电气传动2026,Vol.56Issue(1):75-81,7.DOI:10.19457/j.1001-2095.dqcd26311
基于改进TimeGAN数据增强的用户窃电识别研究
Research on User Electricity Theft Recognition Based on Improved TimeGAN Data Enhancement
摘要
Abstract
Electricity theft by users is the main cause of non-technical loss of electric energy in power grids,which causes huge economic losses and resource wastage to the power system.Compared with a large number of users'normal electricity samples,electricity theft users belong to a minority class of samples,and the traditional electricity theft classification methods perform poorly in the case of sparse or imbalanced samples.As a result,a user electricity theft classification method based on the data enhancement of improved time series generative adversarial network(TimeGAN)was proposed,TimeGAN was used to enhance the original small-sample electricity theft data,generating the augmented samples similar to the distribution of the original data,and considering that the augmented samples are noisy or untrustworthy,the quality of augmented samples was evaluated using the Mahalanobis distance to complete the untrustworthy sample rejection.Convolutional neural network(CNN)was used to extract features from the augmented electricity load data,and long-short time memory network(LSTM)was used to extract the temporal correlation of the feature quantities and complete the feature classification,and furthermore,the sparrow search algorithm(SSA)was used to optimize the parameters of the CNN-LSTM network,so as to improve the accuracy of the model detection.The experimental results show that the proposed method can effectively solve the binary classification problem of sample imbalance in the identification of user's electricity theft behavior.关键词
TimeGAN模型/马氏距离/麻雀搜索算法(SSA)/窃电识别Key words
TimeGAN model/Marginal distance/sparrow search algorithm(SSA)/electricity theft identification分类
信息技术与安全科学引用本文复制引用
吴佐平,王宏岩,张千福,谢青..基于改进TimeGAN数据增强的用户窃电识别研究[J].电气传动,2026,56(1):75-81,7.基金项目
国网信息通信产业集团基金(SGITPH00YXJS2310260) (SGITPH00YXJS2310260)