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TRANSFORMER FRAMEWORK FOR THE FAULT DETECTION OF A RECIPROCATING COMPRESSOR

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Reciprocating compressors are crucial in the industrial sector, playing a key role in energy, manufacturing, and chemical engineering production processes. Effective health monitoring technologies can prevent failure risks, reduce unplanned downtime, and ensure production continuity. Although machine fault diagnosis technologies have developed rapidly, they still need improving with data collection, insufficient feature extraction, and weak generalization ability in practical applications. Traditional fault detection methods make it challenging to train models, especially when only healthy data and no faulty data are available. This study compares three unsupervised fault detection methods: autoencoders (AE), contrast abnormality detection (C-AD), and contrast one-class abnormality detection (COCA), focusing on which model is more compatible with the Transformer framework. The experimental results show that AE combined with the Transformer framework is more suitable for fault detection.

Original languageEnglish
Title of host publicationInternational Conference on Technological Innovation and AI Research, ICTIAIR 2025
PublisherInstitution of Engineering and Technology
Pages58-63
Number of pages6
Volume2025
Edition4
ISBN (Electronic)9781837243143, 9781837243150, 9781837243235
ISBN (Print)9781837243143
DOIs
StatePublished - 2025
Event2025 International Conference on Technological Innovation and AI Research, ICTIAIR 2025 - Virtual, Online, Ecuador
Duration: 19 Mar 202521 Mar 2025

Publication series

NameIET Conference Proceedings
Volume2025

Conference

Conference2025 International Conference on Technological Innovation and AI Research, ICTIAIR 2025
Country/TerritoryEcuador
CityVirtual, Online
Period19/03/2521/03/25

Bibliographical note

Publisher Copyright:
© The Institution of Engineering & Technology 2025.

Keywords

  • FAULT DIAGNOSIS
  • HEALTH MONITORING TECHNOLOGIES
  • RECIPROCATING COMPRESSORS
  • TRANSFORMER FRAMEWORK
  • UNSUPERVISED LEARNING

CACES Knowledge Areas

  • 827A Industrial maintenance

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