay
    KDD '20: PROCEEDINGS OF THE 26TH ACM SIGKDD INTERNATIONAL CONFERENCE ON KNOWLEDGE DISCOVERY & DATA MINING, 2020, : 3507 - 3508
  • [38] Coupling of unsupervised and supervised deep learning-based approaches for surface anomaly detection
    Racki, Domen
    Tomazevic, Dejan
    Skocaj, Danijel
    JOURNAL OF ELECTRONIC IMAGING, 2024, 33 (03)
  • [39] Visual Anomaly Detection by Distributed Deep Learning
    Hu, Ruiguang
    Sun, Peng
    Ge, Yifan
    AOPC 2020: OPTICAL SENSING AND IMAGING TECHNOLOGY, 2020, 11567
  • [40] Unsupervised Deep Anomaly Detection for Industrial Multivariate Time Series Data
    Liu, Wenqiang
    Yan, Li
    Ma, Ningning
    Wang, Gaozhou
    Ma, Xiaolong
    Liu, Peishun
    Tang, Ruichun
    APPLIED SCIENCES-BASEL, 2024, 14 (02):