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Identifying Health Status of Wind Turbines by Using Self Organizing Maps and Interpretation-Oriented Post-Processing Tools

Author

Listed:
  • Alejandro Blanco-M.

    (Data and Signal Processing Group, U Science Tech, University of Vic-Central University of Catalonia, 08500 Vic, Catalonia, Spain
    Smartive Wind Turbine’s Diagnosis Solutions, 08204 Sabadell, Barcelona, Catalonia, Spain
    These authors contributed equally to this work.)

  • Karina Gibert

    (Department of Statistics and Operations Research, Universitat Politècnica de Catalunya-BarcelonaTech, Knowledge Engineering and Machine Learning Research group at Intelligent Data Science and Artificial Intelligence Research Center, UPC, 08034 Barcelona, Catalonia, Spain
    Institute of Science and Technology of Sustainability, UPC, 08034 Barcelona, Catalonia, Spain
    These authors contributed equally to this work.)

  • Pere Marti-Puig

    (Data and Signal Processing Group, U Science Tech, University of Vic-Central University of Catalonia, 08500 Vic, Catalonia, Spain)

  • Jordi Cusidó

    (Smartive Wind Turbine’s Diagnosis Solutions, 08204 Sabadell, Barcelona, Catalonia, Spain)

  • Jordi Solé-Casals

    (Data and Signal Processing Group, U Science Tech, University of Vic-Central University of Catalonia, 08500 Vic, Catalonia, Spain)

Abstract

Background: Identifying the health status of wind turbines becomes critical to reduce the impact of failures on generation costs (between 25–35%). This is a time-consuming task since a human expert has to explore turbines individually. Methods: To optimize this process, we present a strategy based on Self Organizing Maps, clustering and a further grouping of turbines based on the centroids of their SOM clusters, generating groups of turbines that have similar behavior for subsystem failure. The human expert can diagnose the wind farm health by the analysis of a small each group sample. By introducing post-processing tools like Class panel graphs and Traffic lights panels, the conceptualization of the clusters is enhanced, providing additional information of what kind of real scenarios the clusters point out contributing to a better diagnosis. Results: The proposed approach has been tested in real wind farms with different characteristics (number of wind turbines, manufacturers, power, type of sensors, ...) and compared with classical clustering. Conclusions: Experimental results show that the states healthy , unhealthy and intermediate have been detected. Besides, the operational modes identified for each wind turbine overcome those obtained with classical clustering techniques capturing the intrinsic stationarity of the data.

Suggested Citation

  • Alejandro Blanco-M. & Karina Gibert & Pere Marti-Puig & Jordi Cusidó & Jordi Solé-Casals, 2018. "Identifying Health Status of Wind Turbines by Using Self Organizing Maps and Interpretation-Oriented Post-Processing Tools," Energies, MDPI, vol. 11(4), pages 1-21, March.
  • Handle: RePEc:gam:jeners:v:11:y:2018:i:4:p:723-:d:137631
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    References listed on IDEAS

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    2. Angel Gil & Miguel A. Sanz-Bobi & Miguel A. Rodríguez-López, 2018. "Behavior Anomaly Indicators Based on Reference Patterns—Application to the Gearbox and Electrical Generator of a Wind Turbine," Energies, MDPI, vol. 11(1), pages 1-15, January.
    3. Kiang, Melody Y., 2001. "Extending the Kohonen self-organizing map networks for clustering analysis," Computational Statistics & Data Analysis, Elsevier, vol. 38(2), pages 161-180, December.
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    Cited by:

    1. Kerman López de Calle & Susana Ferreiro & Constantino Roldán-Paraponiaris & Alain Ulazia, 2019. "A Context-Aware Oil Debris-Based Health Indicator for Wind Turbine Gearbox Condition Monitoring," Energies, MDPI, vol. 12(17), pages 1-19, September.
    2. Mingzhu Tang & Wei Chen & Qi Zhao & Huawei Wu & Wen Long & Bin Huang & Lida Liao & Kang Zhang, 2019. "Development of an SVR Model for the Fault Diagnosis of Large-Scale Doubly-Fed Wind Turbines Using SCADA Data," Energies, MDPI, vol. 12(17), pages 1-15, September.
    3. Jordi Cusidó & Arnau López & Mattia Beretta, 2021. "Fault-Tolerant Control of a Wind Turbine Generator Based on Fuzzy Logic and Using Ensemble Learning," Energies, MDPI, vol. 14(16), pages 1-20, August.
    4. Francisco Martínez-Álvarez & Alicia Troncoso & José C. Riquelme, 2018. "Data Science and Big Data in Energy Forecasting," Energies, MDPI, vol. 11(11), pages 1-2, November.
    5. Pere Marti-Puig & Alejandro Blanco-M & Juan José Cárdenas & Jordi Cusidó & Jordi Solé-Casals, 2019. "Feature Selection Algorithms for Wind Turbine Failure Prediction," Energies, MDPI, vol. 12(3), pages 1-18, January.
    6. Jorge Maldonado-Correa & Sergio Martín-Martínez & Estefanía Artigao & Emilio Gómez-Lázaro, 2020. "Using SCADA Data for Wind Turbine Condition Monitoring: A Systematic Literature Review," Energies, MDPI, vol. 13(12), pages 1-21, June.

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