Welkom op het expertplatform!
Dit platform verschaft informatie en kennis omtrent de WL expertisedomeinen 'hydraulica en sediment', 'havens en waterwegen', 'waterbouwkundige constructies', 'waterbeheer' en 'kustbescherming' - gaande van WL medewerkers met hun expertise, het curriculum van deze instelling, tot publicaties, projecten, data (op termijn) en evenementen waarin het WL betrokken is.
Het WL onderschrijft het belang van "open access" voor de ontsluiting van haar onderzoeksresultaten. Lees er meer over in ons openaccessbeleid.
one publication added to basket [295713] |
Pattern mining for learning typical turbine response during dynamic wind turbine events
Feremans, L.; Cule, B.; Devriendt, C.; Goethals, B.; Helsen, J. (2017). Pattern mining for learning typical turbine response during dynamic wind turbine events, in: ASME 2017 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference. Volume 1: 37th Computers and Information in Engineering Conference. pp. 1-9. https://dx.doi.org/10.1115/DETC2017-67910
In: (2017). ASME 2017 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference. Volume 1: 37th Computers and Information in Engineering Conference. ASME: New York. ISBN 978-0-7918-5811-0.
|
Beschikbaar in | Auteurs |
|
Documenttype: Congresbijdrage
|
Auteurs | | Top |
- Feremans, L.
- Cule, B.
- Devriendt, C.
|
|
|
Abstract |
Maintenance costs are a main cost driver for offshore wind energy. Prediction of failure and particularly failure understanding can help to bring these costs down significantly. Since the wind turbine is subjected to a large number of dynamic events it is important to fully understand the turbine response to these events. Pattern mining has been used successfully for different applications. We believe it to have large potential for understanding turbine behavior based on turbine status logs. These logs record all turbine actions and can be used as input for pattern mining algorithms. This paper proposes the use of a multi-level pattern mining approach in order to minimize the number of uninteresting patterns and facilitate response understanding. The paper mainly focuses on the extraction of patterns and association rules linked to certain alarms and how they can be annotated for further use in the multi-level pattern mining approach. Several years of wind turbine data is used. The use of the approach is illustrated by detecting the characteristic pattern linked to turbine response to an Extremely High Wind Speed Alert. |
IMIS is ontwikkeld en wordt gehost door het VLIZ.