Fine-Grained Multivariate Time Series Anomaly Detection in IoT

Shiming He, Meng Guo, Bo Yang, Osama Alfarraj, Amr Tolba, Pradip Kumar Sharma, Xi'ai Yan*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

1 Citation (Scopus)

Abstract

Sensors produce a large amount of multivariate time series data to record the states of Internet of Things (IoT) systems. Multivariate time series timestamp anomaly detection (TSAD) can identify timestamps of attacks and malfunctions. However, it is necessary to determine which sensor or indicator is abnormal to facilitate a more detailed diagnosis, a process referred to as fine-grained anomaly detection (FGAD). Although further FGAD can be extended based on TSAD methods, existing works do not provide a quantitative evaluation, and the performance is unknown. Therefore, to tackle the FGAD problem, this paper first verifies that the TSAD methods achieve low performance when applied to the FGAD task directly because of the excessive fusion of features and the ignoring of the relationship’s dynamic changes between indicators. Accordingly, this paper proposes a multivariate time series fine-grained anomaly detection (MFGAD) framework. To avoid excessive fusion of features, MFGAD constructs two sub-models to independently identify the abnormal timestamp and abnormal indicator instead of a single model and then combines the two kinds of abnormal results to detect the fine-grained anomaly. Based on this framework, an algorithm based on Graph Attention Neural Network (GAT) and Attention Convolutional Long-Short Term Memory (A-ConvLSTM) is proposed, in which GAT learns temporal features of multiple indicators to detect abnormal timestamps and A-ConvLSTM captures the dynamic relationship between indicators to identify abnormal indicators. Extensive simulations on a real-world dataset demonstrate that the proposed algorithm can achieve a higher F1 score and hit rate than the extension of existing TSAD methods with the benefit of two independent sub-models for timestamp and indicator detection.

Original languageEnglish
Pages (from-to)5027-5047
Number of pages21
JournalComputers, Materials and Continua
Volume75
Issue number3
DOIs
Publication statusPublished - 29 Apr 2023

Bibliographical note

Funding Information:
Funding Statement: This work was supported in part by the National Natural Science Foundation of China under Grant 62272062, the Researchers Supporting Project number. (RSP2023R102) King Saud University, Riyadh, Saudi Arabia, the Open Research Fund of the Hunan Provincial Key Laboratory of Network Investigational Technology under Grant 2018WLZC003, the National Science Foundation of Hunan Province under Grant 2020JJ2029, the Hunan Provincial Key Research and Development Program under Grant 2022GK2019, the Science Fund for Creative Research Groups of Hunan Province under Grant 2020JJ1006, the Scientific Research Fund of Hunan Provincial Transportation Department under Grant 202143, and the Open Fund of Key Laboratory of Safety Control of Bridge Engineering, Ministry of Education (Changsha University of Science Technology) under Grant 21KB07.

Publisher Copyright:
© 2023 Tech Science Press. All rights reserved.

Keywords

  • fine-grained anomaly detection
  • graph attention neural network
  • Multivariate time series

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