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Improving deep learning based anomaly detection on multivariate time series through separated anomaly scoring
Mid Sweden University, Faculty of Science, Technology and Media, Department of Electronics Design.
Mid Sweden University, Faculty of Science, Technology and Media, Department of Electronics Design.
Mid Sweden University, Faculty of Science, Technology and Media, Department of Electronics Design.
Mid Sweden University, Faculty of Science, Technology and Media, Department of Electronics Design.
2022 (English)In: IEEE Access, E-ISSN 2169-3536, Vol. 10, p. 108194-108204Article in journal (Refereed) Published
Abstract [en]

The importance of anomaly detection in multivariate time series has led to the development of several prominent deep learning solutions. As a part of the anomaly detection method, the scoring method has shown to be of significant importance when separating non-anomalous points from anomalous ones. At this time, most of the solutions utilize an aggregated score which means that relevant information created by the anomaly detection model might be lost. Therefore, this study has set out to examine to what extent anomaly detection in multivariate time series based on deep learning can be improved if all the residuals from each individual channel is considered in the anomaly score. To achieve this, an aggregated and separated scoring method has been applied with a simple denoising convulutional autoencoder (DCAE). In addition, the performance has been compared with other state-of-the-art methods. The result showed that the separated approach has the potential to generate a significantly higher performance than the aggregated one. At the same time, there were some indications suggesting that an aggregated scoring is better at generalizing when no labels to base the anomaly thresholds on, are available. Therefore, the result should serve as an encouragement to use a separated scoring approach together with a small sample of labeled anomalies to optimise the thresholds. Lastly, due to the impact of the anomaly score, the result suggests that future research within this field should consider applying the same anomaly scoring method when comparing the performance of deep learning algorithms. 

Place, publisher, year, edition, pages
2022. Vol. 10, p. 108194-108204
Keywords [en]
Anomaly detection, Anomaly scoring, Deep learning, Generative adversarial networks, Multivariate time series (MVTS), Optimization, Predictive models, Time series analysis, Training data
National Category
Electrical Engineering, Electronic Engineering, Information Engineering
Identifiers
URN: urn:nbn:se:miun:diva-46336DOI: 10.1109/ACCESS.2022.3213038ISI: 000870215300001Scopus ID: 2-s2.0-85139827298OAI: oai:DiVA.org:miun-46336DiVA, id: diva2:1706550
Available from: 2022-10-26 Created: 2022-10-26 Last updated: 2025-09-25Bibliographically approved
In thesis
1. From Concepts to Conditions: Bridging the Gap in AI-Based Maintenance Systems
Open this publication in new window or tab >>From Concepts to Conditions: Bridging the Gap in AI-Based Maintenance Systems
2025 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

The importance of preventing machine failures and reducing costly unplanned downtime has led to extensive research aiming to develop methods that predict maintenance needs. In this context, data-driven and particularly Deep Learning (DL) based methods for anomaly detection, fault diagnosis, and health prognosis have been studied extensively because of their ability to handle the complexity of the sensor data describing the health state of machines. However, many challenging factors exist before it is possible to utilize these methods in practice. These primarily include the lack of labelled failure events, the heterogeneous nature of the data, and the occurrence of multi-component fault scenarios. Currently, most studies ignore these aspects and focus on scenarios limited to a laboratory environment, which means there is a need to develop methods that can be deployed in practice. Therefore, this thesis suggests methods for these challenges and gives insight, aiming to reduce the gap between research-defined scenarios and scenarios found in industrial environments. To achieve this, different areas in the context of DL for Predictive Maintenance (PdM) are examined, including multivariate anomaly detection, fault diagnosis, and Remaining Useful Life (RUL) prediction methods.

One of the contributions is a threshold-setting procedure that optimizes anomaly detection models with the user's support and a novel separate scoring method, and outperforms state-of-the-art alternatives for deployments in industrial applications. A published dataset of bearing faults from an industrial environment is also described, which is beneficial when developing and evaluating methods. In addition, a novel DL method for fault diagnosis of bearings using vibration data constructed with knowledge enrichment, time-based contextual enrichment, and a transfer learning technique is suggested. This method can be deployed on any machine without historical faults and outperforms state-of-the-art methods. Lastly, the most significant contribution is a prognostic hybrid framework for multi-component fault scenarios in rotating machines using vibration data that utilizes advancements in methods for anomaly detection, fault diagnosis, and RUL prediction of machines.

In summary, this thesis suggests novel methods for PdM adapted for industrial applications that can be used on a general basis and provides insights that lower the gap between research-defined scenarios and scenarios found in industrial environments.

 

Place, publisher, year, edition, pages
Sundsvall: Mid Sweden University, 2025. p. 56
Series
Mid Sweden University doctoral thesis, ISSN 1652-893X ; 431
Keywords
predictive maintenance, fault diagnosis, prognostics, remaining useful life, deep learning, machine learning
National Category
Artificial Intelligence Computer Sciences
Identifiers
urn:nbn:se:miun:diva-54539 (URN)978-91-90017-26-5 (ISBN)
Public defence
2025-06-16, C312, Holmgatan 10, Sundsvall, 13:00 (English)
Opponent
Supervisors
Funder
Knowledge Foundation
Note

Vid tidpunkten för disputationen var följande delarbete opublicerat: delarbete 6 accepterat.

At the time of the doctoral defence the following paper was unpublished: paper 6 accepted.

Available from: 2025-06-02 Created: 2025-05-29 Last updated: 2025-09-25Bibliographically approved

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Lundström, AdamO'Nils, Mattias

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