Few-Shot power transformers fault diagnosis based on Gaussian prototype network

oleh: Wenhan Deng, Wei Xiong, Zhiyang Lu, Xufeng Yuan, Chao Zhang, Le Wang

Format: Article
Diterbitkan: Elsevier 2024-09-01

Deskripsi

Power transformer diagnostic methods based on traditional intelligent learning are affected by the scarcity of transformer fault data, which hinders their further application and prevents them from obtaining high diagnostic accuracy. To solve this problem, a few-shot method based on Gaussian Prototype Network (GPN) is proposed to achieve an effective and accurate diagnosis of power transformers using even a small number of fault samples. The method is an organic combination of embedding network and distance metric. The proposed approach is verified by datasets of dissolved gas and literature, which come from real power transformers and historical data. The results show that the method can achieve up to 96.7% accuracy, which is suitable for the field of power transformer fault diagnosis.