Unsupervised Transfer Learning for Anomaly Detection: Application to
Complementary Operating Condition Transfer
- URL: http://arxiv.org/abs/2008.07815v2
- Date: Tue, 24 Nov 2020 10:32:27 GMT
- Title: Unsupervised Transfer Learning for Anomaly Detection: Application to
Complementary Operating Condition Transfer
- Authors: Gabriel Michau and Olga Fink
- Abstract summary: Anomaly Detectors are trained on healthy operating condition data and raise an alarm when the measured samples deviate from the training data distribution.
A solution to this problem is to perform unsupervised transfer learning (UTL), to transfer complementary data between different units.
Our proposed framework is designed to transfer complementary operating conditions between different units in a completely unsupervised way to train more robust anomaly detectors.
- Score: 1.5990720051907859
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Anomaly Detectors are trained on healthy operating condition data and raise
an alarm when the measured samples deviate from the training data distribution.
This means that the samples used to train the model should be sufficient in
quantity and representative of the healthy operating conditions. But for
industrial systems subject to changing operating conditions, acquiring such
comprehensive sets of samples requires a long collection period and delay the
point at which the anomaly detector can be trained and put in operation.
A solution to this problem is to perform unsupervised transfer learning
(UTL), to transfer complementary data between different units. In the
literature however, UTL aims at finding common structure between the datasets,
to perform clustering or dimensionality reduction. Yet, the task of
transferring and combining complementary training data has not been studied.
Our proposed framework is designed to transfer complementary operating
conditions between different units in a completely unsupervised way to train
more robust anomaly detectors. It differs, thereby, from other unsupervised
transfer learning works as it focuses on a one-class classification problem.
The proposed methodology enables to detect anomalies in operating conditions
only experienced by other units. The proposed end-to-end framework uses
adversarial deep learning to ensure alignment of the different units'
distributions. The framework introduces a new loss, inspired by a
dimensionality reduction tool, to enforce the conservation of the inherent
variability of each dataset, and uses state-of-the art once-class approach to
detect anomalies. We demonstrate the benefit of the proposed framework using
three open source datasets.
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