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Anomaly Detection with Unknown Anomalies: Application to Maritime Machinery

We present a framework for deriving anomaly detection algorithms on timeseries data when the time and expression of anomalous behaviour is unknown. The framework is suited for problems in which individual machine learning paradigms cannot be directly implemented: supervised learning is not applicabl...

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Main Authors: Michalowska, Katarzyna, Riemer-Sørensen, Signe, Sterud, Camilla, Hjellset, Ole Magnus
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creator Michalowska, Katarzyna
Riemer-Sørensen, Signe
Sterud, Camilla
Hjellset, Ole Magnus
description We present a framework for deriving anomaly detection algorithms on timeseries data when the time and expression of anomalous behaviour is unknown. The framework is suited for problems in which individual machine learning paradigms cannot be directly implemented: supervised learning is not applicable due to the lack of labelled data, unsupervised learning is not effective since the normal operations are insufficiently defined and take complex and diverse forms, and deep learning risks confusing problematic behaviours for expected ones due to the possible repetitiveness of similar anomalies. The proposed approach is comprised of two phases: unsupervised discovery of anomalies, and semi-supervised construction and tuning of the anomaly detection algorithm. By leveraging data exploration methods and expert knowledge, the resulting algorithms are interpretable and detect a wide range of anomalous behaviours. The approach is applied to the early detection of wear and tear of maritime propulsion and manoeuvring machinery. We show that the final algorithm is able to detect different types of anomalies, including an actual internal leakage in a thruster which is otherwise overlooked by the present rule-based alarm system.
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source NORA - Norwegian Open Research Archives
subjects Anomaly detection
Condition-based monitoring
Diagnosis
Fault detection
Grey-box modelling
Machine learning
Predictive maintenance
title Anomaly Detection with Unknown Anomalies: Application to Maritime Machinery
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