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Machine learning and deep learning based methods toward industry 4.0 predictive maintenance in induction motors: State of the art survey


 
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1. Title Title of document Machine learning and deep learning based methods toward industry 4.0 predictive maintenance in induction motors: State of the art survey
 
2. Creator Author's name, affiliation, country Maria Drakaki; International Hellenic University; Greece
 
2. Creator Author's name, affiliation, country Yannis L. Karnavas; Democritus University of Thrace; Greece
 
2. Creator Author's name, affiliation, country Ioannis A. Tziafettas; Democritus University of Thrace; Greece
 
2. Creator Author's name, affiliation, country Vasilis Linardos; Archeiothiki SA; Greece
 
2. Creator Author's name, affiliation, country Panagiotis Tzionas; International Hellenic University; Greece
 
3. Subject Discipline(s) Production; Predictive Maintenance
 
3. Subject Keyword(s) Predictive maintenance, induction motor, fault detection, fault diagnosis, machine learning, deep learning, Industry 4.0
 
4. Description Abstract

Purpose: Developments in Industry 4.0 technologies and Artificial Intelligence (AI) have enabled data-driven manufacturing. Predictive maintenance (PdM) has therefore become the prominent approach for fault detection and diagnosis (FD/D) of induction motors (IMs). The maintenance and early FD/D of IMs are critical processes, considering that they constitute the main power source in the industrial production environment. Machine learning (ML) methods have enhanced the performance and reliability of PdM. Various deep learning (DL) based FD/D methods have emerged in recent years, providing automatic feature engineering and learning and thereby alleviating drawbacks of traditional ML based methods. This paper presents a comprehensive survey of ML and DL based FD/D methods of IMs that have emerged since 2015. An overview of the main DL architectures used for this purpose is also presented. A discussion of the recent trends is given as well as future directions for research.

Design/methodology/approach: A comprehensive survey has been carried out through all available publication databases using related keywords. Classification of the reviewed works has been done according to the main ML and DL techniques and algorithms

Findings: DL based PdM methods have been mainly introduced and implemented for IM fault diagnosis in recent years. Novel DL FD/D methods are based on single DL techniques as well as hybrid techniques. DL methods have also been used for signal preprocessing and moreover, have been combined with traditional ML algorithms to enhance the FD/D performance in feature engineering. Publicly available datasets have been mostly used to test the performance of the developed methods, however industrial datasets should become available as well. Multi-agent system (MAS) based PdM employing ML classifiers has been explored. Several methods have investigated multiple IM faults, however, the presence of multiple faults occurring simultaneously has rarely been investigated.

Originality/value: The paper presents a comprehensive review of the recent advances in PdM of IMs based on ML and DL methods that have emerged since 2015.

 
5. Publisher Organizing agency, location OmniaScience (Omnia Publisher SL)
 
6. Contributor Sponsor(s)
 
7. Date (YYYY-MM-DD) 2022-02-01
 
8. Type Status & genre Peer-reviewed Article
 
8. Type Type surveys
 
9. Format File format PDF
 
10. Identifier Uniform Resource Identifier https://www.jiem.org/index.php/jiem/article/view/3597
 
10. Identifier Digital Object Identifier (DOI) https://doi.org/10.3926/jiem.3597
 
11. Source Title; vol., no. (year) Journal of Industrial Engineering and Management; Vol 15, No 1 (2022): Special Issue. Smart manufacturing for sustainability: Trends and research challenges
 
12. Language English=en en
 
13. Relation Supp. Files
 
14. Coverage Geo-spatial location, chronological period, research sample (gender, age, etc.)
 
15. Rights Copyright and permissions Copyright (c) 2022 Maria Drakaki, Yannis L. Karnavas, Ioannis A. Tziafettas, Vasilis Linardos, Panagiotis Tzionas
https://creativecommons.org/licenses/by-nc/4.0