TY - JOUR
T1 - SGFM
T2 - Conditional Flow Matching for Time Series Anomaly Detection With State Space Models
AU - He, Yongping
AU - Yan, Tijin
AU - Zhan, Yufeng
AU - Feng, Zihang
AU - Xia, Yuanqing
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2024
Y1 - 2024
N2 - The industrial Internet of Things (IoT) landscape is enriched with a diverse array of sensors, which are configured for the real-time monitoring and data collection to improve the production efficiency and optimizing industrial processes. The continual monitoring of IoT systems allows for promptly detection of anomalies in these time series data, thereby minimizing economic losses and ensuring the safe operation of the overall system. Existing deep learning-based methods for time series anomaly detection often rely on the generative models to learn the normal behavior of the data. However, these methods face challenges related to the speed and quality of data generation, ultimately impacting the overall detection performance of the models. In response to these challenges, this article proposes a new unsupervised anomaly detection method named SGFM. It combines state space models and graph neural networks to extract complex spatiotemporal dependencies in time series, which then serve as guidance to facilitate the learning process of a flow matching model, aiming for more refined predictions and consequently enhancing the effectiveness of anomaly detection. The effectiveness of SGFM is validated through the experiments on the three classic time series data sets. The results exhibits a notable improvement of up to 4% compared to the existing methods.
AB - The industrial Internet of Things (IoT) landscape is enriched with a diverse array of sensors, which are configured for the real-time monitoring and data collection to improve the production efficiency and optimizing industrial processes. The continual monitoring of IoT systems allows for promptly detection of anomalies in these time series data, thereby minimizing economic losses and ensuring the safe operation of the overall system. Existing deep learning-based methods for time series anomaly detection often rely on the generative models to learn the normal behavior of the data. However, these methods face challenges related to the speed and quality of data generation, ultimately impacting the overall detection performance of the models. In response to these challenges, this article proposes a new unsupervised anomaly detection method named SGFM. It combines state space models and graph neural networks to extract complex spatiotemporal dependencies in time series, which then serve as guidance to facilitate the learning process of a flow matching model, aiming for more refined predictions and consequently enhancing the effectiveness of anomaly detection. The effectiveness of SGFM is validated through the experiments on the three classic time series data sets. The results exhibits a notable improvement of up to 4% compared to the existing methods.
KW - Generative models
KW - graph neural networks (GNNs)
KW - state space models (SSMs)
KW - time series anomaly detection
UR - http://www.scopus.com/inward/record.url?scp=85200815098&partnerID=8YFLogxK
U2 - 10.1109/JIOT.2024.3439672
DO - 10.1109/JIOT.2024.3439672
M3 - Article
AN - SCOPUS:85200815098
SN - 2327-4662
VL - 11
SP - 36979
EP - 36990
JO - IEEE Internet of Things Journal
JF - IEEE Internet of Things Journal
IS - 22
ER -