Extended Relevance Vector Machine-Based Remaining Useful Life Prediction for DC-Link Capacitor in High-Speed Train
In: IEEE Transactions on Cybernetics, Vol. 52 (2022), No. 9, pp. 9746 - 9755
2022article/chapter in journalClosed access
Electrical Engineering and Information TechnologyFaculty of Engineering » Engineering and Information Technology » Automatic Control and Complex Systems
Title in English:
Extended Relevance Vector Machine-Based Remaining Useful Life Prediction for DC-Link Capacitor in High-Speed Train
Author:
Wang, Xiuli
- ORCID
-
0000-0001-8237-3887
- ORCID
-
0000-0002-9153-4360
- Other
- corresponding author
- GND
- 134302427
- LSF ID
- 2347
- ORCID
-
0000-0002-5149-5918
- Other
- connected with university
- ORCID
-
0000-0002-9964-7677
- ORCID
-
0000-0002-6094-3428
Year of publication:
2022
Open Access?:
Closed access
IEEE ID
Web of Science ID
PubMed ID
Scopus ID
Language of text:
English
Keyword, Topic:
Capacitors ; Degradation ; extended relevance vector machine (RVM) ; first hitting time (FHT) ; Kernel ; Manifolds ; Market research ; Predictive models ; remaining useful life (RUL) prediction ; Support vector machines ; tendency degradation estimation