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Investigation of different machine learning approaches for fault identification in microgrid. / Menaem, Amir Abdel; Elsaeed, Mohamed A.; Mansi, Ibrahim I. et al.
2023 24th International Middle East Power System Conference, MEPCON 2023: book. Institute of Electrical and Electronics Engineers Inc., 2023. p. 1-8.

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Harvard

Menaem, AA, Elsaeed, MA, Mansi, II & Badran, EA 2023, Investigation of different machine learning approaches for fault identification in microgrid. in 2023 24th International Middle East Power System Conference, MEPCON 2023: book. Institute of Electrical and Electronics Engineers Inc., pp. 1-8, 2023 24th International Middle East Power System Conference (MEPCON), 19/12/2023. https://doi.org/10.1109/MEPCON58725.2023.10462401

APA

Menaem, A. A., Elsaeed, M. A., Mansi, I. I., & Badran, E. A. (2023). Investigation of different machine learning approaches for fault identification in microgrid. In 2023 24th International Middle East Power System Conference, MEPCON 2023: book (pp. 1-8). Institute of Electrical and Electronics Engineers Inc.. https://doi.org/10.1109/MEPCON58725.2023.10462401

Vancouver

Menaem AA, Elsaeed MA, Mansi II, Badran EA. Investigation of different machine learning approaches for fault identification in microgrid. In 2023 24th International Middle East Power System Conference, MEPCON 2023: book. Institute of Electrical and Electronics Engineers Inc. 2023. p. 1-8 doi: 10.1109/MEPCON58725.2023.10462401

Author

Menaem, Amir Abdel ; Elsaeed, Mohamed A. ; Mansi, Ibrahim I. et al. / Investigation of different machine learning approaches for fault identification in microgrid. 2023 24th International Middle East Power System Conference, MEPCON 2023: book. Institute of Electrical and Electronics Engineers Inc., 2023. pp. 1-8

BibTeX

@inproceedings{141f1e8b0d054f1abb413a1385f2c105,
title = "Investigation of different machine learning approaches for fault identification in microgrid",
abstract = "he growing adoption of microgrids in modern energy systems has underscored the critical need for robust protection mechanisms to ensure their reliability and stability. With the dynamic nature of microgrids resulting from the large integration of renewable energy sources, conventional fault prediction schemes do not provide reliable protection. This paper investigates different protection models based on machine learning approaches: support vector machine (SVM), decision tree (DT), and random forest (RF), which accurately detect the variability in the microgrid operation under normal and fault conditions. A MATLAB Simulink environment is employed to model a comprehensive microgrid system, incorporating PV systems, diesel generators, and diverse loads. Subsequently, RMS values of three-phase voltage and current measurements are seamlessly integrated into a Python codebase as data inputs to train and test the protection models. By employing simulation data, the models based on the three techniques (SVM, DT, and RF) learn to accurately identify the mode of operation, the variations in PV generation, and the occurrence of a fault and its type in the microgrid. The practicability of the proposed schemes is tested on a five-bus AC microgrid. Comparisons among approaches in terms of accuracy and speed of operation results are highlighted. The results show the improved accuracy and adaptability of the machine learning-based protection system compared to conventional methods.",
author = "Menaem, {Amir Abdel} and Elsaeed, {Mohamed A.} and Mansi, {Ibrahim I.} and Badran, {Ebrahim A.}",
year = "2023",
month = dec,
day = "19",
doi = "10.1109/MEPCON58725.2023.10462401",
language = "English",
isbn = "979-835035846-9",
pages = "1--8",
booktitle = "2023 24th International Middle East Power System Conference, MEPCON 2023",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
address = "United States",
note = "2023 24th International Middle East Power System Conference (MEPCON) ; Conference date: 19-12-2023 Through 21-12-2023",

}

RIS

TY - GEN

T1 - Investigation of different machine learning approaches for fault identification in microgrid

AU - Menaem, Amir Abdel

AU - Elsaeed, Mohamed A.

AU - Mansi, Ibrahim I.

AU - Badran, Ebrahim A.

PY - 2023/12/19

Y1 - 2023/12/19

N2 - he growing adoption of microgrids in modern energy systems has underscored the critical need for robust protection mechanisms to ensure their reliability and stability. With the dynamic nature of microgrids resulting from the large integration of renewable energy sources, conventional fault prediction schemes do not provide reliable protection. This paper investigates different protection models based on machine learning approaches: support vector machine (SVM), decision tree (DT), and random forest (RF), which accurately detect the variability in the microgrid operation under normal and fault conditions. A MATLAB Simulink environment is employed to model a comprehensive microgrid system, incorporating PV systems, diesel generators, and diverse loads. Subsequently, RMS values of three-phase voltage and current measurements are seamlessly integrated into a Python codebase as data inputs to train and test the protection models. By employing simulation data, the models based on the three techniques (SVM, DT, and RF) learn to accurately identify the mode of operation, the variations in PV generation, and the occurrence of a fault and its type in the microgrid. The practicability of the proposed schemes is tested on a five-bus AC microgrid. Comparisons among approaches in terms of accuracy and speed of operation results are highlighted. The results show the improved accuracy and adaptability of the machine learning-based protection system compared to conventional methods.

AB - he growing adoption of microgrids in modern energy systems has underscored the critical need for robust protection mechanisms to ensure their reliability and stability. With the dynamic nature of microgrids resulting from the large integration of renewable energy sources, conventional fault prediction schemes do not provide reliable protection. This paper investigates different protection models based on machine learning approaches: support vector machine (SVM), decision tree (DT), and random forest (RF), which accurately detect the variability in the microgrid operation under normal and fault conditions. A MATLAB Simulink environment is employed to model a comprehensive microgrid system, incorporating PV systems, diesel generators, and diverse loads. Subsequently, RMS values of three-phase voltage and current measurements are seamlessly integrated into a Python codebase as data inputs to train and test the protection models. By employing simulation data, the models based on the three techniques (SVM, DT, and RF) learn to accurately identify the mode of operation, the variations in PV generation, and the occurrence of a fault and its type in the microgrid. The practicability of the proposed schemes is tested on a five-bus AC microgrid. Comparisons among approaches in terms of accuracy and speed of operation results are highlighted. The results show the improved accuracy and adaptability of the machine learning-based protection system compared to conventional methods.

UR - http://www.scopus.com/inward/record.url?partnerID=8YFLogxK&scp=85190385463

U2 - 10.1109/MEPCON58725.2023.10462401

DO - 10.1109/MEPCON58725.2023.10462401

M3 - Conference contribution

SN - 979-835035846-9

SP - 1

EP - 8

BT - 2023 24th International Middle East Power System Conference, MEPCON 2023

PB - Institute of Electrical and Electronics Engineers Inc.

T2 - 2023 24th International Middle East Power System Conference (MEPCON)

Y2 - 19 December 2023 through 21 December 2023

ER -

ID: 55695149