Effectively Detecting Operational Anomalies in Large-scale IoT Data Infrastructures by using a GAN-based Predictive Model
Creators
- 1. University of Amsterdam
- 2. EuroArgo ERIC
- 3. Chongqing University
Description
Quality of data services is crucial for operational large-scale internet-of-things
(IoT) research data infrastructure, in particular when serving large amounts of
distributed users. Eectively detecting runtime anomalies and diagnosing their
root cause helps to defend against adversarial attacks, thereby essentially boosting
system security and robustness of the IoT infrastructure services. However,
conventional anomaly detection methods are inadequate when facing the dynamic
complexities of these systems. In contrast, supervised machine learning methods
are unable to exploit large amounts of data due to the unavailability of labeled
data. This paper leverages popular GAN-based generative models and end-to-
end one-class classication to improve unsupervised anomaly detection. A novel
heterogeneous BiGAN-based anomaly detection model Heterogeneous Temporal
Anomaly-reconstruction GAN (HTA-GAN) is proposed to make better use of a
one-class classier and a novel anomaly scoring function. The Generator-Encoder-
Discriminator BiGAN structure can lead to practical anomaly score computation
and temporal feature capturing. We empirically compare the proposed approach
with several state-of-the-art anomaly detection methods on real-world datasets,
anomaly benchmarks, and synthetic datasets. The results show that HTA-GAN
outperforms its competitors and demonstrates better robustness.
Files
2022.journal.computer.revision3.pdf
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Additional details
Funding
- ARTICONF – smART socIal media eCOsytstem in a blockchaiN Federated environment 825134
- European Commission
- Blue Cloud – Blue-Cloud: Piloting innovative services for Marine Research & the Blue Economy 862409
- European Commission
- ENVRI-FAIR – ENVironmental Research Infrastructures building Fair services Accessible for society, Innovation and Research 824068
- European Commission