Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning

Castellani A, Schmitt S, Squartini S (2021)
IEEE Transactions on Industrial Informatics 17(7): 4733-4742.

Zeitschriftenaufsatz | Veröffentlicht | Englisch
 
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Autor*in
Castellani, AndreaUniBi ; Schmitt, Sebastian; Squartini, Stefano
Abstract / Bemerkung
The continuously growing amount of monitored data in the Industry 4.0 context requires strong and reliable anomaly detection techniques. The advancement of Digital Twin technologies allows for realistic simulations of complex machinery; therefore, it is ideally suited to generate synthetic datasets for the use in anomaly detection approaches when compared to actual measurement data. In this article, we present novel weakly supervised approaches to anomaly detection for industrial settings. The approaches make use of a Digital Twin to generate a training dataset, which simulates the normal operation of the machinery, along with a small set of labeled anomalous measurement from the real machinery. In particular, we introduce a clustering-based approach, called cluster centers (CC), and a neural architecture based on the Siamese Autoencoders (SAE), which are tailored for weakly supervised settings with very few labeled data samples. The performance of the proposed methods is compared against various state-of-the-art anomaly detection algorithms on an application to a real-world dataset from a facility monitoring system, by using a multitude of performance measures. Also, the influence of hyperparameters related to feature extraction and network architecture is investigated. We find that the proposed SAE-based solutions outperform state-of-the-art anomaly detection approaches very robustly for many different hyperparameter settings on all performance measures.
Erscheinungsjahr
2021
Zeitschriftentitel
IEEE Transactions on Industrial Informatics
Band
17
Ausgabe
7
Seite(n)
4733-4742
ISSN
1551-3203
eISSN
1941-0050
Page URI
https://pub.uni-bielefeld.de/record/2969236

Zitieren

Castellani A, Schmitt S, Squartini S. Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning. IEEE Transactions on Industrial Informatics. 2021;17(7):4733-4742.
Castellani, A., Schmitt, S., & Squartini, S. (2021). Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning. IEEE Transactions on Industrial Informatics, 17(7), 4733-4742. https://doi.org/10.1109/TII.2020.3019788
Castellani, Andrea, Schmitt, Sebastian, and Squartini, Stefano. 2021. “Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning”. IEEE Transactions on Industrial Informatics 17 (7): 4733-4742.
Castellani, A., Schmitt, S., and Squartini, S. (2021). Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning. IEEE Transactions on Industrial Informatics 17, 4733-4742.
Castellani, A., Schmitt, S., & Squartini, S., 2021. Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning. IEEE Transactions on Industrial Informatics, 17(7), p 4733-4742.
A. Castellani, S. Schmitt, and S. Squartini, “Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning”, IEEE Transactions on Industrial Informatics, vol. 17, 2021, pp. 4733-4742.
Castellani, A., Schmitt, S., Squartini, S.: Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning. IEEE Transactions on Industrial Informatics. 17, 4733-4742 (2021).
Castellani, Andrea, Schmitt, Sebastian, and Squartini, Stefano. “Real-World Anomaly Detection by Using Digital Twin Systems and Weakly Supervised Learning”. IEEE Transactions on Industrial Informatics 17.7 (2021): 4733-4742.
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2023-03-01T08:56:51Z
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