Hunan Electric Power ›› 2025, Vol. 45 ›› Issue (4): 74-82.doi: 10.3969/j.issn.1008-0198.2025.04.011

• Power Grid Operation and Control • Previous Articles     Next Articles

A Hybrid-Driven Method of Knowledge Guidance and Unsupervised Learning for Power Users Anomaly Discrimination

LYU Weijia1, LI Xiaohui1, TENG Yongxing1, CHEN Juan1, MEN Yingjun2, DU Tianshuo3   

  1. 1. State Grid Tianjin Electric Power Company Marketing Service Center, Tianjin 300210, China;
    2. State Grid Tianjin Electric Power Company, Tianjin 300010, China;
    3. Tianjin University, Tianjin 300072, China
  • Received:2025-05-16 Revised:2025-05-26 Online:2025-08-25 Published:2025-09-05

Abstract: In view of the problems of high manual annotation cost and limited data feature representation ability of traditional rule-based detection methods, a hybrid model for anomaly detection of power users that integrates knowledge guidance and unsupervised learning is proposed. First, a multi-dimensional load characteristic index system containing load rate, peak-to-valley difference rate and other features is constructed based on power consumption behavior analysis, and principal component analysis is used to realize feature extraction and visualization of high-dimensional data. Then, the abnormal deviation degree of users' power consumption modes and abnormal probability of spatial distribution are quantified by reconstruction error and local outlier factor algorithm respectively. Secondly, the abnormality degree and suspected probability of users' power consumption behavior are ranked, so that most abnormal users can be found by detecting only a few users with high abnormality degree. Finally, the proposed method is verified by small and large data sets respectively in the case analysis. The results show that the AUC score of this method can reach 0.8251, which has significant superiority. In addition, this method can not only effectively identify abnormal users, but also reduce the false alarm rate and improve the accuracy of detection, providing an efficient and reliable power consumption anomaly analysis tool for power companies.

Key words: anti theft techniques, anomaly discrimination, unsupervised learning, principal component analysis, local matrix reconstruction

CLC Number: