Real-World Anomaly Detection by using Digital Twin Systems and
Weakly-Supervised Learning
- URL: http://arxiv.org/abs/2011.06296v1
- Date: Thu, 12 Nov 2020 10:15:56 GMT
- Title: Real-World Anomaly Detection by using Digital Twin Systems and
Weakly-Supervised Learning
- Authors: Andrea Castellani, Sebastian Schmitt, Stefano Squartini
- Abstract summary: 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.
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.
- Score: 3.0100975935933567
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: 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 paper, 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 hyper-parameters 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 hyper-parameter settings on all
performance measures.
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