| Title: |
Towards physics-informed machine learning-based predictive maintenance for power converters – A review |
| Authors: |
Fassi, Youssof; Heiries, Vincent; Boutet, Jérôme; Boisseau, Sebastien |
| Contributors: |
Département Systèmes (DSYS); Commissariat à l'énergie atomique et aux énergies alternatives - Laboratoire d'Electronique et de Technologie de l'Information (CEA-LETI); Direction de Recherche Technologique (CEA) (DRT (CEA)); Commissariat à l'énergie atomique et aux énergies alternatives (CEA)-Commissariat à l'énergie atomique et aux énergies alternatives (CEA)-Direction de Recherche Technologique (CEA) (DRT (CEA)); Commissariat à l'énergie atomique et aux énergies alternatives (CEA)-Commissariat à l'énergie atomique et aux énergies alternatives (CEA) |
| Source: |
ISSN: 0885-8993 ; IEEE Transactions on Power Electronics ; https://cea.hal.science/cea-04520210 ; IEEE Transactions on Power Electronics, 2023, 39 (2), pp.2692 - 2720. ⟨10.1109/TPEL.2023.3328438⟩ ; https://ieeexplore.ieee.org/document/10301485. |
| Publisher Information: |
CCSD; Institute of Electrical and Electronics Engineers |
| Publication Year: |
2023 |
| Collection: |
HAL-CEA (Commissariat à l'énergie atomique et aux énergies alternatives) |
| Subject Terms: |
Anomaly detection; artificial intelligence (AI); condition monitoring; digital twin; fault analysis; physics-informed machine learning (PIML); power converters; power electronics; predictive maintenance; remaining useful life (RUL); [STAT.ML]Statistics [stat]/Machine Learning [stat.ML]; [INFO.INFO-AI]Computer Science [cs]/Artificial Intelligence [cs.AI]; [INFO.INFO-LG]Computer Science [cs]/Machine Learning [cs.LG]; [INFO.INFO-NE]Computer Science [cs]/Neural and Evolutionary Computing [cs.NE]; [SPI.SIGNAL]Engineering Sciences [physics]/Signal and Image processing; [SPI.TRON]Engineering Sciences [physics]/Electronics |
| Description: |
International audience ; Predictive maintenance for power electronic converters has emerged as a critical area of research and development. With the rapid advancements in deep learning techniques, new possibilities have emerged for enhancing the performance and reliability of power converters. However, addressing challenges related to data resources, physical consistency, and generalizability has become crucial in achieving optimal strategies. This comprehensive review article presents an insightful overview of the recent advancements in the field of predictive maintenance for power converters. It explores three paradigms: model-based approaches, data-driven techniques, and the emerging concept of physics-informed machine learning (PIML). By leveraging the integration of physical knowledge into machine learning architectures, PIML holds great promise for overcoming the aforementioned concerns. Drawing upon the current state-of-art, this review identifies common trends, practical challenges, and significant research opportunities in the domain of predictive maintenance for power converters. The analysis covers a broad spectrum of approaches used for parameter identification, feature engineering, fault detection, and remaining useful life estimation (RUL). This article not only provides a comprehensive survey of recent methodologies but also highlights future trends, serving as a resource for researchers and practitioners involved in the development of predictive maintenance strategies for power converters. |
| Document Type: |
article in journal/newspaper |
| Language: |
English |
| DOI: |
10.1109/TPEL.2023.3328438 |
| Availability: |
https://cea.hal.science/cea-04520210; https://cea.hal.science/cea-04520210v1/document; https://cea.hal.science/cea-04520210v1/file/postprint.pdf; https://doi.org/10.1109/TPEL.2023.3328438 |
| Rights: |
info:eu-repo/semantics/OpenAccess |
| Accession Number: |
edsbas.D2BE2F1B |
| Database: |
BASE |