Reliability, Monitoring and Sensing Technology for Wind Energy Collection
This Data-Centric Engineering special collection explores how novel sensing and Non Destructive Evaluation solutions offer valuable tools for intelligent monitoring and assessment of wind energy infrastructure, at both the individual unit level, as well as the level of fleets or populations. For example, Structural Health Monitoring (SHM) can be used for early stage verification and investigation of design uncertainties, deliver early warnings on degradation/damage and abnormal operation, as well as provide input for prognostic tasks, such as remaining useful lifetime assessment, preventive maintenance and optimisation of operational/control conditions.
Many of these articles originally derive from the "Reliability, Monitoring and Sensing" theme of the annual Wind Energy Science Conference (WESC). The special collection is publishing on a continuous basis and we welcome further submissions from the WESC or elsewhere. For more details on the scope of the collection and how to submit, see the ongoing Call for Papers.
Editors: Eleni Chatzi (ETH Zurich) - DCE Editor-in-Chief; Nikolaos Dervilis (University of Sheffield); Tanja Grießmann (Leibniz University of Hannover); Julio Javier Melero (University of Zaragoza); Keith Worden (University of Sheffield).
Research Article
Multi-resolution dynamic mode decomposition for damage detection in wind turbine gearboxes
-
- Journal:
- Data-Centric Engineering / Volume 4 / 2023
- Published online by Cambridge University Press:
- 09 January 2023, e1
-
- Article
-
- You have access
- Open access
- HTML
- Export citation
Given-data probabilistic fatigue assessment for offshore wind turbines using Bayesian quadrature
-
- Journal:
- Data-Centric Engineering / Volume 5 / 2024
- Published online by Cambridge University Press:
- 13 March 2024, e5
-
- Article
-
- You have access
- Open access
- HTML
- Export citation
Structural health monitoring of 52-meter wind turbine blade: Detection of damage propagation during fatigue testing
-
- Journal:
- Data-Centric Engineering / Volume 3 / 2022
- Published online by Cambridge University Press:
- 07 June 2022, e22
-
- Article
-
- You have access
- Open access
- HTML
- Export citation
A mapping method for anomaly detection in a localized population of structures
-
- Journal:
- Data-Centric Engineering / Volume 3 / 2022
- Published online by Cambridge University Press:
- 09 August 2022, e25
-
- Article
-
- You have access
- Open access
- HTML
- Export citation
On improved fail-safe sensor distributions for a structural health monitoring system
-
- Journal:
- Data-Centric Engineering / Volume 3 / 2022
- Published online by Cambridge University Press:
- 07 September 2022, e27
-
- Article
-
- You have access
- Open access
- HTML
- Export citation
Virtual sensing in an onshore wind turbine tower using a Gaussian process latent force model
-
- Journal:
- Data-Centric Engineering / Volume 3 / 2022
- Published online by Cambridge University Press:
- 28 November 2022, e35
-
- Article
-
- You have access
- Open access
- HTML
- Export citation