Transmission Line Fault Classification Using Conformer Convolution-Augmented Transformer Model
Meng-Yun Lee,
Yu-Shan Huang,
Chia-Jui Chang
et al.
Abstract:Ensuring a consistently reliable power supply is paramount in power systems. Researchers are engaged in the pursuit of categorizing transmission line failures to design countermeasures for mitigating the associated financial losses. Our study employs a machine learning-based methodology, specifically the Conformer Convolution-Augmented Transformer model, to classify transmission line fault types. This model processes time series input data directly, eliminating the need for expert feature extraction. The train… Show more
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