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MAD-GAN: Multivariate Anomaly Detection for Time Series Data with Generative Adversarial Networks

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The prevalence of networked sensors and actuators in many real-world systems such as smart buildings, factories, power plants, and data centers generate substantial amounts of multivariate time series data for these systems. The rich sensor data can be continuously monitored for intrusion events through anomaly detection. However, conventional threshold-based anomaly detection methods are inadequate due to the dynamic complexities of these systems, while supervised machine learning methods are unable to exploit the large amounts of data due to the lack of labeled data. On the other hand, current unsupervised machine learning approaches have not fully exploited the spatial-temporal correlation and other dependencies amongst the multiple variables (sensors/actuators) in the system for detecting anomalies. In this work, we propose an unsupervised multivariate anomaly detection method based on Generative Adversarial Networks (GANs). Instead of treating each data stream independently, our proposed MAD-GAN framework considers the entire variable set concurrently to capture the latent interactions amongst the variables. We also fully exploit both the generator and discriminator produced by the GAN, using a novel anomaly score called DR-score to detect anomalies by discrimination and reconstruction. We have tested our proposed MAD-GAN using two recent datasets collected from real-world CPS: the Secure Water Treatment (SWaT) and the Water Distribution (WADI) datasets. Our experimental results showed that the proposed MAD-GAN is effective in reporting anomalies caused by various cyber-intrusions compared in these complex real-world systems.

Dan Li, Dacheng Chen, Lei Shi, Baihong Jin, Jonathan Goh, See-Kiong Ng• 2019

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionSMD
F1 Score93.18
217
Anomaly DetectionSWaT
F1 Score80.65
174
Anomaly DetectionSWaT (test)
Precision0.9897
34
Time Series Anomaly DetectionSMAP
Precision81.57
32
Anomaly DetectionSMAP
F10.8468
23
Anomaly DetectionMSL
F181.9
23
Anomaly DetectionMBA
AUC98.36
22
Anomaly DetectionUCR
AUC99.84
22
Anomaly DetectionNAB
AUC84.78
22
Anomaly DetectionWADI
AUC80.26
22
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