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Publikationstyp: Konferenz: Paper
Art der Begutachtung: Peer review (Publikation)
Titel: Power system inertia estimation using a residual neural network based approach
Autor/-in: Ramirez Gonzalez, Miguel
Segundo Sevilla, Felix Rafael
Korba, Petr
et. al: No
DOI: 10.1109/GPECOM55404.2022.9815784
10.21256/zhaw-25336
Tagungsband: Proceedings of IEEE GEPCOM 2022
Seite(n): 355
Seiten bis: 360
Angaben zur Konferenz: 4th Global Power, Energy and Communication Conference (GPECOM), Cappadocia, Turkey, 14-17 June 2022
Erscheinungsdatum: 2022
Verlag / Hrsg. Institution: IEEE
Verlag / Hrsg. Institution: New York
ISBN: 978-1-6654-6925-8
Sprache: Englisch
Schlagwörter: Inertia estimation; Convolutional neural network; Residual neural network; Frequency stability; Converter-interfaced generation
Fachgebiet (DDC): 006: Spezielle Computerverfahren
621.3: Elektro-, Kommunikations-, Steuerungs- und Regelungstechnik
Zusammenfassung: The increasing penetration of non-synchronous generation into power grids is reducing the equivalent system inertia and leading to different frequency regulation and control challenges. Consequently, the monitoring and quantification of this inertia to implement actions that can keep it above critical levels have become a key issue for the stability of power systems. In this regard, a residual neural network (ResNet) based alternative is proposed and investigated in this paper to estimate the equivalent inertia of a sample system when synchronous generating units are displaced by converter-interfaced generators. The proposed ResNet model is trained according to the frequency of the center of inertia and the corresponding computed rates of change of frequency for a predefined time interval, where sudden generation outages and load step changes are considered under variations of total load demand and equivalent inertia reductions. The accuracy of the proposed approach is compared against the one achieved with the application of two traditional machine learning techniques, such as Support Vector Machine and Random Forest.
URI: https://digitalcollection.zhaw.ch/handle/11475/25336
Volltext Version: Akzeptierte Version
Lizenz (gemäss Verlagsvertrag): Lizenz gemäss Verlagsvertrag
Departement: School of Engineering
Organisationseinheit: Institut für Energiesysteme und Fluid-Engineering (IEFE)
Enthalten in den Sammlungen:Publikationen School of Engineering

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Ramirez Gonzalez, M., Segundo Sevilla, F. R., & Korba, P. (2022). Power system inertia estimation using a residual neural network based approach [Conference paper]. Proceedings of IEEE GEPCOM 2022, 355–360. https://doi.org/10.1109/GPECOM55404.2022.9815784
Ramirez Gonzalez, M., Segundo Sevilla, F.R. and Korba, P. (2022) ‘Power system inertia estimation using a residual neural network based approach’, in Proceedings of IEEE GEPCOM 2022. New York: IEEE, pp. 355–360. Available at: https://doi.org/10.1109/GPECOM55404.2022.9815784.
M. Ramirez Gonzalez, F. R. Segundo Sevilla, and P. Korba, “Power system inertia estimation using a residual neural network based approach,” in Proceedings of IEEE GEPCOM 2022, 2022, pp. 355–360. doi: 10.1109/GPECOM55404.2022.9815784.
RAMIREZ GONZALEZ, Miguel, Felix Rafael SEGUNDO SEVILLA und Petr KORBA, 2022. Power system inertia estimation using a residual neural network based approach. In: Proceedings of IEEE GEPCOM 2022. Conference paper. New York: IEEE. 2022. S. 355–360. ISBN 978-1-6654-6925-8
Ramirez Gonzalez, Miguel, Felix Rafael Segundo Sevilla, and Petr Korba. 2022. “Power System Inertia Estimation Using a Residual Neural Network Based Approach.” Conference paper. In Proceedings of IEEE GEPCOM 2022, 355–60. New York: IEEE. https://doi.org/10.1109/GPECOM55404.2022.9815784.
Ramirez Gonzalez, Miguel, et al. “Power System Inertia Estimation Using a Residual Neural Network Based Approach.” Proceedings of IEEE GEPCOM 2022, IEEE, 2022, pp. 355–60, https://doi.org/10.1109/GPECOM55404.2022.9815784.


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