Application of Deep Neural Networks to Predict Dynamic Stability of Power System

Authors

Corressponding author's email:

phanvietthinh1978@gmail.com

DOI:

https://doi.org/10.54644/jte.2024.1498

Keywords:

Dynamic stability prediction, Power system, Instability, Deep neural networks, Perceptron neural networks

Abstract

Electricity demand is increasing, transmission line development can not keep up with it. This puts the power system in a full load state which puts the power system operating near the boundary of stability. During operation, large disturbances cause power imbalance and voltage drops which cause instability. It is vital to detect the power system dynamic instability quickly. It prevents the disintegration of the power grid leading to widespread power outages which results in great economic losses. Traditional analysis methods are slow in making control decisions. Artificial neural networks overcome this drawback because they calculate quickly and accurately. This paper applies deep neural networks to predict power system dynamic stability. Evaluated on the IEEE 39bus power system data set, the deep neural networks have a validation accuracy as high as 96.99%. Compared with perceptron neural networks, deep neural networks have 1.5% higher validation accuracy.

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Author Biographies

Viet Thinh Phan, Dongnai College of High Technology, Vietnam

Phan Viet Thinh completed his bachelor of electrical engineering from Ho Chi Minh City University of Technology and Education in 2009, Vietnam. He received the degree of master in electrical engineering from Ho Chi Minh City University of Technology and Education in 2016, Vietnam. Currently, he is a lecturer at the Faculty of Electrical and Electronics Engineering at Dongnai College of High Technology, Vietnam. His main areas of research interests are control and automation engineering, power system stability prediction.

Email: phanvietthinh1978@gmail.com. ORCID:  https://orcid.org/0009-0003-2424-1052

Ngoc Au Nguyen, Ho Chi Minh City University of Technology and Education, Vietnam

Nguyen Ngoc Au was born in Vietnam. He received his M.Sc. degree in electrical engineering from Ho Chi Minh City University of Technology and Education in 2003, Vietnam, and his Ph.D. degree in electrical engineering from Ho Chi Minh City University of Technology and Education in 2019, Vietnam. Currently, he is a lecturer at the Faculty of Electrical and Electronics Engineering at Ho Chi Minh City University of Technology and Education, Vietnam. His main areas of research interests are load shedding in power system, stability power system prediction, LV surge protection device.

Email: aunn@hcmute.edu.vn.

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MATLAB R2021b.

Published

28-08-2024

How to Cite

[1]
Phan Viết Thịnh and Nguyễn Ngọc Âu, “Application of Deep Neural Networks to Predict Dynamic Stability of Power System”, JTE, vol. 19, no. 04, pp. 68–77, Aug. 2024.

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