Abstract
Anomaly detection tasks benefit from self-supervised learning techniques, where models predict or reconstruct parts of augmented input data without relying on explicit human-provided labels. However, many existing self-supervised learning methods employ data augmentation techniques without sufficient justification for their effectiveness. In this study, we present a simple but novel data augmentation method under the context of anomaly detection, obviating the requirement for additional unjustified augmentation techniques. In this method, we leverage data from other operating conditions as augmentation for a specific operating condition, aiming to cluster normal samples across diverse operating conditions. Our approach incorporates the BYOL method as the self-supervised learning framework, coupled with our proposed data augmentation technique for pretraining. Subsequently, we employ the one-class support vector machine (OCSVM) in an anomaly detection experiment involving a Multi-stage Centrifugal Pump (MCP). The evaluation of our method yields promising results, achieving an accuracy of over 83% in two tested operating conditions. This highlights the effectiveness of our approach in accurately detecting anomalies in different operating conditions.
Original language | English |
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Title of host publication | ECTM 2023 - 2023 IEEE 7th Ecuador Technical Chapters Meeting |
Editors | David Rivas Lalaleo, Manuel Ignacio Ayala Chauvin |
Publisher | Institute of Electrical and Electronics Engineers Inc. |
ISBN (Electronic) | 9798350338232 |
DOIs | |
State | Published - 2023 |
Event | 7th IEEE Ecuador Technical Chapters Meeting, ECTM 2023 - Ambato, Ecuador Duration: 10 Oct 2023 → 13 Oct 2023 |
Publication series
Name | ECTM 2023 - 2023 IEEE 7th Ecuador Technical Chapters Meeting |
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Conference
Conference | 7th IEEE Ecuador Technical Chapters Meeting, ECTM 2023 |
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Country/Territory | Ecuador |
City | Ambato |
Period | 10/10/23 → 13/10/23 |
Bibliographical note
Publisher Copyright:© 2023 IEEE.
Keywords
- anomaly detection
- data augmentation
- self-supervised learning