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Electricity Theft Detection Method Based on Ensemble Learning and Prototype Learning
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作者 Xinwu Sun Jiaxiang Hu +4 位作者 Zhenyuan Zhang Di Cao Qi Huang Zhe Chen Weihao Hu 《Journal of Modern Power Systems and Clean Energy》 SCIE EI CSCD 2024年第1期213-224,共12页
With the development of advanced metering infrastructure(AMI),large amounts of electricity consumption data can be collected for electricity theft detection.However,the imbalance of electricity consumption data is vio... With the development of advanced metering infrastructure(AMI),large amounts of electricity consumption data can be collected for electricity theft detection.However,the imbalance of electricity consumption data is violent,which makes the training of detection model challenging.In this case,this paper proposes an electricity theft detection method based on ensemble learning and prototype learning,which has great performance on imbalanced dataset and abnormal data with different abnormal level.In this paper,convolutional neural network(CNN)and long short-term memory(LSTM)are employed to obtain abstract feature from electricity consumption data.After calculating the means of the abstract feature,the prototype per class is obtained,which is used to predict the labels of unknown samples.In the meanwhile,through training the network by different balanced subsets of training set,the prototype is representative.Compared with some mainstream methods including CNN,random forest(RF)and so on,the proposed method has been proved to effectively deal with the electricity theft detection when abnormal data only account for 2.5%and 1.25%of normal data.The results show that the proposed method outperforms other state-of-the-art methods. 展开更多
关键词 Electricity theft detection ensemble learning prototype learning imbalanced dataset deep learning abnormal level
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