Transformer fault identification method based on GASF‐AlexNet‐MSA transfer learning
Xin Zhang,
Kaiyue Yang,
Lei Jia
Abstract:The transformer is an important part of the power system and ensures the stable operation of the power grid and electricity safety key equipment. With the increase in electricity demand, it is of great significance to ensure the safe and reliable operation of transformers. However, the commonly used dissolved gas analysis (DGA) method in oil for transformer fault identification has significant drawbacks, so this paper proposes a transformer fault identification method based on GASF‐AlexNet‐MSA transfer learnin… Show more
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