Advanced Discretisation and Visualisation Methods for Performance Profiling of Wind Turbines

Michiel Dhont, Elena Tsiporkova, Veselka Boeva

Onderzoeksoutput: Articlepeer review

6 Citaten (Scopus)

Samenvatting

Wind turbines are typically organised as a fleet in a wind park, subject to similar, but varying, environmental conditions. This makes it possible to assess and benchmark a turbine’s output performance by comparing it to the other assets in the fleet. However, such a comparison cannot be performed straightforwardly on time series production data since the performance of a wind turbine is affected by a diverse set of factors (e.g., weather conditions). All these factors also produce a continuous stream of data, which, if discretised in an appropriate fashion, might allow us to uncover relevant insights into the turbine’s operations and behaviour. In this paper, we exploit the outcome of two inherently different discretisation approaches by statistical and visual analytics. As the first discretisation method, a complex layered integration approach is used. The DNA-like outcome allows us to apply advanced visual analytics, facilitating insightful operating mode monitoring. The second discretisation approach is applying a novel circular binning approach, capitalising on the circular nature of the angular variables. The resulting bins are then used to construct circular power maps and extract prototypical profiles via non-negative matrix factorisation, enabling us to detect anomalies and perform production forecasts.
Originele taal-2English
Artikelnummer6216
Aantal pagina's30
TijdschriftEnergies
Volume14
Nummer van het tijdschrift19
DOI's
StatusPublished - okt 2021

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  • Advanced exploration of wind fleet data through operating mode labelling

    Dhont, M., Verbeke, R., Droutsas, C., Boeva, V., Verbeke, M., Murgia, A. & Tsiporkova, E., 8 dec 2021, Proceedings 5th RESRB 2020: Renewable Energy Sources – Research and Business. Wojciech Budzianowski Consulting Services, Vol. 5. blz. 1-4 4 blz.

    Onderzoeksoutput: Conference paperResearch

  • Layered Integration Approach for Multi-view Analysis of Temporal Data

    Dhont, M., Tsiporkova, E. & Boeva, V., 16 dec 2020, Advanced Analytics and Learning on Temporal Data - 5th ECML PKDD Workshop, AALTD 2020, Revised Selected Papers: AALTD 2020: Advanced Analytics and Learning on Temporal Data. Lemaire, V., Malinowski, S., Bagnall, A., Guyet, T., Tavenard, R. & Ifrim, G. (redactie). Springer, Vol. 12588. blz. 138-154 17 blz. (Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics); vol. 12588 LNAI).

    Onderzoeksoutput: Conference paperResearch

    6 Citaten (Scopus)

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