陈静, 王铭海, 刘煜寒, 江灏, 缪希仁, 林蔚青, 郑垂锭, 赵睿. 基于Transformer与单分类支持向量机的窃电时间识别方法[J]. 电网技术, 2025, 49(5): 2109-2118. DOI: 10.13335/j.1000-3673.pst.2024.0203
引用本文: 陈静, 王铭海, 刘煜寒, 江灏, 缪希仁, 林蔚青, 郑垂锭, 赵睿. 基于Transformer与单分类支持向量机的窃电时间识别方法[J]. 电网技术, 2025, 49(5): 2109-2118. DOI: 10.13335/j.1000-3673.pst.2024.0203
CHEN Jing, WANG Minghai, LIU Yuhan, JIANG Hao, MIAO Xiren, LIN Weiqing, ZHENG Chuiding, ZHAO Rui. Electricity Theft Time Identification Method Based on Transformer and One-class Support Vector Machine[J]. Power System Technology, 2025, 49(5): 2109-2118. DOI: 10.13335/j.1000-3673.pst.2024.0203
Citation: CHEN Jing, WANG Minghai, LIU Yuhan, JIANG Hao, MIAO Xiren, LIN Weiqing, ZHENG Chuiding, ZHAO Rui. Electricity Theft Time Identification Method Based on Transformer and One-class Support Vector Machine[J]. Power System Technology, 2025, 49(5): 2109-2118. DOI: 10.13335/j.1000-3673.pst.2024.0203

基于Transformer与单分类支持向量机的窃电时间识别方法

Electricity Theft Time Identification Method Based on Transformer and One-class Support Vector Machine

  • 摘要: 窃电量的追回是窃电检测的最终目的,准确的窃电时间识别是进行窃电量精确估算的重要依据。然而,现有窃电检测方法侧重于识别窃电行为,对窃电时间缺乏深入分析,亟需研究基于窃电用户自身计量数据的窃电时间识别模型,为窃电量的估算提供依据。针对窃电时间识别问题,提出一种基于Transformer与单分类支持向量机(one-class support vector machine,OCSVM)的半监督窃电数据分类方法。首先,对用户负荷数据按日进行切割,将窃电时间识别问题转化为窃电日负荷数据判别问题;然后,使用Transformer作为重构模型学习用户的正常用电模式与规律,以重构出基于用户日负荷数据的重构值;最后,将构造重构误差曲线作为OCSVM的输入,构造正常用电行为的决策边界,进而判别出窃电数据,以实现窃电时间识别。根据南方某省智能电表用户数据进行算例分析,验证了该方法的可行性和有效性,实验结果表明该方法具有较好的灵敏性和鲁棒性。

     

    Abstract: The recovery of stolen electricity is the ultimate goal of electricity theft detection, and accurate identification of electricity theft time is an important basis for accurately estimating stolen electricity. However, existing electricity theft detection methods focus on identifying electricity theft behavior and need more in-depth analysis of electricity theft time. There is an urgent need to study electricity theft time identification models based on electricity thieves' metering data to provide a basis for estimating electricity theft. Aiming to address the problem of electricity theft time identification, a semi-supervised electricity theft data classification method based on a transformer and one-class support vector machine (OCSVM) is proposed. Firstly, the user load data is divided by day, and the problem of identifying the time of electricity theft is transformed into the problem of power theft daily load data discrimination. Secondly, the Transformer is used as the reconstruction model to learn the user's normal power consumption patterns and regularity to reconstruct the reconstructed value based on the user's daily load data. Finally, the reconstructed error curve is used as the input of the OCSVM to construct the decision boundary of normal power consumption behavior. Then the electricity theft data is identified to realize the electricity theft time identification. An example analysis was carried out based on smart meter user data in a southern province to verify the feasibility and effectiveness of this method. The experimental results show that this method has good sensitivity and robustness.

     

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