贾俊青,等 ELECTRIC DRIVE 2022 202 JIA Junqing1,LÜ Chao1,LIU Dinghua1,XU Hao2 (1. Inner Mongolia Electric Power Research Institute,Huhhot 010020,Nei Monggol,China; 2. School of Electric Power,Inner Mongolia University of Technology,Huhhot 010321,Nei Monggol,China) Abstract: With the rapid development of artificial intelligence algorithms,convolutional neural networks with fewer layers have been used in distribution network overvoltage recognition. The deep-level network has a higher recognition rate,but requires a large number of data samples. At present,the amount of data in the existing data set is insufficient to meet the needs of deep-level network training. To this end,a method for establishing distribution network overvoltage data sets required for deep-level network training was proposed. Firstly,the electromagnetic transient simulation software EMTPworks was used to simulate 5 typical overvoltages of 10 kV distribution network and the corresponding JavaScript script was edited,and 16 272 pieces of data were generated