4.8 Article

Deep learning based on Transformer architecture for power system short-term voltage stability assessment with class imbalance

Journal

RENEWABLE & SUSTAINABLE ENERGY REVIEWS
Volume 189, Issue -, Pages -

Publisher

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.rser.2023.113913

Keywords

Power system; Short-term voltage stability assessment; Transformer architecture; Class imbalance; Renewable energy penetration; Conditional wasserstein generative adversarial; network with gradient penalty (CWGAN-GP)

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This study proposes a Transformer-based method for short-term voltage stability assessment in power systems, which addresses the issue of data imbalance by utilizing a conditional Wasserstein generative adversarial network with gradient penalty. Extensive numerical tests on the IEEE 39-bus test system demonstrate the robust performance of the proposed method under class imbalances and noisy environments.
Most existing data-driven power system short-term voltage stability assessment (STVSA) approaches presume class-balanced input data. However, in practical applications, the occurrence of short-term voltage instability following a disturbance is minimal, leading to a significant class imbalance problem and a consequent decline in classifier performance. This work proposes a Transformer-based STVSA method to address this challenge. By utilizing the basic Transformer architecture, a stability assessment Transformer (StaaT) is developed as a classification model to reflect the correlation between the operational states of the system and the resulting stability outcomes. To combat the negative impact of imbalanced datasets, this work employs a conditional Wasserstein generative adversarial network with gradient penalty (CWGAN-GP) for synthetic data generation, aiding in the creation of a balanced, representative training set for the classifier. Semi-supervised clustering learning is implemented to enhance clustering quality, addressing the lack of a unified quantitative criterion for short-term voltage stability. Numerical tests on the IEEE 39-bus test system extensively demonstrate that the proposed method exhibits robust performance under class imbalances up to 100:1 and noisy environments, and maintains consistent effectiveness even with an increased penetration of renewable energy. Comparative results reveal that the CWGAN-GP generates more balanced datasets than traditional oversampling methods and that the StaaT outperforms other deep learning algorithms. This study presents a compelling solution for real-world STVSA applications that often face class imbalance and data noise challenges.

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